Antecedents of College Students’ Continuance Behaviors in Online Fragmented Learning: An Empirical Analysis from the Extended ECM Perspective
Abstract
:1. Introduction
2. Literature Review
2.1. Literature on Online Fragmented Learning and Its Factors
2.2. Literature on the Determinants of Online Continuous Learning Behaviors
2.3. Literature on Expectation Confirmation Model
3. Research Model and Hypotheses
3.1. Hypothesis
3.1.1. Confirmation
3.1.2. Intrinsic Learning Motivation
3.1.3. Satisfaction
3.1.4. Teachers’ Influence
3.2. Model Specification
4. Methodology
4.1. Constructs and Scales
4.2. Data Collection
5. Results
5.1. Reliability and Validity Tests
5.2. Explorative Factor Analysis
5.3. Confirmative Factor Analysis
5.4. Hypotheses Testing
5.4.1. Fitness Indices
5.4.2. Regression Results
6. Discussions and Conclusions
6.1. Discussions
6.2. Conclusions
6.3. Theoretical Contributions
6.4. Practical Implications
- (1)
- Precisely clarify learning objectives. The discipline competition is a team project that ultimately achieves the team goal through the efforts of each member [12]. Thus, it is imperative to clearly define both the team goal and each member’s learning task, such as striving for outstanding achievements or attaining a specific ranking, which enables each student to engage wholeheartedly in various learning activities related to the contests. Doing this will facilitate their professional skill improvement and elevate their overall proficiency level, thereby stimulating intrinsic motivation to attain their desired goals effectively.
- (2)
- Breaking down the learning task. The composition of team members often encompasses students from diverse disciplinary backgrounds, resulting in significant variations in their abilities and interests. Thus, teams should break down the overall learning task into manageable parts and develop reasonable plans. The task should be assigned to each student based on their strengths and abilities, thus improving their learning interests. Finally, teams need to transform individual contributions from “zero deposit” into a collective withdrawal that accumulates into comprehensive competition works [6]. In addition, each member should make a detailed timetable and schedule tasks to improve efficiency and quality in online fragmented learning.
- (3)
- Attach the importance of collaborative teamwork and cooperation in online fragmented learning. It can be fostered to lead toward collective progress through ideological collisions, mutual learning experiences, and communication inspiration among members. The interactive reconstruction of fragmented knowledge can promote comprehension of competition-related content while providing a sense of achievement that ultimately enhances intrinsic motivation for online fragmented learning [7].
- (1)
- Grasp the topic selection of the contests. It is imperative for college teachers to actively engage in the guidance activities of contests and provide students with direction in selecting their projects. Given that the participants are primarily senior students, who may lack a comprehensive understanding of cutting-edge developments within their discipline and practical challenges before completing their professional courses, teachers should guide the topic selection when college students prepare to take part in a contest [10].
- (2)
- Strengthen the supervision of learning progress and improve students’ ability to manage fragmented time. Once the fundamental content or direction of the project has been determined, students should be encouraged to conduct independent and thorough research on the topic during their spare time by utilizing online fragmented learning methods. In this process, teachers can stimulate critical thinking through questioning techniques and prompt students to search for and learn relevant knowledge about specific problems using online fragmented learning resources [62].
- (3)
- Help college students build the knowledge system and form a complete theoretical framework. Teachers need to assist students in screening, integrating, and reconstructing acquired knowledge while assisting students in establishing a complete system that aligns with technical schemes proposed for their projects throughout the process of online fragmented learning. In addition, teachers should provide emotional support for college students and alleviate their anxieties about online fragmented learning, thus, finally, enhancing their learning confidence.
- (1)
- Focus on the practicability of the contest course content. In the process of learning competition courses, students are more inclined to enroll in courses that offer practical applications for competitions, thereby helping them translate theoretical knowledge into practice. Therefore, the online learning platforms should provide more practical contest courses and provide more effective information screening and resource acquisition strategies so that students can easily find relevant content [16]. Simultaneously, attention should be given to the level of difficulty and engagement factor of the course content to improve college students’ expectations and enhance their satisfaction.
