I. INTRODUCTION
In an increasingly open and inclusive society, a topic of analysis is the gender difference in relation to education, work areas, presence in the labor field, among others. Related to education, a low participation of women was detected internationally in STEM [1] areas (science, technology, engineering, and mathematics). Chile is no exception, in technology-related careers, such as Computer Engineering or Computer Civil Engineering, there is a lower enrollment of women than men; in all different types of higher education institutions, whether they are universities, professional institutes or technical training centers [2].
Considering the history of low women participation rates in STEM, and the low number of women enrolled in careers associated with technology, in this paper, we present the analysis of a survey conducted with students and workers in a career associated with technology. The aim was to establish if there is a perception of the gender gap. Initially, the study was separated according to gender and economic activity in order to establish if there are differences in perception between them. The results showed that there are perceived gaps in favor of men. From a gender-related point of view, women do identify male chauvinism in careers associated with technologies, and from the workers’ point of view, they consider that the careers are more appropriate for the male gender. Thus, showing a variation in perceptions when respondents have work experience. In addition, it was possible to establish differences in the perception of competences in favor of men, for example in areas of robotics.
The document is organized as follows: section 2 shows the methodology, then, section 3 presents the results, and finally, section 4 indicates the conclusions and future work.
II. METHODOLOGY
To begin this work, the background of gender gaps in Chile was reviewed. Next, the methodology and the survey were defined. Each of which is presented below.
A. Background of Gender Gaps
Chile is a country with a diversity in the earnings perceived by workers in general. Several studies on wage inequality have been carried out considering the national socioeconomic characterization survey [3]. In [4] the authors analyzed the change in wage inequality in relation to the diversification and expansion of higher education in Chile between the years of 1992 to 2000 and 2000 to 2013, finding an increase in inequality in the first years of the study and then a decrease in the remaining years due to the diversification of higher education.
Considering that STEM competences have been related to education and the development of a country, in [5] the authors exposed that Latin America has a level of delay in relation to other countries in the world. However, Chile appears better positioned than its neighbors in terms of science education and mathematics skills. It is also important to analyze the particular gender situation in STEM. The same study shows that there is an important gap in the Latin American regarding the situation of female researchers, in addition to showing a very low percentage in Chile of female graduates in relation to men in STEM disciplinary areas [5].
In Chile, studies have been carried out on gender gaps in university selection tests, showing important differences regarding women who study in technical-professional establishments, which could influence, among other things, the entry to STEM-related careers. Furthermore, it reveals initiatives from different universities to incorporate women in this area [6], thus demonstrating the existing concern and measures taken to improve this situation.
In a national context, according to data from the National Institute of Statistics, less than 25% of the people with a degree in technology fields are women [7]. The foregoing is consistent with the enrollment in higher education in the years 2007 to 2018 of women in knowledge of technology, which is also less than 25% [8]. Thus, evidencing a gender gap at the national level on careers in technology.
B. Survey Methodology
The research design is quantitative, non-experimental, and descriptive with a correlational approach. From the dimension of time, the study is cross-sectional. The sample reached 104 cases. Students and workers related to computer science were the subjects of study, as part of the careers in the technology area. The instrument was applied through an online questionnaire, in a period of two weeks. The response rate was 94% for fully answered instruments.
C. Perception Survey
A gender gap perception questionnaire was applied in technology-related areas. The objective was to obtain the gender gap perceptions of students and workers in areas related to technology.
The questionnaire was applied at the beginning of May 2021. The participants who voluntarily answered the survey were informed that their answers would be used only for academic purposes and the personal data collected would be kept strictly confidential. The questionnaire is shown in Table 1.
The questionnaire was divided into 2 sections: (i) sociodemographic characterization section, where the uniqueness of the participants is established, and (ii) gender perception section, aimed at obtaining perceptions about the performance of women in areas of the information and communication technologies and elements that can affect and cause a breach.
III. RESULTS
The data analysis was performed through descriptive and inferential statistics, exploratory factor analysis, and reliability analysis. The descriptive analysis used frequency, mean and standard deviation distributions. For the inferential analysis we applied the Kolmoorov-Smirnonov test for the analysis of the data distribution, the Chi-Square test, and the Spearman test to perform hypothesis contrasts of the variables sex and economic activity. Factor analysis and reliability to analyze the structure and reliability of the model. The significance level used at 0.10.
