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Gender Gap Running Head: The Political Gender Gap in the 1996 Presidential Election Beyond Sex: The Political Gender Gap in the 1996 Presidential Election B. Carol Eaton Doctoral Student S. I. Newhouse School of Public Communications Syracuse University 215 University Place Syracuse, New York 13244 [log in to unmask] (315) 443-1950 (work) (315) 423-2965 (home) Abstract A telephone survey of Syracuse, New York, residents was conducted in October/November 1996 to test the study's hypotheses regarding the political gender gap and media sources utilized to obtain political information. The fact that this study's results failed to replicate previous political gender gap findings is significant. Findings demonstrate that the historical distinction between traditionally "male" and "female" political issues may be changing in today's political climate. This analysis also successfully developed a reliable gender scale which extends conventional telephone survey research methodology. By showcasing dozens of women in such prominent roles as keynote speakers and chairwomen at the Republican and Democratic conventions, both political parties delivered deliberate appeals to female voters for the 1996 U. S. presidential campaign. Indeed, a pre-election New York Times article described both parties as "believ[ing] that the election will ultimately be decided by the women's vote" (Nagourney, 1996, p. A1). Identified by some strategists as "soccer moms," suburban women swing voters were targeted by both the Democratic and Republican candidates (Frisby & Seib, 1996, p. A4). Polls conducted during the convention reported Clinton ahead of Dole by margins of six and sixteen percent among male and female voters, respectively; a gender gap that one democratic pollster hoped to transform "into a gender canyon -- and put the race out of range" (Nagourney, 1996, p. A1). The "gender gap" between female and male voting patterns was first identified during the 1980 presidential election, when eight percent more men than women voted for Ronald Reagan (Abzug, 1984, p. 1). Although a plethora of scholarly books and articles addressing this political gender gap appeared during the decade that followed its identification, research on this area has been sparse over the past five years. Another important development during this decade that has remained relatively unexamined by scholars concerns the emergence of new media vehicles for political campaigns. During the 1992 presidential campaign, candidates appeared in many unusual media milieus, including daytime talk shows, infomercials, and MTV programs. One political scientist describes a recent explosion of new media information outlets producing "new opportunities for politicians to reach out to constituents, sometimes in unconventional ways" (Kerbel, 1995, p. 3). This study seeks to identify how the political gender gap manifests itself in the new media environment of the 1996 presidential election. Theory Political Gender Gap The phenomenon labeled "gender gap" describes the pronounced differences between male and female voting behaviors that have emerged in the United States over the past fifteen years. This gap was first identified during the 1980 election when eight percent more women than men voted for Jimmy Carter and eight percent more men than women voted for Ronald Reagan (Kelber, 1994). According to Baxter and Lansing, "the term gender gap...became part of the political vernacular during the 1982 election [when] the women's vote made the difference in a number of close races" (1983, p. 212). These voting differences have continued into this decade. In the 1994 congressional elections, for example, "women gave Democrats an eight-point margin, while men picked Republicans by 14 points" ("Gender Gap Politics," 1995, p. 22). In the early 1980s, many scholars explored these nascent female voting patterns. In Women and Politics: The Visible Majority, Baxter and Lansing (1983) compared contemporary characteristics of female voters to historical U. S. trends. Discriminant analysis revealed employment status and age as the most important predictors of female voting behaviors, demonstrating that "the voters who produced the gender gaps in 1980 and 1982 were not simply women, but were likely to be professional working women over the age of thirty (Baxter & Lansing, 1983, p. 185). Women with higher income and education levels were also more likely to vote (Baxter & Lansing, 1983). Abzug (1984) characterized stronger gender gap voting patterns among southerners, African-Americans, Catholics, Jews, professionals, college graduates, democratic and independent political affiliations, and 30 to 44 year olds. The current study will develop similar controls for the following voter demographics: age, employment status, education, income, race, ethnicity, religion, and party affiliation. Abzug partly explains the gender gap in terms of women's support of political issues that reflect "the distinctive political voice of women" (1984, p. 5). These issues include the reduction of military spending and unemployment, the advancement of world peace and women's rights, assistance to the poor, and protection of the environment (Abzug, 1984). In the early 1980s, women were more likely to vote democratic and support world peace, environmental preservation, and "women's" issues (e.g., the Equal Rights Amendment and abortion) than men (Baxter & Lansing, 1983). Over the last decade, scholars have continued to specify the political issues that are most closely associated with gender gap voting patterns. In contrast to men, women tend to be more supportive of social programs, racial equality, legislation to resolve social problems, job security, alternatives to nuclear power, international peace, and education (Abraham, 1995; Fitzpatrick, 1995; Huddy & Terkildsen, 1993; Kelber, 1994; Mandel, 1995; Mueller, 1991; Somma, 1992). Welch and Hibbing (1992) have classified these gender gap political issues into two categories: sociotropic and egocentric voting patterns. Using secondary data from the 1980 and 1984 National Election Study surveys, Welch and Hibbing (1992) found that men were more likely to base their voting decisions on egocentric economic factors (e.g., concern for personal economic well-being) while women tended to rely on sociotropic economic influences (e.g., concern for the nation's financial health). These results persisted after controlling for partisanship, education, and income. The authors conclude that, "the gender gap encompasses more than just having slightly dissimilar political attitudes; it also includes a different way of using these attitudes to provide a basis for political action" (Welch & Hibbing, 1992, p. 210). Other scholars have also identified sociotropic voting patterns as an explanation of the political gender gap. According to Abzug (1984), the political gender gap