- (2)
- Utilize emerging technologies to develop personalized learning plans. Online platforms can deploy AI algorithms on applications to adjust content dynamically based on students’ learning objectives, pace of learning, and the relevance of their existing knowledge. To do so, college students can also benefit from a highly personalized learning experience that enhances their overall satisfaction with online fragmented learning, which guarantees their continuous behaviors in online fragmented learning.
- (3)
- Provide evaluation of learning outcomes. After learning specific contest knowledge, college students can use the evaluation system to practice and test their knowledge mastery. It not only facilitates students’ reflection and summarization but also enables the evaluation of knowledge coherence and comprehensibility, thereby establishing a personalized learning system, which improves their learning effects in the whole process of online fragmented learning.
6.5. Limitations and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable | Items | Resources |
---|---|---|
Confirmation (CF) | CF1: I gained an experience that exceeded my expectations through the fragmented learning of contest courses on the Chinese university MOOCs. | Bhattacherjee [44] Bhattacherjee et al. [66] Dai et al. [67] Hu et al. [57] |
CF2: I gained more knowledge than expected through the fragmented learning of contest courses on the Chinese university MOOCs. | ||
CF3: My expectations have been met through the fragmented learning of contest courses on the Chinese university MOOCs. | ||
Intrinsic learning motivation (ILM) | ILM1: I want to use fragmentation time to learn contest knowledge on the Chinese university MOOCs. | Rafiola et al. [30] Xie et al. [27] |
ILM2: I hope to improve my level of competition through the fragmented learning of contest courses on the Chinese university MOOCs. | ||
ILM3: I hope to acquire relevant knowledge through the fragmented learning of contest courses on the Chinese university MOOCs and apply them in practice. | ||
ILM4: I hope to finish my homework without supervision and achieve a good learning effect. | ||
Satisfaction (SF) | SF1: I am satisfied with learning contest courses and acquiring knowledge on the Chinese university MOOCs. | Bhattacherjee [44] Hu et al. [57] Dai et al. [67] |
SF2: I am happy with the process of learning contest courses and acquiring knowledge on the Chinese university MOOCs. | ||
SF3: I enjoy the process of learning contest courses and acquiring knowledge on the Chinese university MOOCs. | ||
SF4: I am satisfied with my experience learning contest courses on the Chinese university MOOCs. | ||
Teachers’ influence (TI) | TI1: Teachers’ experience of fragmented learning contest courses on the Chinese university MOOCs will affect my willingness to use it. | Venkatesh et al. [68] Liu et al. [62] |
TI2: Teachers’ advice will affect my willingness to participate in fragmented learning contest courses on the Chinese University MOOCs. | ||
TI3: I will try to use it if teachers suggest that it’s an excellent way to learn contest courses by fragmented learning on the Chinese university MOOCs. | ||
College students’ continuance behaviors of online fragmented learning (CBOFL) | CBOFL1: In the past month, I have often learned contest courses in a fragmented manner on the Chinese university MOOCs. | Bhattacherjee et al. [66] |