A total of 104 participants answered the survey. The characterization of the sample can be seen in Table 2. Based on the responses, it can be established that the majority of the participants are men (87%). They are young persons under 29 years of age (70%). Furthermore, the majority are students (64%). Of the participants who have work activities (36%), their area of specialization was mainly linked to Development (33%), Networks, and Security (13%).
Characteristic | Percentage |
---|---|
Men | 87.1% |
>29 years old | 29.7% |
Students | 64.4% |
Development Specialization (Worker) | 33.3% |
Networks and Security Specialization (Worker) | 13.8% |
Table 3 shows the descriptive statistics of the questions associated with the perception of the gender gap, differentiated by sex. High percentage levels of Agreement (Agree and Strongly Agree on the Likert scale) are observed between men and women (7/7 items have aggregate distributions greater than 32% Agreement). The similar percentage distribution of the gap perception between men and women stands out with respect to (P08) “You feel that technology-related careers are more suitable for men than for women” and (P12) “Women have the leadership to assume leadership roles in areas associated with technologies”. The dispersion statistics indicate a high diversity in the response (SD> 1.1), indicating a lack of consensus in the perception between men and women. The greatest variability for men and women in perception was in the cultural factor as an element that explains the low female participation in the area of technology. When contrasting the hypothesis that the distribution of perception is independent of sex, it is observed that women, unlike men, perceive that (P11) “There is male chauvinism in careers associated with technology” (X2 = 128.4; df = 103, p-value = 0.046). For the rest of the variables, no difference in perception is observed (p-value> 0.1).
When revealing the descriptive statistics (Table 4) for the questions associated with the perception of the gender gap differentiated from economic activity, high levels of agreement are observed (6/7 items have aggregate distributions greater than 40%). The distribution of the differentiated responses according to Student and Worker present similar percentages.
The contrast of hypotheses for the perception of the gap and economic activity allowed us to identify that there is a significant difference in the distribution regarding the perception of the gap in (P09) “There is a lower academic performance in women who study careers associated with technology” (X2 = 130.0; df = 103, p-value = 0.037). The working participants agree more with this statement than the students. For the rest of the variables, no difference in perception was observed (p-value> 0.1). In Table 5, descriptive statistics are presented for the perception of contextual situations that would explain the gap differentiated by sex.
Indicator | Male | Female | p-value | ||||
---|---|---|---|---|---|---|---|
% Agreement | Average | SD | % Agreement | Average | SD | ||
P15 | 50.0 | 3.466 | 0.9462 | 60.5 | 3.615 | 0.7679 | 0.673 |
P16 | 61.4 | 3.523 | 0.8967 | 43.9 | 3.692 | 0.7511 | 0.256 |
P17 | 44.5 | 3.386 | 1.1689 | 53.9 | 3.692 | 0.9473 | 0.782 |
P18 | 57.9 | 3.534 | 0.9820 | 46.2 | 3.462 | 0.7763 | 0.673 |
P19 | 37.7 | 3.364 | 0.9847 | 46.2 | 3.385 | 1.1209 | 0.925 |
P20 | 52.3 | 3.545 | 0.9458 | 52.9 | 3.692 | 0.7511 | 0.776 |
P21 | 43.2 | 3.193 | 1.2582 | 53.9 | 3.615 | 1.0439 | 0.627 |
P22 | 46.6 | 3.432 | 1.1527 | 46.2 | 3.692 | 1.0316 | 0.689 |
It is evidenced that there is a high and majority percentage consensus regarding the explanatory situations of the perception of the gap (7/8 items have aggregate distributions greater than 45% Agreement). Women, as a percentage, consider that the gap is explained to a greater extent by (P15) “Part-time job”, P (17) “Level of educational preparation for employment” and (P21) “Leadership capacity”. For their part, men consider, in percentage terms, that the gap is explained by (P16) “Low-income economic sectors jobs” and (P18) “Socially less valued jobs”. Despite the different distributions observed according to sex, no differentiated behaviors were observed in the explanatory factors of the gap (p-value> 0.1).
Table 6 indicates the frequency distributions and the descriptive statistics of the questions associated with the explanatory factors of the gap differentiated by economic activity. High percentage levels of Agreement are observed for both segments (all items have an aggregate frequency greater than 50% Agreement). Students have a higher aggregate frequency than workers for the context factors of the gap associated with (P15) “Part-time job”, (P17) “Level of educational preparation for employment”, (P18) “Socially less valued jobs”, (P22) “Family responsibility”, (P19) “Self-perception of labor productivity”, and (P21) “Leadership capacity”.