developed when women began to extend their long-standing personal (private) values of non-violence and nurturing into their political (public) views. The socialization of females in care-giving roles may have created this "compassion" gap which leads to sociotropic voting patterns among women (Gilligan, 1982; Miller, 1988; Norris 1985; Somma, 1992). Similar to this previous body of research, the current study will examine the potential gender gap in the 1996 presidential election in terms of these sociotropic and egocentric political issues. Another factor that may explain the emergence of the gender gap concerns the social and economic position of women in society: "Changing material conditions in motherhood, marriage, and work underlie the politicization of women and gender group consciousness (Klein, 1984, as cited in Somma, 1992, p. 44). Over the past 35 years, U. S. Census data has shown a marked increase in the number of employed women in the workforce. Recent voting trends, indeed, appear to reflect these changing female demographics: In the 1980s, employment status and age supplanted education for the first time in the history of women's voting patterns as more important predictors of voting behavior (Baxter & Lansing, 1983). As mentioned previously, this study will examine voter demographics in relation to sociotropic and egocentric political issues in the 1996 election. A third factor that may have contributed to gender gap voting patterns concerns the emergence of women's "politicized gender consciousness" (Somma, 1992, p. 43). Feminist scholarship is based on "a theoretical acknowledgment of women's traditional devaluation . . . in relation to men with the assumption that the relationship needs to change" (Steeves, 1987, p. 96). Over the past thirty years, the second wave of the women's movement has worked towards identifying women's oppression in order to promote change (Boles, 1991). Contemporary voting patterns among women may reflect this influence from the women's movement and feminist scholarship. The political gender gap has been described as the tendency of women to vote democratic and for women candidates (Mandel, 1995); to favor sociotropic issues (Somma, 1992); and to vote in higher numbers than men (Mueller, 1991). After 1980, scholars also identified a "gender gap in presidential campaign discourse" where Republicans were more likely to refer to "men" and "man" and less likely to refer to "societal values" than Democrats in campaign speeches (The Annenberg Public Policy Center, 1996). The current study will examine the potential gender gap in the 1996 presidential election in relation to voter demographics and issue salience. Gender and Sex Roles Scholarly research on the political gender gap has equated the terms gender and sex as if they were interchangeable: For most social scientists, both terms refer exclusively to the biological differences between women and men. Recent criticisms of this traditional approach have recognized that: Gender is not limited to femaleness and maleness, but includes men, masculinity, and manliness as well as women, femininity, and womanliness. Gender extends to normative sets of beliefs, which can be considered as feminism and masculinism. Masculinism is more than a way of being; like feminism, it can be considered as an ideology (Duerst-Lahti & Kelly, 1995, p. 5). The current study will attempt to extend the political gender gap literature to examine this concept of gender rather than biological sex differences among men and women. From the psychological literature, four theories of gender development have evolved: psychoanalytic theory, social learning theory, cognitive development theory, and gender schema theory (Bem, 1984). Based on Freud, psychoanalytic theory describes an individual's gender identification and sexualization as socially and culturally created in the unconscious mind through comparison with a same-sex parent (Chodorow, 1989). Psychoanalytic feminist theory has extended Freud's work to describe the importance of mothering in the creation of "nurturant moral models" among women (Chodorow, 1978, p. 5). In contrast, social cognitive theory emphasizes how gender identification is acquired through observational learning from the external environment (Bandura, 1994). A child identifies appropriate gendered behavior through a "triadic reciprocal causation" model that links cognition/internal events, behavior, and the social environment (Bandura, 1994, p. 61). Cognitive-development theory assumes that sex typing inevitably occurs from children's cognitive development; this theoretical approach almost exclusively identifies the individual child as his or her primary sex-role socialization agent (Bem, 1984). Following the formulation of a gender-based self-concept, the child seeks gender-congruent attributes and activities (Kohlberg, 1966). Gender schema theory synthesizes selected features of the social learning and cognitive-development approaches: "Sex typing is mediated by the child's own cognitive processing" in the context of "sex-differentiated practices of the social community" (Bem, 1984, p. 186). Gender schema are cognitive processing patterns or associational networks that organize individual perceptions about others and self in terms of gender (Hitchon & Chang, 1995). These schema can be "primed" or activated by external stimuli like the media (Jo & Berkowitz, 1994). In order to measure masculinity and femininity, Bem developed the Bem Sex Role Inventory (BSRI) to classify respondents' gender based on forty personality traits; "20 of the attributes reflect the culture's definition of masculinity (e.g., assertive, independent), [and] 20 reflect the culture's definition of femininity (e.g., tender, understanding)" (Bem, 1984, p. 192). Critics of the BSRI and other similar instruments contend that these questionnaires only measure, stereotypically and through self-report, two personality characteristics rather than more universal theoretical concepts of masculinity and femininity (Spence, 1984). Other criticisms describe how the "broad multidimensional concepts [of femininity and masculinity] are not readily captured in either one- or two-dimensional questionnaires" (Deaux, 1985, p. 59). The current study concedes these limitations of measuring a respondent's gender through survey research; however, a gender scale of masculine and feminine traits presents a vast improvement over the mere measurement of biological sex prevalent among most quantitative research methodologies. Based on various gender trait analyses utilized in previous research (Bem, 1984; Diamond & Harstock, 1981; Hitchon & Chang, 1995; Huddy & Terkildsen, 1993; Somma, 1992; Welch & Hibbing, 1992), this study will develop a gender scale to measure respondents' personality traits that describes gender in terms of the "socially-ascribed meanings given to the categories of man and woman" (de Bruyn, 1995, p. 