1. Introduction
Given the shift to Industry 4.0 and the characteristics of a rapidly advancing technological society, it is difficult to solve complex problems of various facets within a single discipline or on an individual level [
1,
2,
3,
4]. Accordingly, the needs for convergence education and fostering of convergence-type talents are being emphasized worldwide. Indeed, various competences (e.g., the 4Cs: communication, collaboration, critical thinking, creativity) necessary for driving future society and addressing sustainable solutions to complex problems faced in this century are continuously required from learners [
3,
5]. Many efforts have been made to prepare students for convergence education and the needed 21st century skills and competences. The integrated curriculum, for example, has been introduced to inculcate and enhance these skills and competencies. Also, as a part of such efforts, STEM education has been variously applied and studied in many countries such as the United States, Canada, UK, Australia, and the Republic of Korea [
6,
7,
8,
9].
These convergence approaches are important in that they can contribute to students’ choice of engineering as a major and then as a career path, specifically by improving their academic achievement in STEM subjects, changing their attitudes regarding their interest and curiosity, and inspiring science motivation [
8]. All of these, in turn, can lead to sustainable human resources development and supply for the crucial science and engineering fields. This situation is not much different at home (in Korea) or abroad. “Convergence” and “Integration”, often interchangeable, have a wide range of definitions:
convergence can be defined as “the deep integration of knowledge, techniques, and expertise from multiple fields to form new and expanded frameworks for addressing scientific and societal challenges and opportunities” [
10];
integration can refer to the concept of curricular integration or a specific integrated curriculum [
3], or even to different processes whereby integrated curricula are constructed (e.g., fusion, multidisciplinary, interdisciplinary, and/or transdisciplinary curricula). Further,
integration is often used in interdisciplinary studies to refer to the process of combining, or to specific combinations of approaches, insights or perspectives [
1], to ‘trading zones’ denoting interdisciplinary partnerships in which two or more perspectives are combined [
2], or to collaborations of multiple forms of expertise [
4].
Within the field of engineering education in Korea, “convergence”—the preferred term over “integration”—education has been conducted in three main directions [
11,
12,
13]. First, university departments themselves are established by integrating two majors within the college of engineering, such as the Department of Automobile and IT Convergence, the Department of Convergence IT, and the Department of Human ICT Convergence. Second, convergence education is put in place at the level of the engineering major itself, in the forms of various interdisciplinary design courses and curricula such as design and software convergence. Third, convergence-competency-enhancing education is conducted at the level of liberal arts, mainly through extra-curricular programs such as writing and communication, humanities, art, and design. Overall, in order for learners to strengthen their convergence competency, it is important to inculcate, in advance, positive attitudes toward convergence itself.
Diverse integrated education experiences of STEM curricula can have ripple effects on students’ attitudes toward integration. Attitudes research in science has a long history [
14], and much work has been done on attitudes toward specific areas, e.g., STEM [
15,
16] and mathematics [
17,
18]; in a similar context, [
19] dealt with affective dispositions of teacher candidates toward STEM education, whereas there are fewer studies on attitudes toward engineering education [
15]. The notion of “attitude” referring to someone’s basic liking or disliking of a familiar target [
20], is defined as a “psychological tendency that is expressed by evaluating a particular entity with some degree of favor or disfavor” [
21]. In this vein, attitudes toward curricula integration (hereafter, attitudes toward integration) can be defined in terms of attribute dimensions including good–bad, harmful–beneficial, pleasant–unpleasant, and likable–dislikable as well as in terms of positive integrational change [
22]. It is hoped that if the incorporation of more detail into technology and engineering curricula is emphasized and improved, students’ attitudes toward integration will be positively changed. It can be deduced that engineering students’ diverse experiences of integrated curricula are closely linked to their attitudes toward integration. So far, little is known about attitudes toward integration or their relationship to other factors for which correlation is predicted.
