Determinants of College Students’ Online Fragmented Learning Effect: An Analysis of Teaching Courses on Scientific Research Software on the Bilibili Platform
Abstract
:1. Introduction
2. Review of Related Studies in the Literature
2.1. Research Status of Online Fragmented Learning
2.2. Research Status of Research on Online Learning Effective and Determinants
2.3. Research Progress on LM and SE
2.4. Research Status of Research on the Relationship between Fragmented Learning and Learning Effects
3. Research Model and Hypotheses
3.1. Model Assumptions
3.2. Model Hypotheses
4. Materials and Methods
4.1. Data Collection
4.2. Participants
4.3. Research Survey
4.4. Data Analysis
5. Results
5.1. Descriptive Analysis
5.1.1. Descriptive Analysis of Participants
5.1.2. Descriptive Analysis of Variables
5.2. EFA Analysis
5.3. CFA Analysis
5.3.1. Reliability and Validity Tests
5.3.2. Goodness of Fit of the Model
5.4. Correlation Analysis
5.5. Hypotheses Testing
5.5.1. Structural Model Building
5.5.2. Model Test Results
6. Discussion
6.1. Discussion of Model Variables and Values
6.2. The Relationship between LM, SE, and OFLE
6.3. The Relationship between KF and OFLE
6.4. The Relationship between FTU and OFLE
6.5. Limitations and Future Research
7. Conclusions and Improvement Countermeasures
7.1. Build Quality Fragmented Learning Resources and Improve Online Learning Mechanisms
7.2. Build a Complete Knowledge System and Improve the Ability of Resource Selection
7.3. Increase Confidence in Online Learning and Boost LM and SE
7.4. Strengthen the Concept of Time and Enhance the Ability to FTU
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Gender | Educational Level | ||||
---|---|---|---|---|---|
Junior College Student | Undergraduate | Master Student | Doctor | Total | |
Male | 28 (10.41%) | 156 (54.99%) | 75 (27.88%) | 10 (3.72%) | 269 (47.78%) |
Female | 22 (7.48%) | 184 (62.59%) | 80 (27.21%) | 8 (2.72%) | 294 (52.22%) |
Total | 50 (8.88%) | 340 (60.39%) | 155 (27.53%) | 18 (3.20%) | 563 |
Variables | Items | References |
---|---|---|
LM | LM1: I hope to use my fragmented time to acquire fragmented knowledge of scientific software on Bilibili. | Rafiola et al. [22] Tang et al. [13] |
LM2: I hope to improve my academic skills through fragmented learning software teaching courses on Bilibili. | ||
LM3: I hope to learn to master the relevant research software knowledge points and use them in practice on Bilibili. | ||
LM: I hope to do my studies well without being supervised. | ||
SE | SE1: I am able to keep up with the online research software course on Bilibili. | Rafiola et al. [22] Sun [41] |
SE2: I am able to find the solution to the problem on Bilibili. | ||
SE3: I am confident that I can solve real problems in research through fragmented learning on Bilibili. | ||
SE4: I can make reasonable use of fragmented time to study effectively on Bilibili. | ||
KF | KF1: I think the content of the research software course on Bilibili is compact. | Zhou [30] Sun [41] |
KF2: I think the coherence of scientific research software courses on Bilibili is very weak. | ||
KF3: I think fragmented knowledge has some depth. | ||
KF4: I think fragmented knowledge is comprehensive and rigorous. | ||
FTU | FTU1: I can use the fragmented time to study scientific research software teaching courses on Bilibili. | Zhou [30] Yang et al. [42] |
FTU2: I can flexibly apply fragmented time to the learning of individual fragmented knowledge. | ||
TFU3: I am able to use fragmented time to sort through or master fragmented knowledge. | ||
OFLE | OFLE: The scientific research courses on Bilibili have further deepened my mastery of scientific research knowledge. | Guo et al. [40] Yang et al. [42] |
OFLE 2: My scientific research practice ability has been improved by fragmented learning of scientific research knowledge on Bilibili. | ||
OFLE 3: Learning scientific research knowledge online on Bilibili can help me improve my ability to discover and solve problems in my studies. | ||
OFLE 4: I can learn more scientific research software through the fragmentation on Bilibili. |