When contrasting the hypotheses of the percentage distributions with respect to the variables that explain the gap according to work activity, it is observed that there is a significant relationship between several factors. Students perceive to a greater extent than workers that the gap is explained by (P15) “Part-time job” (X2 = 130.1; df = 103, p-value = 0.037), (P17) “Level of educational preparation for employment ”(X2 = 127.1; df = 103, p-value = 0.054), (P18)“ Socially less valued jobs ”(X2 = 127.9; df = 103, p-value = 0.049) , (P22) “Family responsibility” (X2 = 122.5; df = 103, p-value = 0.090), (P19) “Self-perception of labor productivity” (X2 = 140.0; df = 103, p-value = 0.092) and (P21) “Leadership capacity” (X2 = 122.7; df = 103, p-value = 0.090).
Table 7 shows the frequency distributions for the perception of the skills gap in different areas of technology according to sex. The percentage of agreement reflects the perception of a strong or slight gap in favor of men. The results indicate that the perception of the gap between men and women indicates high levels of agreement regarding a direction of the gap in favor of men. (6/7 items have a higher percentage of agreement of 35% in men and 7/7 in the case of men). A percentage of perception of competences is observed in the areas that 53% of women indicate that the gap is in favor of men, which contrasts with the 30% perception of competencies of the male segment. The competencies with the greatest percentage differentiation in favor of a male gap are Programming, Networks and communications, Security and Robotics.
The contrast of hypotheses for the perception of competencies in the areas and sex allows us to reveal that there is a significant difference in the distribution with respect to the competencies in Robotics. Women present a greater bias gap than men, regarding the domain of robotic competencies (X2 = 127.1; df = 103, p-value = 0.054). For the rest of the variables, no difference in perception is observed (p-value> 0.1).
Table 8 summarizes the frequency distributions and descriptive statistics for the skills perception gap in the technological areas according to work activity. On average, 40% of the participants consider that regardless of the type of gap in the area, it favors men.
Indicator | Student | Worker | p-value | ||||
---|---|---|---|---|---|---|---|
% Agreement | Average | SD | % Agreement | Average | SD | ||
P23 | 29.2 | 3.385 | .6541 | 38.9 | 3.500 | .6969 | 0.601 |
P24 | 46.2 | 3.600 | .8979 | 47.2 | 3.694 | .8218 | 0.775 |
P25 | 29.3 | 3.277 | .6961 | 33.3 | 3.333 | .8944 | 0.390 |
P26 | 37.0 | 3.400 | .8062 | 52.3 | 3.833 | .8106 | 0.156 |
P27 | 44.6 | 3.646 | .8738 | 43.5 | 3.556 | .7725 | 0.624 |
P28 | 33.1 | 3.492 | .7526 | 42.6 | 3.639 | .8333 | 0.155 |
P29 | 32.9 | 3.369 | .9112 | 30.7 | 3.278 | .8146 | 0.303 |
The results indicate that the perception of the skills gap in the areas between students and workers has high levels of agreement regarding a gap direction in favor of men (5/7 items have the percentage of perception of workers higher than students). For the variables, no difference in perception is observed (p-value> 0.1).
In this research, the Kolmogorow-Smirnow test was used to verify the hypothesis that the variables are normally distributed. Table 9 shows that none of the variables have a normal distribution (p = 0.1 is used as the decision rule).
Gap Perception | Context Perception Gap | Computer skills | |||||
---|---|---|---|---|---|---|---|
Indicator | p-value | Indicator | p-value | Indicator | p-value | ||
P8 | 0.000 | P15 | 0.000 | P23 | 0.000 | ||
P9 | 0.000 | P16 | 0.000 | P24 | 0.000 | ||
P10 | 0.000 | P17 | 0.000 | P25 | 0.000 | ||
P11 | 0.000 | P18 | 0.000 | P26 | 0.000 | ||
P12 | 0.000 | P19 | 0.000 | P27 | 0.000 | ||
P13 | 0.000 | P20 | 0.000 | P28 | 0.000 | ||
P14 | 0.000 | P21 | 0.000 | P29 | 0.000 | ||
P22 | 0.000 |
Based on the above data, the hypothesis of the relationship among the different indicators of perception of the gap is tested. In Table 10, numbers in bold indicate a statistically significant value of the Spearman test, using p <0.05 as a decision criterion.