An integrated curriculum is reportedly an effective way of enhancing diverse 21st century competences [
3,
23] such as adaptability, complex communication, social skills, non-routine problem solving, self-management/self-development, and systems thinking, and STEM disciplines present opportunities to develop those skills [
7]. Such competences are defined and classified in different ways; one of these, ‘soft skills’, which refers to a mix of dispositions, understandings, attributes, and practices [
24], can be defined as personality traits, goals, motivations, and preferences that are valued in the labor market, in school, and in many other domains [
25]. Significantly, theses competences are not to be taught or acquired in isolation, but rather within a core body of knowledge [
26]. Recently, much attention has been paid to the utility of soft skills for flexibly coping with rapidly changing times or complicated social structures. In engineering education also, soft skills have been inculcated over the past decades to complement the ‘hard skills’ essential to that field [
27,
28,
29,
30,
31]. As such, a close relationship between soft skills and attitudes toward integration is expected. To date, though, little research exists on how soft skills are related to attitudes toward integration, which, significantly, is a variable predicted to be changed or enhanced through integrated STEM curricula.
Additionally, as the world becomes more complex and integrated, empathy is more and more required, even in engineering. Even so, engineering education traditionally has focused on a set of technical skills (e.g., problem solving, design, modeling), and the lack of research on the connection between engineering and empathy is glaring [
32]. Empathy is broadly defined as “the reactions of one individual to the observed experiences of another” ([
33], p. 113). In engineering, human-centered design or empathic communication skills enable engineers to develop personal connections with users [
34]. Empathy in social and emotional skills, with self-awareness, respect for others and communicativeness, are becoming essential at home, work and in the community. And as soft skills, often called “emotional intelligence”, can include empathy as a component [
35], a close relationship between the two is predicted. Also, as attitudes toward integration include comprehension and tolerance of difference, they are expected to be linked with empathy. Nonetheless studies on how empathy and attitudes toward integration are related are rare.
In the present study, we examined the relationships among attitudes toward integration, soft skills and empathy as well as the effects of soft skills and empathy on attitudes toward integration. Although previous studies have shown mainly how STEM education affects students’ academic achievement as well as attitudes toward STEM, the attitudes toward integration itself, specifically of engineering students, and their relationship with integrated curriculum-related variables such as soft skills and empathy have not been fully explained, despite their importance. Also, to date, little research exists on how attitudes toward integration are related to soft skills and empathy. Thus, the present study conducted an empirical study to understand the relationships among attitudes toward integration, soft skills and empathy. If the relationships among these variables are adequately identified, they can be utilized to suggest routes to education improvement in related fields and to help bring about positive change in students’ attitudes toward integration.
4. Results
4.1. Differences in Attitudes of Engineering Students toward Integration, Soft Skills and Empathy by Gender
The mean scores of the men and women on each of three variables are presented in
Table 1. Men scored higher in all cases for two variables: attitudes toward integration and soft skills, as well as most of their sub-factors, whereas women scored higher in empathy and most of its sub-factors.
The mean score for attitudes toward integration (total) was 3.76; for men, 3.77, and for women, 3.75. Descriptive analyses carried out for the five dimensions of attitudes toward integration demonstrated higher levels of comprehension and tolerance of difference (M = 4.03, sd = 0.53) and commitment to integrated task (M = 3.81, sd = 0.69) than the levels of others, e.g., aesthetic sensitivity (M = 3.42, sd = 0.6) (Wilks’ lambda = 0.927, F = 4.691, p < 0.001).
The mean score for soft skills (total) was 3.72. The mean score for men was 3.76, while that for women was 3.67. Descriptive analyses carried out for the fourteen sub-categories of soft skills demonstrated relatively higher levels for flexible (M = 4.03, sd = 0.44), resourceful (M = 3.93, sd = 0.53), cooperative (M = 3.85, sd = 0.62) and assertive (M = 3.85, sd = 0.53) than for the others, e.g., pioneering (M = 3.48, sd = 0.82), and versatile (M = 3.30, sd = 0.78) (Wilks’ lambda = 0.915, F = 1.896, p < 0.05).
The mean score for empathy (total) was 2.85; for men, 2.81, and for women, 2.90. Descriptive analyses carried out for the five dimensions of empathy demonstrated higher levels for online simulation (M = 3.10, sd = 0.41) and perspective taking (M = 3.06, sd = 0.45) than for the others, e.g., emotion contagion (M = 2.58, sd = 0.64) (Wilks’ lambda = 0.945, F = 3.470, p < 0.001).
MANOVA was used to determine statistically significant differences in the three variables (i.e., attitudes toward integration, soft skills, empathy) by gender.