12). Politics and Media Sources The use of media during the 1992 presidential campaign was unique; candidates utilized a variety of unconventional media outlets, including daytime talk shows (e.g., Donahue), infomercials, cable programs (e.g., Music Television), radio talk shows, etc. As a relatively recent phenomenon, this new political media usage has not been extensively studied. Graber (1996) has described the use of "new" media in political campaigns as empowering to voters by allowing them to actively chose, edit, and frame their mediated political news and bypass professional journalistic routines. Diamond, McKay, and Silverman confirm how "Clinton and Perot consistently tried to go 'over the heads of the professionals' -- the journalists from the old-news formats -- to reach 'the real people'" (1993, p. 259). The candidates, furthermore, appear to have adopted a new delivery style (e.g., more casual and self-deprecating) to suit these new media formats (Diamond, McKay, & Silverman, 1993). In a study correlating exposure to news media with levels of cynicism among Hong Kong residents, Wilkins asserts "that women both use the mass media differently and hold distinct sets of political attitudes from men" (1995, p. 257). According to Wilkins (1995), media perpetuate a pattern of silencing women's voices by legitimating and reinforcing patriarchal social and political structures; women, therefore, seek different forms of media for different uses than men.[1] This study hypothesizes that new forms of mediated political discourse which by-pass traditional journalistic coverage will have a greater appeal to women than men by rupturing some of these patriarchal restrictions. By examining self-reported media use by feminist and non-feminists, Lull, Mulac, and Rosen (1983) discovered that attitudes toward feminism predict quantitative and qualitative differences in electronic media use. The authors found that "the feminist personality attribute operates independent of sex" and that sex may be increasingly "less predictive of media consumption" (Lull, Mulac, & Rosen, 1983, p. 176). Through the use of a gender scale, the current research similarly will examine gendered patterns of media use to obtain political information. In a survey during the 1990 congressional campaigns, Weaver and Drew (1993) identified respondents' attention to the more unconventional formats of television campaign advertisements, regional newspapers, and radio news shows (rather than traditional television news programs and prestige newspapers) as significant predictors of their knowledge of campaign issues. In two 1992 surveys, McLeod, Guo, Daily, Steele, Huang, Horowitz, and Chen (1996) examined traditional and non-traditional media use by voters and found that women were more likely to use non-traditional media outlets (e.g., political advertisements and polls). The authors also found that use of a non-traditional medium correlated to the utilization of other unconventional media outlets (McLeod, et al., 1996). The current study also predicts that women will prefer non-traditional media sources of political information more than men. Chaffee, Zhao, & Leshner (1994) examined the use of MTV, talk shows, and late shows as well as more conventional media sources by voters in the 1992 presidential election. Findings indicated that viewing candidates on talk shows correlated with high candidate-issue knowledge, whereas, MTV viewing corresponded to low candidate-issue knowledge (the correlation of late shows and issue-knowledge was not significant) (Chaffee, Zhao, & Leshner, 1994). Women were found to be less knowledgeable about campaign party and candidate issues than men (Chaffee, Zhao, & Leshner, 1994). One of the difficulties of studying voter usage of unconventional media sources concerns the potential access and extensive use of those media to the majority of survey respondents included in the study's sample (Mayer, 1994). In order to avoid this problem, the current study will ask respondents about their likely use of new media to obtain political information rather than measuring their reported behaviors. Based on the previous literature concerning the political gender gap and uses of unconventional media during election campaigns, this study poses the following hypotheses: Hypothesis 1: The more "feminine" the respondent rates on a gender scale, the more likely s/he will support sociotropic election issues, identify with a Democratic Party affiliation, and express a preference to vote for Democratic candidates. Hypothesis 2: The more "masculine" the respondent rates on a gender scale, the more likely s/he will support egocentric election issues, identify with a Republican Party affiliation, and express a preference to vote for Republican candidates. The first two hypotheses are based on numerous research studies since 1980 that have demonstrated a political gender gap between women and men, where women are more likely to vote for the democratic candidate and favor political issues that generally promote the social welfare (e.g., sociotropic) over personal concerns (e.g., egocentric) (Abzug, 1984; Baxter & Lansing, 1983; Welch & Hibbing, 1992). For the purposes of this study, the terms sociotropic and egocentric have been expanded from Welch and Hibbing's (1992) original definitions to include a broader range of political issues that previous studies have correlated to women's (e.g., non-violent and nurturing) and men's (e.g., protective and hawkish) voting patterns over the past 25 years (Abraham, 1995; Abzug, 1984; Baxter & Lansing, 1983; Fitzpatrick, 1995; Huddy & Terkildsen, 1993; Kelber, 1994; Mandel, 1995; Mueller, 1991; Somma, 1992). In an effort to extend the conventional research methodologies used in gender gap analyses, this study will also measure gender rather than biological sex differences between men and women. Adapted from the psychological literature, a gender scale has been developed to measure respondents' identification with personality traits culturally attributed to masculine and feminine categories (Bem, 1984; de Bruyn, 1995; Diamond & Harstock, 1981; Hitchon & Chang, 1995; Huddy & Terkildsen, 1993; Somma, 1992; Welch & Hibbing, 1992). Two additional hypotheses will also be examined in this study: Hypothesis 3: The more "feminine" the respondent rates on a gender scale, the more likely s/he will utilize unconventional media as sources for political information. Hypothesis 4: The more "masculine" the respondent rates on a gender scale, the more likely s/he will utilize conventional media as sources for political information. The third and fourth hypotheses are based on previous research that has identified distinct differences in media choices between women and men or feminists and non-feminists (Lull, Mulac, & Rosen, 1983; Wilkins, 1995). Other studies have specifically demonstrated a higher likelihood for women to use unconventional political