Table 10 shows that there is a positive relationship between the perception that (P08) “You feel that technology-related careers are more suitable for men than for women” and (P09) “There is lower academic performance in women who study careers associated with technology ”(r = 0.6; p-value = 0.021) and negative with (P13) “Women can perform better than men in areas associated with technologies” (r = 0.261; p-value = 0.051). (P10) “The cultural factor contributes negatively to the fact that women choose a career associated with technology” is positively related to (P11) “There is male chauvinism in careers associated with technology” (r = 0.528; p-value = 0.011 ), and with (P12) “Women have the leadership to assume leadership roles in areas associated with technologies” (r = 0.22; p-value = 0.062) and with (P14) “The level of income of women is lower than that of men in areas associated with technologies” (r = 0.329; p-value = 0.045). In turn (P11) “There is male chauvinism in careers associated with technology” (r = 0.445; p-value = 0.035) is positively related to (P14) “The level of income of women is lower than that of men in areas associated with technologies”.
Table 11 reflects the indicators of the exploratory factor analysis for the perception of the gap. The data showed a gap perception structure made up of 3 dimensions, with an explained variance of 68.2% and a Cronbach’s alpha reliability index of 0.659.
Question | Factor 1 | Factor2 | Factor 3 |
---|---|---|---|
P11 | 0.856 | ||
P10 | 0.803 | ||
P14 | 0.650 | ||
P8 | 0.870 | ||
P9 | 0.855 | ||
P13 | 0.901 | ||
P12 | 0.823 | ||
V, Explained | 26.838 | 22.442 | 18.951 |
Reliability | 0.659 | ||
Indicators | 3 | 2 | 2 |
The first dimension (F1) is called “Perception of Male Superiority” and it is made up of 3 indicators and explains 26.8% of the variance of the construct. The second dimension (F2) is called “Educational Competence”, which is made up of 2 indicators and an explained variance of 22.4%. The third dimension (F3), labeled as “Labor Competence”, explains 18.9% of the construct and it is made up of 2 indicators.
For the contexts that allow explaining the perceived gap, the hypothesis of the relationship among the different indicators is tested. Numbers in bold indicate a statistically significant value of the Spearman test, using p <0.05 as the decision criterion. In Table 12, we can see that all the indicators are significantly and positively related to each other.
Table 13 shows the indicators of the exploratory factor analysis for the items in the context of the gap. The data showed a gap perception structure made up of 2 dimensions, with an explained variance of 59.4% and a Cronbach’s alpha reliability index of 0.828.
Question | Factor 4 | Factor 5 | Factor 6 |
---|---|---|---|
P16 | 0.808 | ||
P15 | 0.769 | ||
P17 | 0.718 | ||
P18 | 0.708 | ||
P22 | 0.911 | ||
P21 | 0.655 | ||
P20 | 0.541 | ||
P19 | 0.471 | 0.520 | |
V, Explained | 33.973 | 25.455 | 0.000 |
Reliability | 0.828 | ||
Indicators | 4 | 4 | 0 |
The first dimension (F4), called “Educational Labor Context”, is made up of 4 items and has an explained variance of 34%. The second dimension (F5), labeled “Social and Personal Context”, explains 25.6% of the variance of the construct through 4 indicators. Regarding the interrelation among the items that structure the perception of the gap related to competencies in different technological areas, the hypothesis of the relationship among the different indicators is tested. Numbers in Table 14, in bold type, indicate a statistically significant value of the Spearman test, using p <0.05 as the decision criterion. All the indicators are significantly and positively related to each other.
Table 15 shows the indicators of the exploratory factor analysis for the items of competencies in areas. The data showed a structure of skills perception in technological areas made up of 1 dimension, with an explained variance of 62.7% and a Cronbach’s alpha reliability index of 0.897. From the above, factor (F6) is labeled as “Competence and skill in the technology area”.
Question | Factor 6 | Factor 7 | Factor 8 |
---|---|---|---|
P28 | 0.872 | ||
P29 | 0.798 | ||
P26 | 0.798 | ||
P27 | 0.791 | ||
P25 | 0.778 | ||
P24 | 0.777 | ||
P23 | 0.698 | ||
V, Explained | 62.209 | 0 | 0 |
Reliability | 0.897 | ||
Indicators | 7 | 0 | 0 |
To analyze the hypothesis of the existence of significant differences among the perception of the participants for the study dimensions according to sex, the Mann-Whitney U test was used, using p <0.05 as the decision criterion. The results are presented in Table 16.