Table 2 shows that there were in fact such differences: Wilks’ lambda = 0.927 at the 0.001 level, 0.915 at the 0.5 level, and 0.945 at the 0.01 level. A univariate significance test was used to assess which of the dependent variables had contributed to the overall intergroup difference, and stepdown analysis was used to individually assess the differences of the dependent variables after eliminating the effects of the dependent variables preceding them in the analysis [
75]. First, there were statistically significant differences in one sub-factor of attitudes toward integration, namely willingness to integrate disciplines (0.01 level); there were differences also in the three sub-factors of soft skills, namely accurate (0.05 level), versatile (0.01 level), and dependable (0.05 level), as well as in empathy (total) (0.05 level) and its two sub-factors, namely proximal responsivity (0.05 level), and peripheral responsivity (0.01 level).
These results support Hypothesis 1-1: men will score higher in attitudes toward integration than women engineering students. Also, these results partially support Hypothesis 1-2: women engineering students will score higher in soft skills and empathy than men.
4.2. Relationships among Attitudes toward Integration, Soft Skills and Empathy
To identify the relationships among these three variables as perceived by engineering students, a Pearson correlation analysis was conducted. The results, summarized in
Table 3, indicate significant correlations among the sub-factors of the three variables. First, at the significance level
p < 0.01, a positive correlation (0.16~0.71) was observed between the attitudes toward integration and soft skills sub-factors; second, there were correlations among most of the sub-factors of attitudes toward integration and empathy. At the significance levels
p < 0.01 and
p < 0.05, a positive correlation (0.13~0.57) was observed between the soft skills and empathy sub-factors. Also, at the significance level
p < 0.05, a negative correlation (−0.14) was observed between commitment to integrated task (a soft skills sub-factor) and peripheral responsivity (an empathy sub-factor). The correlation values among all factors were smaller than 0.08, proving that there was no multicollinearity problem. These results support Hypothesis 2: there will be significant correlations among attitudes toward integration, soft skills and empathy.
4.3. Effects of Soft Skills and Empathy on Attitudes toward Integration
4.3.1. Effects of Soft Skills and Empathy on Attitudes toward Integration
Table 4 shows the effects of soft skills and empathy on attitudes toward integration (total).
The analysis results show that soft skills and empathy explained about 51.9% (R2 = 0.519) of attitudes toward integration (total). Of that percentage, soft skills (total) had larger explanatory power, at 50.%. When the other sub-factor, empathy (total) was added, this rose by 1.9% to 51.9% of the total. For the F value, 11.506 was significant, at p < 0.01, indicating the validity of this regression model. The tolerance limits of the independent variables were higher than 0.1, at 0.906 for each, indicating no multicollinearity problem. The Durbin–Watson value of 1.743 was closer to 2, showing no correlation among residuals, in support of regression model validity.
4.3.2. Effects of Soft Skills and Empathy on Interest in Various Disciplines
Table 5 shows the effects of soft skills’ and empathy’s sub-factors on interest in various disciplines, a sub-factor of attitudes toward integration.
The analysis results show that soft skills’ and empathy’s sub-factors explained about 28.5% (R2 = 0.285) of interest in various disciplines—a sub-factor of attitudes toward integration. Of that percentage, creative had the largest explanatory power, at 25.2%. When the other sub-factors, energetic and peripheral responsivity, were added, this rose by 3.3% to 28.5% of the total. So, in terms of the relative explanatory power of interests in various disciplines, creative was the strongest influence, followed by energetic and peripheral responsivity. For the F value, 4.871 was significant, at p < 0.05, indicating the validity of this regression model. The tolerance limits of the independent variables were higher than 0.1, at 0.736, 0.741 and 0.992 for each, indicating no multicollinearity problem. The Durbin–Watson value of 1.903 was closer to 2, showing no correlation among residuals, in support of regression model validity.
4.3.3. Effects of Soft Skills and Empathy on Aesthetic Sensitivity
Table 6 shows the effects of soft skills’ and empathy’s sub-factors on aesthetic sensitivity, a sub-factor of attitudes toward integration.