media sources (e.g., polls, advertisements) than men (Chaffee, Zhao, & Leshner, 1994; McLeod, et al., 1996). The same gender scale developed for the first two hypotheses will be tested to predict conventional and unconventional media use by feminine and masculine survey respondents. For all four hypotheses tests, gender scale results will be compared to the biological sex of respondents. Method In order to test the study's hypotheses that 1) more feminine individuals are likely to support the Democratic party, Democratic candidates, and sociotropic political issues, 2) more masculine individuals are likely to support the Republican party, Republican candidates, and egocentric political issues, 3) more feminine individuals are likely to use unconventional political media sources, and 4) more masculine individuals are likely to use conventional media political sources, a telephone survey was developed. Survey Design The survey questions designed for this analysis were combined into a larger survey project conducted by eight graduate students at the S. I. Newhouse School of Public Communications at Syracuse University over a two-week period in September and October of 1996. The entire survey instrument contained 120 questions covering various media-related research topics. A total of twenty-eight questions were included on the survey specifically to test the four hypotheses developed for this study. These questions predominately consisted of Likert-type scales. For the first two hypotheses, a series of questions were developed to measure respondents' identification with sociotropic (e.g., non-violent, nurturing, concerned with social welfare) versus egocentric (e.g., protective, hawkish, related to individualistic concerns) political issues. Respondents were asked to indicate agreement with six statements on a five-point, Likert-type scale ranging from strongly agree to strongly disagree. Sociotropic issues included protecting the environment, helping the homeless, and improving the quality of education while egocentric issues included increasing defense spending, fighting crime, and enlarging law enforcement forces. All of these issues have been identified and tested in previous gender gap research (Abraham, 1995; Abzug, 1984; Baxter & Lansing, 1983; Fitzpatrick, 1995; Huddy & Terkildsen, 1993; Kelber, 1994; Mandel, 1995; Mueller, 1991; Somma, 1992). Two questions asked respondents to indicate their party affiliation and whether they were more likely to vote for Democratic or Republican political candidates. The gender scale used in all four hypotheses consisted of eight adjectives that described specific personality traits that have been identified as masculine (e.g., aggressive, assertive, ambitious, and strong) or feminine (cooperative, nurturing, sensitive, and gentle) in previous research (Bem, 1984; de Bruyn, 1995; Diamond & Harstock, 1981; Hitchon & Chang, 1995; Huddy & Terkildsen, 1993; Somma, 1992; Welch & Hibbing, 1992). Respondents were again asked to indicate their agreement on the same five-point Likert-type scale with statements describing themselves in terms of each personality trait (e.g., "The word aggressive describes me"). For the third and fourth hypotheses, conventional and unconventional media use were measured by asking respondents how likely they would be to obtain political information from ten media sources: television news, newspapers, news magazines, National Public Radio programs, live televised debates, Cable News Network programs, tabloid television news, late night talk shows, radio call-in shows, and the Internet/World Wide Web. The first five sources listed here were considered conventional based on previous research, as well as their historical status as traditional sources for political information; the last five sources represent relatively new media formats for political information (Chaffee, Zhao, & Leshner, 1994; McLeod, et al., 1996) and are considered non-conventional political sources in this analysis. Following a pre-test of the preliminary questionnaire, the survey instrument was revised. Many questions were eliminated or re-written in order to address problems identified from pre-test results. In addition, question order and placement within the questionnaire were modified in order to refine the instrument. Additional demographic questions were also included on the survey instrument and used in this analysis. Sampling In order to generate a random sample of Syracuse, New York, residents, a CD-ROM telephone directory (SelectPhone, Northeast, 1997, first quarter) was used to develop the sampling frame for the study. All telephone numbers within the local calling area of Syracuse University were initially selected from the CD-ROM database. After eliminating all business and duplicate telephone numbers, a list of 197,000 residential Syracuse telephone numbers was identified for the study's sampling frame. These telephone numbers were then randomly ordered based on a computer generated list of random numbers and divided into groups of fifty telephone numbers to create 23 replicates of 50 numbers each for a total of 1,150 telephone numbers for the study. Further randomization within each household was achieved through the use of the Kish method, which was used to randomly identify individual male and female members of the household to be included in the study. Interviewer Training A total of 44 graduate students at Syracuse University were trained as interviewers for the survey. All interviewers were trained by survey supervisors prior to working in the field; they also received a comprehensive training manual detailing proper interview procedures. During data collection, interviewers attempted a second telephone call to convert all respondents who initially refused to be interviewed. Survey supervisors also verified ten percent of completed questionnaires by contacting these respondents again to confirm the interviews had been conducted. Following completion of the data collection, supervisors coded the questionnaires for data entry. The statistical package SPSS Version 6.1 was utilized for statistical data analysis. Frequency distributions, cross tabulations, independent t-tests, analyses of variance, and Pearson correlation coefficients were used for statistical analysis of the data. Results The final sample included a total of 413 questionnaires and yielded a procedural response rate of 79%. Compared to U. S. Census data for the Syracuse area, the survey's sample over-represented women and slightly under-represented respondents with lower income and education levels. Table 4 provides percentages for demographic data: Respondents were 58.7% women, 93.7% Caucasian, with mostly high school (22.5%), some college (21.3%), or college graduate (21.5%) levels of education. The most frequently occurring income intervals were between the $20,000 to $50,000 ranges. Table 2 identifies the mean age of respondents as 