There is a significant difference in the perception of men and women for the items (P11) “There is male chauvinism in careers associated with technology” (z = -1.653; p-value = 0.042), (P13) “Women can perform better than men in areas associated with technologies” (z = -1.659; p-value = 0.043). For the rest of the variables, no difference in perception is observed (p-value> 0.1).
For the contrast by explanatory context of the gap, no significant differences were observed by sex (p-value> 0.1). On the other hand, it is observed that there is a significant difference between men and women for the competences in (P25) “Project Management” (z = -1.461; p-value = 0.073) and (P28) “Robotics” (z = -2.223; p-value = 0.013).
Table 17 shows the results of the hypothesis test of the existence of significant differences among the perception of the subjects for the dimensions of the study according to economic activity. The Mann-Whitney U test was used, using p <0.05 as the decision criterion.
There is a significant difference in the perception of Students and Workers for the items (P08) "You feel that technology-related careers are more suitable for men than for women" (z = -1.522; p-value = 0.064), (P17 ) “Level of educational preparation for employment” (z = -1.883; p-value = 0.003), (P19) “Self-perception of labor productivity” (z = -1.453; p-value = 0.073), (P21) “Leadership capacity” (z = -2.576; p-value = 0.005) and (P26) “Gap in Networks and Communications” (z = -2.170; p-value = 0.015). For the rest of the variables, no difference in perception is observed (p-value> 0.1).
In Table 18 the factor score for each of the factors found in the exploratory factor analysis was calculated and contrasted to the variables of sex and economic activity.
Regarding the first factor (F1) “Perception of Male Superiority”, the results indicate that this dimension is perceived differently between men and women (t = 1.594 df = 103; p-value = 0.057). Men perceive themselves with a higher superiority score and women do not perceive themselves inferior to men. For the explanatory dimension of the gap (F4) “Educational Labor Context” a significant difference is observed between students and workers (t = 1.690 df = 103; p-value = 0.047). Workers consider that the gap is explained, in part, by the employment and educational context. In relation to the explanatory dimension (F5) “Social and personal Context”, the results do not allow accepting the null hypothesis of equality of factorial means by economic activity (t = 1.534 df = 103; p-value = 0.064). Finally, for the (F6) “Competences and Skills in Technological Areas”, a difference in perception is observed between men and women (t = 1.568 df = 103; p-value = 0.060). The surveyed men self-perceive they have greater technological skills and abilities than women.
IV. CONCLUSIONS
We obtained 104 responses to the applied questionnaire. The sample was composed mainly of young men. Among the workers, the specialization in development, security, and networks and communications stands out. In relation to the objectives, there is a high consensus regarding the aspects that generate and determine the perception of the gap, which implies that there is a high degree of agreement in most of the items evaluated. In addition, there is a high consensus in indicating that there is a latent gap in the area of technologies.
In terms of gender, men do not consider to a greater extent that there is male chauvinism in the computer studies area. In addition, they consider that women can perform better in the leadership role and that they can perform better than men in the labor field. For their part, women consider that there is male chauvinism in careers in the areas associated with technologies and the careers are also suited to female expectations. When contrasting by economic activity, some perceptions tend to decline in intensity, indicating that work experience conditions the perception of the gap. With work experience, the gap is oriented to the association of the career with gender, it is considered adequate for the male gender.
Also from the gender perspective, there is a high consensus regarding the factors that would explain the gap, among which the employer bias stands out. The incorporation of the participants of study into the world of work generates a change in perception regarding the variables that would explain the gap. The workers’ perception is oriented to the fact that the gap is explained by conditions of the educational work context and personal social context.
The underlying dimensions indicate that the perception of the gap is in “Perception of Male Superiority”, “Educational Competence” and “Labor Competence”. On the other hand, the perceived explanatory factors of the gap are the “Educational Labor Context” and the “Social and Personal Context”.
Finally, among the participants under study, the dimension of male superiority is rejected by women, but not by men.
For future research, it is expected to enlarge the sample of this survey. In addition to conducting research associated with the statistical data provided by the CASEN survey, in such a way as to contrast the findings of this study with the data provided at the national level.