The analysis results show that soft skills’ and empathy’s sub-factors explained about 31.7% (R2 = 0.317) of aesthetic sensitivity—a sub-factor of attitudes toward integration. Of that percentage, creative had the largest explanatory power, at 17.9%. When the other sub-factors, peripheral responsivity, emotion contagion, and pioneering, were added, this rose by 13.8% to 31.7% of the total. So, in terms of the relative explanatory power of aesthetic sensitivity, creative was the strongest influence, followed by peripheral responsivity, emotion contagion, and pioneering. For the F value, 4.440 was significant, at p < 0.05, indicating the validity of this regression model. The tolerance limits of the independent variables were higher than 0.1, at 0.701, 0.703, 0.990 and 0.999 for each, indicating no multicollinearity problem. The Durbin–Watson value of 2.039 was closer to 2, showing no correlation among residuals, in support of regression model validity.
4.3.4. Effects of Soft Skills and Empathy on Commitment to Integrated Task
Table 7 shows the effects of soft skills’ and empathy’s sub-factors on commitment to integrated task, a sub-factor of attitudes toward integration.
The analysis results show that soft skills’ and empathy’s sub-factors explained about 42.7% (R2 = 0.427) of commitment to integrated task—a sub-factor of attitudes toward integration. Of that percentage, self-reliant had the largest explanatory power, at 34.0%. When the other sub-factors, creative, energetic, and altruistic, were added, this rose by 8.7% to 42.7% of the total. So, in terms of the relative explanatory power of commitment to integrated task, self-reliant was the strongest influence, followed by creative, energetic, and altruistic. For the F value, 7.882 was significant, at p < 0.01, indicating the validity of this regression model. The tolerance limits of the independent variables were higher than 0.1, at 0.397, 0.467, 0.575 and 0.64 for each, indicating no multicollinearity problem. The Durbin–Watson value of 2.228 was closer to 2, showing no correlation among residuals, in support of regression model validity.
4.3.5. Effects of Soft Skills and Empathy on Comprehension and Tolerance of Difference
Table 8 shows the effects of soft skills’ and empathy’s sub-factors on comprehension and tolerance of difference, a sub-factor of attitudes toward integration.
The analysis results show that soft skills’ and empathy’s sub-factors explained about 56.8% (R2 = 0.568) of comprehension and tolerance of difference—a sub-factor of attitudes toward integration. Of that percentage, flexible had the largest explanatory power, at 43.9%. When the other sub-factors, online simulation, resourceful, accurate, and perceptive, were added, this rose by 12.9% to 56.8% of the total. So, in terms of the relative explanatory power of comprehension and tolerance of difference, flexible was the strongest influence, followed by online simulation, resourceful, accurate, and perceptive. For the F value, 6.176 was significant, at p < 0.05, indicating the validity of this regression model. The tolerance limits of the independent variables were higher than 0.1, at 0.411, 0.459, 0.503, 0.604 and 0.707 for each, indicating no multicollinearity problem. The Durbin–Watson value of 2.090 was closer to 2, showing no correlation among residuals, in support of regression model validity.
4.3.6. Effects of Soft Skills and Empathy on Willingness to Integrate Disciplines
Table 9 shows the effects of soft skills’ and empathy’s sub-factors on willingness to integrate disciplines, a sub-factor of attitudes toward integration.
The analysis results show that soft skills’ and empathy’s sub-factors explained about 32.2% (R2 = 0.322) of willingness to integrate disciplines—a sub-factor of attitudes toward integration. Of that percentage, creative had the largest explanatory power, at 26.5%. When the other sub-factor, self-reliant, was added, this rose by 5.7% to 32.2% of the total. So, in terms of the relative explanatory power of willingness to integrate disciplines, creative was the strongest influence, followed by self-reliant. For the F value, 24.935 was significant, at p < 0.001, indicating the validity of this regression model. The tolerance limits of the independent variables were higher than 0.1, at 0.639 for each, indicating no multicollinearity problem. The Durbin–Watson value of 1.911 was closer to 2, showing no correlation among residuals, in support of regression model validity.
All these results support Hypothesis 3: soft skills will have a positive effect on attitudes toward integration, and Hypothesis 4: empathy will have a positive effect on attitudes toward integration.
5. Discussion
This study sought to investigate attitudinal differences respecting integration, soft skills and empathy among engineering students in Korea by gender. It also aimed to examine the relationships among attitudes toward integration, soft skills and empathy as well as the effects of soft skills and empathy on attitudes toward integration. The main study findings follow.