46.1 years. Table 1 provides mean and standard deviations for the political issue variables. Responses clustered around neutral (slightly leaning toward agree) for most of the political issues (e.g., crime as the number one problem, increasing the number of police officers, protecting the environment, and helping the homeless). Overall, respondents tended to agree with spending more to improve education and disagree that the U. S. should increase defense spending. For almost all of the personality traits listed in Table 2, most respondents agreed that the traits described them. The word aggressive was the exception, however, with responses aggregating around the neutral category. The aggressive attribute also generated the highest standard deviation of any of the personality traits. As shown in Table 3, the use of the media for political information demonstrated a wider range of responses. Survey results demonstrate that respondents tended to be somewhat likely to read an election story in a newspaper, watch live televised debates, or watch an election story on a television news program or Cable News Network. Respondents were somewhat unlikely to access the Internet, watch late night talk shows, listen to radio call-in shows, or watch tabloid television programs to obtain political information. Reading news magazines and listening to National Public Radio programs received neutral responses. Table 4 presents percentages for political affiliation data. The majority of respondents identified with either the Republican (41.1%) or Democratic (33.9%) parties, while 20.7% claimed to be independents and 4.3% identified another political affiliation. Almost equal percentages would chose a Republican (40.7%) or Democratic (39.6%) candidate if they had to vote purely for a candidate's political party affiliation. In order to develop a gender scale for the personality trait variables, a varimax rotated factor analysis was performed. Results in Table 5 show two factor loadings: The factor feminine includes the variables gentle, sensitive, nurturing, and cooperative and the factor masculine includes the variables assertive, aggressive, ambitious, and strong. An additive scale of the feminine factors yielded a Cronbach's standardized item alpha of .73; a similar masculine scale generated a standardized item alpha of .64. Creating masculine and feminine scales by applying the corresponding weight from factor analysis results did not improve reliability analyses. These factor analysis loadings support the masculine and feminine traits identified in previous research (Bem, 1984; Diamond & Harstock, 1981; Hitchon & Chang, 1995; Huddy & Terkildsen, 1993; Somma, 1992; Welch & Hibbing, 1992). Crosstabulation results in Table 6 show that more males identify with the Republican (43.6%) than Democratic (29.5%) party. The difference between females party identification was much closer (e.g., a 1.9% difference between Republican and Democratic affiliations). The chi square statistic, however, indicates that these results were not significant. Significant results were achieved for the choice between candidates solely along party lines: 42.4% of males would choose Republican candidates while 44.0% of women would choose Democratic candidates. Far fewer men would choose the Democratic candidate (32.6%) compared to the women who would choose the Republican candidate (39.6%). The independent t-tests in Table 7 demonstrate differences between male and female respondents on various political issues. Women tended to have stronger agreement that there should be more police officers on the streets, that the government should spend more to help the homeless, and that more money should be spent on education. The other three political issue (increasing defense spending, crime as the number one problem, and protecting endangered wildlife) did not generate statistically significant differences between men and women. In Table 8, independent t-tests of the personality traits by sex demonstrated that women were more likely than men to describe themselves as ambitious, strong, cooperative, nurturing, sensitive, and gentle. The terms aggressive and assertive did not generate statistically significant differences between male and female respondents. Only two of the eight media use variables in Table 9 demonstrated statistically significant differences between men and women. Independent t-tests identify females as somewhat more likely to watch live televised political debates and election stories on tabloid television news programs than males. Tables 10 and 11 contain one-way analyses of variance to test the study's first and second hypotheses. Results indicate no significant differences between political party identification or political party preference and ranking on the feminine or masculine gender scales. These results show no support for these two hypotheses. The crosstabulation results in Table 6 create an interesting comparison. Based on biological sex rather than gender, females are more likely than males to chose the Democratic candidate, while males are more likely than females to chose the Republican candidate. The Pearson correlation coefficients in Table 12 provide the final tests for the first two hypotheses. In comparing feminine and masculine respondents and their views on sociotropic political issues (e.g., protecting endangered wildlife, helping the homeless, and improving the quality of education), two significant correlations developed. First, the feminine scale was positively correlated with spending more to help the homeless (as predicted by the study's first hypothesis). Second, the masculine scale was positively correlated with improving the quality of education (contrary to the first hypothesis). For the egocentric political issues listed in Table 12 (e.g., increased defense spending, crime as the number one problem, and the need for more police officers), only one significant correlation emerged with the gender scales: The more feminine the respondent, the greater agreement that there should be more police officers on the streets. This finding did not support the study's second hypothesis that predicted correlations between the masculine gender scale and egocentric political issues. Again a comparison of the gender scale results in Table 12 with the biological sex findings in Table 7 proves interesting. For both analyses, female/feminine respondents tended to agree with increasing the number of police officers and spending more to help the homeless. The issue of improving the quality of education, however, generated opposite results: More women agreed with this issue and only the masculine scale generated a significant positive correlation. In Table 12, the two gender scales are positively correlated; since the femininity and masculinity scales are not mutually exclusive categories, this positive correlation is possible. The independent t-tests for personality traits