Items | Average | Standard | Skewness | Kurtosi | Overall Average | Overall Standard |
---|---|---|---|---|---|---|
LM1 | 3.90 | 0.969 | −1.129 | 1.430 | 3.920 | 0.844 |
LM2 | 3.93 | 1.047 | −1.108 | 0.886 | ||
LM3 | 3.92 | 1.017 | −1.014 | 0.701 | ||
LM4 | 3.93 | 1.021 | −0.876 | 0.208 | ||
SE1 | 3.70 | 1.013 | −0.920 | 0.687 | 3.754 | 0.804 |
SE2 | 3.79 | 1.038 | −0.938 | 0.679 | ||
SE3 | 3.71 | 0.985 | −0.793 | 0.511 | ||
SE4 | 3.81 | 0.994 | −0.983 | 0.864 | ||
KF1 | 2.58 | 1.186 | 0.456 | −0.701 | 2.577 | 1.100 |
KF2 | 2.65 | 1.329 | 0.472 | −0.983 | ||
KF3 | 2.63 | 1.302 | 0.351 | −1.074 | ||
KF4 | 2.44 | 1.248 | 0.630 | −0.633 | ||
TFU1 | 3.70 | 1.039 | −0.756 | 0.169 | 3.683 | 0.868 |
TFU2 | 3.65 | 1.070 | −0.806 | 0.163 | ||
TFU3 | 3.70 | 0.986 | −0.807 | 0.494 | ||
OFLE1 | 3.93 | 0.934 | −0.880 | 0.672 | 3.899 | 0.781 |
OFLE2 | 3.84 | 0.962 | −0.946 | 0.926 | ||
OFLE3 | 3.88 | 1.035 | −1.048 | 0.784 | ||
OFLE4 | 3.93 | 0.925 | −1.197 | 1.754 |
Items | Factor 1 | Factor 2 | Factor 3 | Factor 4 | Factor 5 |
---|---|---|---|---|---|
LM | SE | KF | FTU | OFLE | |
LM1 | 0.808 | ||||
LM2 | 0.774 | ||||
LM3 | 0.731 | ||||
LM4 | 0.711 | ||||
SE1 | 0.774 | ||||
SE2 | 0.716 | ||||
SE3 | 0.712 | ||||
SE4 | 0.744 | ||||
KF1 | 0.852 | ||||
KF2 | 0.872 | ||||
KF3 | 0.858 | ||||
KF4 | 0.843 | ||||
FTU1 | 0.848 | ||||
FTU2 | 0.807 | ||||
FTU3 | 0.837 | ||||
OFLE 1 | 0.747 | ||||
OFLE 2 | 0.752 | ||||
OFLE 3 | 0.814 | ||||
OFLE4 | 0.641 |
Variables | CR | AVE | Problems | Factor Loading Factor |
---|---|---|---|---|
LM | 0.853 | 0.593 | LM1 | 0.744 |
LM2 | 0.799 | |||
LM3 | 0.815 | |||
LM4 | 0.718 | |||
SE | 0.811 | 0.519 | SE1 | 0.781 |
SE2 | 0.750 | |||
SE3 | 0.662 | |||
SE4 | 0.681 | |||
KF | 0.811 | 0.519 | KF1 | 0.789 |
KF2 | 0.845 | |||
KF3 | 0.831 | |||
KF4 | 0.813 | |||
FTU | 0.794 | 0.562 | FTU1 | 0.771 |
FTU2 | 0.708 | |||
FTU3 | 0.769 | |||
OFLE | 0.828 | 0.547 | OFLE1 | 0.707 |
OFLE2 | 0.674 | |||
OFLE3 | 0.837 | |||
OFLE4 | 0.731 |
Variables | LM | SE | KF | FTU | OFLE |
---|---|---|---|---|---|
LM | 0.770 | ||||
SE | 0.694 | 0.720 | |||
KF | −0.315 | −0.259 | 0.820 | ||
FTU | 0.220 | 0.249 | −0.049 | 0.750 | |
OFLE | 0.669 | 0.630 | −0.271 | 0.290 | 0.740 |
Indicators | χ2/df | RMSEA | CFI | GFI | AGFI |
---|---|---|---|---|---|
Results | 2.045 | 0.043 | 0.970 | 0.949 | 0.932 |
Variables | LM | SE | KF | FTU | OFLE |
---|---|---|---|---|---|
LM | 1 | ||||
SE | 0.578 ** | 1 | |||
KF | −0.275 ** | −0.220 ** | 1 | ||
FTU | 0.186 ** | 0.203 ** | −0.044 | 1 | |
OFLE | 0.571 ** | 0.531 ** | −0.238 ** | 0.242 ** | 1 |
Hypothesis | Path | Standardized Regression Weights | S.E. | t | p | Results |
---|---|---|---|---|---|---|
Hypothesis 1 | OFLE <--- LM | 0.631 | 0.051 | 8.636 | *** | Valid |
Hypothesis 2 | OFLE <--- SE | 0.427 | 0.050 | 6.427 | *** | Valid |
Hypothesis 3 | OFLE <--- KF | −0.084 | 0.017 | −2.429 | 0.015 | Invalid |
Hypothesis 4 | OFLE <--- FTU | 0.200 | 0.026 | 5.120 | *** | Valid |
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Li, Z.; Yang, Y. Determinants of College Students’ Online Fragmented Learning Effect: An Analysis of Teaching Courses on Scientific Research Software on the Bilibili Platform. Sustainability 2023, 15, 16023. https://doi.org/10.3390/su152216023
Li Z, Yang Y. Determinants of College Students’ Online Fragmented Learning Effect: An Analysis of Teaching Courses on Scientific Research Software on the Bilibili Platform. Sustainability. 2023; 15(22):16023. https://doi.org/10.3390/su152216023
Chicago/Turabian StyleLi, Zhigang, and Yalin Yang. 2023. "Determinants of College Students’ Online Fragmented Learning Effect: An Analysis of Teaching Courses on Scientific Research Software on the Bilibili Platform" Sustainability 15, no. 22: 16023. https://doi.org/10.3390/su152216023
APA StyleLi, Z., & Yang, Y. (2023). Determinants of College Students’ Online Fragmented Learning Effect: An Analysis of Teaching Courses on Scientific Research Software on the Bilibili Platform. Sustainability, 15(22), 16023. https://doi.org/10.3390/su152216023