First, regarding gender attitudinal differences regarding integration, soft skills and empathy, statistically significant differences were found in the three variables’ sub-scales. Concerning gender attitudinal difference toward integration, men scored higher than women. This is consistent with a previous study [
11]. Also, the finding on gender differences in soft skills, that men scored significantly higher in accuracy, versatility, and dependability than women, contradicts the results from [
27]. Both of these results on gender gaps can be explained by previous reports on the engineering field’s characteristics [
46,
47], where a significant number of women experience identity confusion and difficulties in career progress due to the male-dominant culture (e.g., collective-mindedness, men-centric education, task-orientation). In fact, many integrated curricula in engineering education, such as capstone design or imaginary engineering, are provided based on task types in which diverse students work together to design, perform, or solve problems. In this process, if women students experience discomfort in team activities without being able to play a leadership role due to a lack of gender-sensitive attitudes from engineering professors or fellow male students, or their own inner conflicts, they have difficulties in achieving or experiencing self-efficacy, resulting in poor attitudes toward integration. Considering these difficulties for women engineering students, it is necessary to increase their interest and self-efficacy by facilitating repeated experiences of success or curiosity through diverse integrated curriculum-based activities. Also, this study’s finding of gender difference in empathy is consistent with numerous previous studies [
27,
67,
68,
69]. According to those, women were more empathetic than men, which was confirmed in the current study. Nowadays, engineering design encompasses many activities, and user-participation processes make new demands. So, engineering education should foster an environment suitable for further development of engineering students’ empathy by incorporating empathy into the teaching of more technical outcomes (e.g., in order to fully incorporate clients’ needs) [
32]. In this vein, for example, co-creation workshops between engineering students and user representatives as a learning experience focusing on the user’s needs have been identified as appropriate for user-centered design education [
34]. Certainly, further disaggregation analyses for other related factors simultaneously would be informative. Accordingly, the present study’s findings on engineering students’ gender attitudinal differences on integration, soft skills and empathy can contribute to generalizing the previous studies’ conclusions.
Second, regarding the correlations among attitudes toward integration, soft skills, and empathy, positive ones were found for most of the three variables’ sub-factors. As there have been only a few studies directly or indirectly dealing with correlations among these three variables, it is difficult to directly compare them with the current study. However, based on prior studies [
28,
29,
31,
32,
34,
35], we can predict that the higher a student’s soft skills, the more positive the attitudes toward integration. Also, the higher one’s empathy, the more positive the attitudes toward integration. With an integrated curriculum being an effective way of enhancing diverse 21st century competences including soft skills and empathy [
3,
23], a student’s attitudes toward integration are closely related to soft skills and empathy. Therefore, it is necessary to embed soft skills training into hard skills, which is an effective method of achieving both a preferred pedagogy and enhanced soft skills [
29]. Through enhanced soft skills as well as empathy, attitudes toward integration can be expected to be enhanced.
Third, this study investigated the effects of engineering students’ soft skills and empathy on their attitudes toward integration, with soft skills and empathy having a considerable effect on attitudes toward integration as well as its sub-factors. Notwithstanding the paucity of studies directly examining the relationships among attitudes toward integration, soft skills, and empathy, the current results on the effects of both soft skills and empathy on attitudes toward integration, at least, are congruent with the literature [
11]. In light of the current study’s results, soft skills need to be further enhanced. Also, the current findings on the effects of soft skills and empathy on attitudes toward integration are supported by several similar studies examining the social skills/empathy [
35,
66] and empathy/engineering [
32,
63,
68] relationships. Thus, it can be stated that to enhance attitudes toward integration, soft skills as well as empathy need to be reinforced. Few studies have empirically investigated whether there are significant effects of soft skills as well as empathy on attitudes toward integration. The conclusions of this empirical study respecting the positive impacts of soft skills and empathy on attitudes toward integration will help to foster a better educational environment for attitudinal improvement regarding integration.
This study’s findings are of limited generalizability to all undergraduate students majoring in engineering, because its sample was drawn from only three large Korean universities’ undergraduates. Future studies need to be conducted with larger and more extensive samples for better generalizability to more students and further expansion of the parameters of the engineering education environment. Also, future research needs to employ a mixed-method research design in order to support the present findings with stronger and more concrete evidence. Finally, future studies need to examine more and different variables possibly related to attitudes toward integration. In these ways, more appropriate means of improving engineering students’ attitudes toward integration, soft skills, and empathy can be explored in return for more convincing conclusions.