CBOFL2: In the past month, I have learned contest courses in a fragmented manner on the Chinese university MOOCs almost every week. | ||
CBOFL3: In the past month, I have learned contest courses in a fragmented manner on the Chinese university MOOCs with a relatively high frequency. | ||
CBOFL4: In the past month, I have devoted a lot of time to learning contest courses in a fragmented manner on the Chinese university MOOCs. |
Items | Factor1 CF | Factor2 ILM | Factor3 SF | Factor4 TI | Factor5 CBOFL |
---|---|---|---|---|---|
CF1 | 0.767 | ||||
CF2 | 0.692 | ||||
CF3 | 0.725 | ||||
ILM1 | 0.687 | ||||
ILM2 | 0.743 | ||||
ILM3 | 0.696 | ||||
ILM4 | 0.762 | ||||
SF1 | 0.748 | ||||
SF2 | 0.725 | ||||
SF3 | 0.692 | ||||
SF4 | 0.679 | ||||
TI1 | 0.726 | ||||
TI2 | 0.802 | ||||
TI3 | 0.608 | ||||
CBOFL1 | 0.669 | ||||
CBOFL2 | 0.718 | ||||
CBOFL3 | 0.751 | ||||
CBOFL4 | 0.734 |
Variables | Items | Std. Factor Loading | CR | AVE |
---|---|---|---|---|
CF | CF1 | 0.759 | 0.803 | 0.577 |
CF2 | 0.693 | |||
CF3 | 0.821 | |||
ILM | ILM1 | 0.701 | 0.826 | 0.544 |
ILM2 | 0.773 | |||
ILM3 | 0.679 | |||
ILM4 | 0.792 | |||
SF | SF1 | 0.768 | 0.838 | 0.563 |
SF2 | 0.731 | |||
SF3 | 0.760 | |||
SF4 | 0.743 | |||
TI | TI1 | 0.713 | 0.763 | 0.519 |
TI2 | 0.661 | |||
TI3 | 0.782 | |||
CBOFL | CBOFL1 | 0.801 | 0.842 | 0.573 |
CBOFL2 | 0.786 | |||
CBOFL3 | 0.734 | |||
CBOFL4 | 0.702 |
Variable | CF | ILM | SF | TI | CBOFL |
---|---|---|---|---|---|
CF | 0.760 | ||||
ILM | 0.448 | 0.738 | |||
SF | 0.624 | 0.634 | 0.750 | ||
TI | 0.355 | 0.536 | 0.497 | 0.720 | |
CBOFL | 0.639 | 0.598 | 0.641 | 0.496 | 0.757 |
Indicators | χ2 | df | χ2/df | RMSEA | CFI | GFI | NFI |
---|---|---|---|---|---|---|---|
353.197 | 128 | 2.759 | 0.064 | 0.944 | 0.924 | 0.915 |
Hypotheses | Path | Std. Regression Weights | S.E. | t | p | Results |
---|---|---|---|---|---|---|
H1 | ILM ← CF | 0.445 | 0.045 | 7.800 | *** | Support |
H2 | SF ← CF | 0.558 | 0.050 | 9.952 | *** | Support |
H3 | SF ← ILM | 0.525 | 0.068 | 8.432 | *** | Support |
H4 | CBOFL ← ILM | 0.166 | 0.046 | 3.935 | *** | Support |
H5 | CBOFL ← SF | 0.734 | 0.082 | 10.170 | *** | Support |
H6 | CBOFL ← TI | 0.214 | 0.102 | 2.252 | 0.024 ** | Support |
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She, M.; Tan, Y.; Li, Z. Antecedents of College Students’ Continuance Behaviors in Online Fragmented Learning: An Empirical Analysis from the Extended ECM Perspective. Sustainability 2024, 16, 4138. https://doi.org/10.3390/su16104138
She M, Tan Y, Li Z. Antecedents of College Students’ Continuance Behaviors in Online Fragmented Learning: An Empirical Analysis from the Extended ECM Perspective. Sustainability. 2024; 16(10):4138. https://doi.org/10.3390/su16104138
Chicago/Turabian StyleShe, Maoyan, Yuhan Tan, and Zhigang Li. 2024. "Antecedents of College Students’ Continuance Behaviors in Online Fragmented Learning: An Empirical Analysis from the Extended ECM Perspective" Sustainability 16, no. 10: 4138. https://doi.org/10.3390/su16104138
APA StyleShe, M., Tan, Y., & Li, Z. (2024). Antecedents of College Students’ Continuance Behaviors in Online Fragmented Learning: An Empirical Analysis from the Extended ECM Perspective. Sustainability, 16(10), 4138. https://doi.org/10.3390/su16104138