and biological sex in Table 8 reveal that women are more likely to agree with almost all of the personality traits, which may help to explain this positive correlation between gender scales. The correlations in Table 13 test the study's final two hypotheses regarding political media sources and gender scale attributes. Four significant correlations emerged: The feminine scale was positively correlated with television news and the Internet, while the masculine scale was positively correlated with Cable News Network programs and the Internet. These findings did not support the third and fourth hypotheses. The biological sex and media source t-tests in Table 9 indicate differences between live televised debates and tabloid television programs (which did not significantly correlate on gender scale results). Discussion The fact that this study's results failed to replicate previous political gender gap findings is significant. This study demonstrates that the historical distinction between traditionally "male" and "female" political issues may be changing in today's political climate. This analysis also successfully developed a reliable gender scale which extends conventional telephone survey research methodology. Table 6 shows limited support for the political party gender gap between women and men identified in previous studies (Abraham, 1995; Abzug, 1984; Baxter & Lansing, 1983; Fitzpatrick, 1995; Huddy & Terkildsen, 1993; Kelber, 1994; Mandel, 1995; Mueller, 1991; Somma, 1992) continues to exist today. Women were more likely than men to chose a Democratic candidate than a Republican one. The differences between women and men along social welfare (e.g., sociotropic) and personal (e.g., egocentric) political issues identified from previous research did not receive clear support in the current study. Table 7 demonstrates that women did show stronger agreement than men on certain environmental and social welfare concerns (e.g., protecting endangered wildlife and helping the homeless). Women, however, also supported a "protective" and "hawkish" stand traditionally attributed to men (e.g., increasing the number of police officers) (Abraham, 1995; Abzug, 1984; Baxter & Lansing, 1983; Fitzpatrick, 1995; Huddy & Terkildsen, 1993; Kelber, 1994; Mandel, 1995; Mueller, 1991; Somma, 1992; and Welch & Hibbing, 1992). Due to heightened levels of crime in the United States over the past 25 years, women may be identifying personal safety as an increasingly important political issue. Pearson correlations in Table 12 provide insight for future research on gender gap political issues. The three egocentric issues were positively correlated with each other, as were the three sociotropic issues. The negative correlations one would expect between egocentric and sociotropic issues, however, did not emerge (except for increasing defense spending and spending more to help the homeless). In fact, two egocentric issues (e.g., fighting crime and increasing the number of police officers) were positively correlated with most of the sociotropic issues. Future research in this area may conclude that these "traditional" political issues separating men and women may no longer be appropriate categories. This study also provided one of the first attempts at developing a gender scale for telephone survey research. Factor analysis results in Table 5 demonstrate that the eight personality traits measured for the scale clearly load on two distinct factors. Although Table 8 demonstrates significant differences between men and women for the majority of personality traits measured, women tended to agree with almost all of the traits more than men. Future research in this area should generate methodological analyses for further gender scale development: The influence of social desirability on personality trait responses and the nature of the non-exclusive categorizations of masculine and feminine should be examined. The results from this study, finally, are informative for future research on conventional and unconventional political media sources. The first five variables listed in Table 13 were identified as "conventional" media sources and were all positively correlated with one another. Of the final five "unconventional" media sources, however, only three positive correlations occurred (e.g., tabloid television news with Cable News Network programs, late night talk shows, and the Internet). All of the conventional sources positively correlated with Cable News Network programs. Call-in radio programs and the Internet also correlated positively with four and three, respectively, of the five unconventional media sources. These findings provide heuristic associations between the use of various political media sources and how they relate to each other. Table 1. Means and standard deviations for political issue variables. Variables * Mean Std. Deviation N ________________________________________________________________________ More money should be spent to improve the quality of education in the United States. 4.13 1.04 412 It is important for the government to help protect endangered wildlife like the spotted owl. 3.78 0.97 412 Crime is the number one problem facing our country. 3.65 1.13 412 There should be more police officers on the streets in our country. 3.62 0.96 411 The government should spend more to help the homeless. 3.60 1.02 411 The United States must increase defense spending. 2.82 1.07 403 * Responses were coded: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. Table 2. Means and standard deviations for personality trait and age variables. Variables Mean Std. Deviation N ________________________________________________________________________ The word cooperative describes me.* 4.23 0.64 398 The word sensitive describes me.* 4.18 0.75 398 The word nurturing describes me.* 4.02 0.79 392 The word gentle describes me.* 3.98 0.73 396 The word strong describes me.* 3.94 0.78 398 The word ambitious describes me.* 3.94 0.81 395 The word assertive describes me.* 3.80 0.90 394 The word aggressive describes me.* 3.22 1.12 397 _____________ Age (in years) 46.1 16.1 392 * Responses were coded: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. Table 3. Means and standard deviations for media use variables. Variables * Mean Std. Deviation N ________________________________________________________________________ How likely would you be to read a story about the election in newspapers? 3.97 1.33 407 How likely would you be to watch live televised debates? 3.70 1.45 404 How likely would you be to watch a story about the election on a television news program? 3.56 1.36 406 How likely would you be to watch a story about the election on CNN -- Cable News Network? 3.43 1.55 401 How likely would you be to read a story about the election in news magazines like Time? 2.93 1.57 406 How likely would you be to listen to campaign discussions on National Public Radio programs? 2.66 1.60 403 How likely would you be to watch a story about the election on tabloid TV programs like A Current Affair? 2.44 1.51 401 How likely would you be to listen to campaign discussions on radio call-in shows? 2.00 1.31 405 How likely would you be to watch discussions about the election on late night talk shows like David Letterman? 1.77 1.28 406 Table 3 (continued). Means and standard deviations for media use variables. Variables * Mean Std. Deviation N ________________________________________________________________________ How likely would you be to find election information on the Internet or World Wide Web? 1.75 1.32 400 * Responses were coded: 5 = very likely, 4 = somewhat likely, 3 = neutral, 2 = somewhat unlikely, 1 = very unlikely. Table 4. Percentages for political affiliation and demographic variables. Variables % ________________________________________________________________________ Which political party do you most closely identify with? Republican 41.1 Democrat 33.9 No party or independent 20.7 Other . 4.3 . 100.0% (N=372) If you were voting and had to choose between two candidates you knew nothing about except their political party, would you choose the Democrat or the Republican? Democrat 39.6 Republican 40.7 Neither 18.0 Other . 1.7 . 100.0% (N=356) Sex Female 58.7 Male 41.3 . 100.0% (N=397) Race White 93.7 Black or African descent 3.6 Hispanic 0.8 Asian 1.0 Native American 0.5 Other . 0.6 . 100.0% (N=394) Education 3rd - 12th grade 10.9 High school diploma or GED 22.5 Some college 21.3 Associates degree 12.4 Bachelors degree 21.5 Graduate degree 11.4 . 100.0% (N=395) Table 4 (continued). Percentages for political affiliation and demographic variables. Variables % ________________________________________________________________________ Income less than $10,000 6.2 $10,000 - $19,999 10.6 $20,000 - $29,999 14.4 $30,000 - $39,999 14.1 $40,000 - $49,999 15.8 $50,000 - $59,999 11.1 $60,000 - $69,999 7.3 $70,000 - $79,999 9.4 $80,000 or more 11.1 . 100.0% (N=341) Gender Gap Table 5. Major factor loadings (varimax rotated) for personality trait variables. Factor 1 Factor 2 Variables * Feminine Masculine ________________________________________________________________________ The word gentle describes me. .81 -.04 The word sensitive describes me. .78 -.04 The word nurturing describes me. .77 .11 The word cooperative describes me. .58 .18 The word assertive describes me. .05 .80 The word aggressive describes me. -.20 .74 The word ambitious describes me. .12 .70 The word strong describes me. .27 .52 ___________________ Eigenvalue 2.44 1.87 Percent of variance accounted for 30.5% 23.4% * Responses were coded: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. Table 6. Crosstabulation of political affiliation by respondent's sex. Respondent's sex Which political party do you most closely identify with? Male Female ___________________________________________________________________ Republican 43.6 39.3 Democrat 29.5 37.4 No party or independent 21.8 19.9 Other 5.1 3.4 ___________________________________________________________________ 100.0% 100.0% (N=156) (N=206) X2 = 2.81, df = 3, ns Cramer's V = .09 If you were voting and had to choose between two candidates Respondent's sex you knew nothing about except their political party, would you choose the Democrat or the Republican? Male Female ___________________________________________________________________ Democrat 32.6 44.0 Republican 42.4 39.6 Neither/Other* 25.0 16.4 ___________________________________________________________________ 100.0% 100.0% (N=144) (N=207) X2 = 6.06, df = 2, p < .05 Cramer's V = .13 * In order to reduce crosstabulation results so that less than 20 percent of cells contained expected frequencies of less than five, the neither and other categories were collapsed into one group. Table 7. Independent t-tests for political issue variables by sex. Respondent's sex Male Female Means Means Variables (& SD) (& SD) t value df significance ________________________________________________________________________ The United States must 2.87 2.74 increase defense spending.* (1.08) (1.06) 1.17 385 ns Crime is the number one 3.56 3.72 problem facing our country.* (1.14) (1.11) -1.38 394 ns There should be more police officers on the streets in 3.41 3.75 our country.* (0.99) (0.92) -3.46 336 p < .001 It is important for the government to help protect endangered wildlife like the 3.75 3.81 spotted owl.* (1.04) (0.92) -0.64 324 ns The government should spend more to help 3.36 3.74 the homeless.* (1.03) (0.98) -3.68 337 p < .001 More money should be spent to improve the quality of education in 3.98 4.24 the United States.* (1.11) (0.97) -2.48 395 p < .013 * Responses were coded: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. Table 8. Independent t-tests for personality trait variables by sex. Respondent's sex Male Female Means Means Variables (& SD) (& SD) t value df significance ________________________________________________________________________ The word aggressive 3.30 3.17 describes me.* (1.05) (1.17) 1.18 371 ns The word assertive 3.76 3.83 describes me.* (0.82) (0.95) -0.76 391 ns The word ambitious 3.84 4.02 describes me.* (0.77) (0.82) -2.22 392 p < .05 The word strong 3.81 4.03 describes me.* (0.72) (0.81) -2.78 395 p < .01 The word cooperative 4.11 4.31 describes me.* (0.66) (0.62) -3.05 339 p < .01 The word nurturing 3.64 4.29 describes me.* (0.80) (0.68) -8.28 306 p < .001 The word sensitive 3.95 4.34 describes me.* (0.75) (0.70) -5.28 335 p < .001 The word gentle 3.79 4.12 describes me.* (0.72) (0.72) -4.58 393 p < .001 * Responses were coded: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. Table 9. Independent t-tests for media use variables by sex. Respondent's sex Male Female Means Means Variables (& SD) (& SD) t value df significance ________________________________________________________________________ How likely would you be to watch a story about the election on a television 3.45 3.69 news program?* (1.34) (1.33) -1.71 394 ns How likely would you be to read a story about the 3.90 4.07 election in newspapers?* (1.28) (1.31) -1.31 394 ns How likely would you be to read a story about the election in news magazines 2.79 3.04 like Time?* (1.47) (1.61) -1.58 368 ns How likely would you be to listen to campaign discussions on National 2.81 2.57 Public Radio programs?* (1.56) (1.61) 1.44 390 ns How likely would you be to watch live televised 3.52 3.86 debates?* (1.47) (1.39) -2.34 333 p < .05 How likely would you be to watch a story about the election on CNN -- 3.38 3.49 Cable News Network?* (1.51) (1.56) -0.70 389 ns How likely would you be to watch a story about the election on tabloid TV programs like A 2.24 2.62 Current Affair?* (1.32) (1.62) -2.55 381 p < .011 Table 9 (continued). Independent t-tests for media use variables by sex. Respondent's sex Male Female Means Means Variables (& SD) (& SD) t value df significance ________________________________________________________________________ How likely would you be to watch discussions about the election on late night talk shows like David 1.70 1.82 Letterman?* (1.15) (1.35) -0.95 378 ns How likely would you be to listen to campaign discussions on radio 2.06 1.98 call-in shows?* (1.28) (1.34) 0.62 392 ns How likely would you be to find election information on the Internet or World 1.65 1.80 Wide Web?* (1.22) (1.37) -1.15 368 ns * Responses were coded: 5 = very likely, 4 = somewhat likely, 3 = neutral, 2 = somewhat unlikely, 1 = very unlikely. Table 10. One-way analyses of variance for feminine scale and political party identification; and masculine scale and political party identification. Political party identification Variable Republican Democrat None/Indep. F df sig. Mean Mean Mean (SD) (SD) (SD) ________________________________________________________________________________ _________ Feminine Scale* 16.32 16.80 16.13 (2.16) (2.15) (2.29) 2.58 340 ns ____________________________ Masculine Scale** 14.99 15.17 14.64 (2.39) (2.65) (2.43) 1.02 341 ns *The feminine scale is an additive scale containing the following personality trait variables: gentle, sensitive, nurturing, and cooperative. Cronbach's reliability analysis yielded a standardized item alpha of .73. Each personality trait variable was originally coded as: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. **The masculine scale is an additive scale containing the following personality trait variables: assertive, aggressive, ambitious, and strong. Cronbach's reliability analysis yielded a standardized item alpha of .64. Each personality trait variable was originally coded as: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. Table 11. One-way analyses of variance for feminine scale and political candidate preference; and masculine scale and political candidate preference. Political candidate preference Variable Democrat Republican None/Indep. F df sig. Mean Mean Mean (SD) (SD) (SD) ________________________________________________________________________________ _________ Feminine Scale* 16.60 16.40 16.56 (2.22) (2.16) (2.16) 0.33 337 ns ____________________________ Masculine Scale** 15.15 14.76 14.90 (2.57) (2.49) (2.59) 0.84 340 ns *The feminine scale is an additive scale containing the following personality trait variables: gentle, sensitive, nurturing, and cooperative. Cronbach's reliability analysis yielded a standardized item alpha of .73. Each personality trait variable was originally coded as: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. **The masculine scale is an additive scale containing the following personality trait variables: assertive, aggressive, ambitious, and strong. Cronbach's reliability analysis yielded a standardized item alpha of .64. Each personality trait variable was originally coded as: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. Table 12. Pearson correlation coefficients for political issues and gender scale variables. Variables 2. 3. 4. 5. 6. 7. 8. ______________________________________________________________________ 1. Increase defense .15 b .20 c -.03 -.13 b -.05 -.00 .00 spending * (402) (401) (402) (401) (402) (380) (382) 2. Crime as number one ___ .33 c .06 .25 c .15 b .06 .04 problem * (410) (411) (410) (411) (389) (390) 3. More police ____ .14 b .28 c .25 c .19 c .04 officers on streets * (410) (409) (410) (389) (390) 4. Protect endangered ____ .36 c .31 c .05 -.04 wildlife * (410) (411) (390) (390) 5. Spend more to help ____ .39 c .12 a .01 the homeless * (410) (388) (389) 6. Improve the quality _____ .09 .15 b of education * (389) (390) 7. Feminine Scale ** _____ .11 a (386) 8. Masculine Scale *** _____ ___________________________________ * Responses were coded: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. ** The feminine scale is an additive scale containing the following personality trait variables: gentle, sensitive, nurturing, and cooperative. Cronbach's reliability analysis yielded a standardized item alpha of .73. Each personality trait variable was originally coded as: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. ***The masculine scale is an additive scale containing the following personality trait variables: assertive, aggressive, ambitious, and strong. Cronbach's reliability analysis yielded a standardized item alpha of .64. Each personality trait variable was originally coded as: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. ___________________________________ a p < .05 b p < .01 c p < .001 Table 13. Pearson correlation coefficients for political media use and gender scale variables. Variables 2. 3. 4. 5. 6. 7. 8. 9. 10. 11. 12. ________________________________________________________________________________ _______________ 1. Television .20 c .16 b .10 a .48 c .35 c .19 c .07 .05 .03 .11 a .02 News * (406) (405) (402) (403) (400) (400) (405) (404) (399) (389) (390) 2. Newspapers * ___ .29 c .13 b .26 c .21 c .07 .04 .14 b .09 .06 .02 (406) (403) (404) (401) (401) (406) (405) (400) (389) (390) 3. News ____ .28 c .21 c .28 c -.02 .01 .11 a .17 c .01 .07 magazines * (402) (403) (401) (400) (405) (404) (399) (388) (389) 4. National Public ____ .26 c .17 c -.18 c -.05 .36 c .12 a .04 .07 Radio programs* (401) (397) (397) (402) (402) (397) (386) (387) 5. Live televised ____ .36 c .06 .05 .16 c .12 a .06 .06 debates * (399) (399) (403) (402) (398) (387) (388) 6. Cable News _____ .13 b .03 .07 .07 .02 .19 c Network programs * (396) (400) (399) (395) (384) (385) 7. Tabloid television _____ .21 c .05 .11 a .01 -.02 programs * (400) (400) (398) (384) (385) 8. Late night _____ -.03 .05 .00 .07 talk shows * (404) (399) (388) (389) 9. Call-in radio _____ .09 -.02 .04 programs * (400) (387) (388) 10. Internet/World _____ .10 a .11 a Wide Web * (383) (384) 11. Feminine Scale ** _____ .11 a (386) 12. Masculine Scale *** _____ Table 13 (continued). Pearson correlation coefficients for political media use and gender scale variables. ___________________________________ * Responses were coded: 5 = very likely, 4 = somewhat likely, 3 = neutral, 2 = somewhat unlikely, 1 = very unlikely. ** The feminine scale is an additive scale containing the following personality trait variables: gentle, sensitive, nurturing, and cooperative. Cronbach's reliability analysis yielded a standardized item alpha of .73. Each personality trait variable was originally coded as: 5 = strongly agree, 4 = agree, 3 = neutral, 2 = disagree, 1 = strongly disagree. ***The masculine scale is an additive scale containing the following personality trait variables: assertive, aggressive, ambitious, and strong. Cronbach's reliability analysis yielded a standardized item alpha of .64. 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[1] The work of Tuchman (1978), Gitlin (1980), and van Zoonen (1994) also discuss the media's role in perpetrating the dominant ideology of the ruling class.
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