| Literature DB >> 36243784 |
Adi Jafar1, Ramli Dollah2, Nordin Sakke1, Mohammad Tahir Mapa1, Ang Kean Hua1, Oliver Valentine Eboy1, Eko Prayitno Joko3, Diana Hassan4, Chong Vun Hung1.
Abstract
The outbreak of the pandemic Covid-19 has transformed the education system in most countries worldwide. Following the lockdown measures in Malaysia, the Malaysian education system has fully transformed from conventional learning to online learning or known as e-learning as an alternative to minimize social contacts and physical communication to curb the transmission of Covid-19. In this regard, this study aims to identify the challenges faced by students in higher learning institutions throughout Malaysia during the implementation of the e-learning program. This study is based on a large sampling consisting of 2394 students from both public and private universities. The result from this study is analyzed through inferential methods such as the Spatial Analysis, the Principal Component Analysis, and the Mann-Whitney U test and through descriptive methods using the frequency analysis and the percentage analysis. Findings from this study suggest that location significantly influenced the challenges faced by students throughout the implementation of e-learning in higher learning institutions. For example, students in rural areas which can be identified as "vulnerable groups" are more likely to face both technical and connection with the internet access, tend to have a declining focus on learning and are prone to physical health problems, facing social isolation and low digital literacy compared to students in urban areas. Based on geographical analysis, students in Sabah, Perlis, and Melaka are most at risk of facing e-learning challenges. An anomaly case of students in Kuala Lumpur, however, posed another different result compared to other cities as they confront similar challenges with students in rural areas. This study provides the nuances of location and its implications for vulnerable groups that may put them at disadvantage in the e-learning program. Findings from this study will help to inform the relevant authorities and policymakers in improving the implementation of e-learning in Malaysia, especially towards the vulnerable groups so that it can be delivered more systematically and efficiently.Entities:
Mesh:
Year: 2022 PMID: 36243784 PMCID: PMC9568990 DOI: 10.1038/s41598-022-22360-4
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.996
Figure 1Component number.
Cumulative values of variance.
| Component | Initial eigenvalues | ||
|---|---|---|---|
| Total | % Variance | Cumulative % | |
| 1 | 14.24 | 43.159 | 43.16 |
| 2 | 2.44 | 7.397 | 50.56 |
| 3 | 2.03 | 6.159 | 56.72 |
| 4 | 1.34 | 4.063 | 60.78 |
| 5 | 1.23 | 3.733 | 64.51 |
| 6 | 1.08 | 3.269 | 67.78 |
| 7–33 | 0.90–0.23 | 2.71–0.70 | 70.49–100 |
Demographic characteristics of respondents (n = 2394).
| Characteristics | Category | Frequency | Percent (%) |
|---|---|---|---|
| Gender | Male | 671 | 28 |
| Female | 1723 | 72 | |
| Marital status | Single | 2339 | 97.7 |
| Married | 55 | 2.3 | |
| Religion | Muslim | 1722 | 71.9 |
| Christian | 499 | 20.8 | |
| Buddhist | 116 | 4.8 | |
| Hindus | 41 | 1.7 | |
| Others | 16 | 0.7 | |
| Type of institution | Public university | 2283 | 95.4 |
| Private university | 111 | 4.6 |
Analysis results of the main component extraction.
| Components (domain)/item | Loading factor | Variance (%) |
|---|---|---|
| (B16) Lack of motivation as the learning environment at home is not similar to being at university | 0.746 | 20.26 |
| (B22) Easily bored due to limited knowledge on understanding the techniques in e-learning very limited e-learning learning techniques | 0.735 | |
| (B21) Difficult to focus on studies due to boredom on the e-learning teaching | 0.734 | |
| (B8) Lack of motivation as a result of lack of physical interaction with friends and lecturers | 0.721 | |
| (B18) Declining learning productivity | 0.709 | |
| (B17) Difficulty in understanding the content of the subject taught by lecturers | 0.656 | |
| (B23) Difficulty to concentrate on studies due to poor housing condition | 0.646 | |
| (B20) Difficulty in completing group assignments digitally | 0.613 | |
| (B9) Feeling alone | 0.609 | |
| (B15) Feeling drowsy during online classes | 0.570 | |
| (B24) Difficulty focusing due to disruption of other work at home | 0.562 | |
| (B3) Neck pain | 0.778 | 12.12 |
| (B6) Eye fatigue | 0.770 | |
| (B4) Back shoulders pain | 0.766 | |
| (B2) Headaches | 0.662 | |
| (B5) Blurred vision | 0.661 | |
| (B7) Fatigue | 0.578 | |
| (B29) My internet access is limited due poor internet access in my home area | 0.812 | 10.82 |
| (B28) My internet access is limited due to due to expensive costs of internet access | 0.806 | |
| (B30) The prevalence of power outages in my housing area | 0.738 | |
| (B31) My laptop has a poor technical performance (slow capacity) | 0.650 | |
| (B32) Sharing learning devices, such as laptop, with my siblings | 0.615 | |
| (B12) Easy to feel depressed (depression) | 0.783 | 10.06 |
| (B13) Easy to experience stress | 0.772 | |
| (B14) Easy to experience anxiety/restlessness (anxiety) | 0.740 | |
| (B10) Feeling isolated | 0.547 | |
| (B11) Lack of personal/physical attention | 0.533 | |
| (B35) Not easy to use e-learning as using other systems (traditional learning) | 0.805 | 7.83 |
| (B34) Not well-versed in e-learning | 0.777 | |
| (B33) I found that e-learning is difficult to use | 0.697 | |
| (B25) Not close with peers | 0.791 | 7.41 |
| (B27) Unable to recognize peers at university | 0.754 | |
| (B26) Difficulty communicating with through online communication | 0.737 | |
Figure 3Challenges of e-learning from the aspect of mental health problems and, problems with technical and internet connection (the images were generated and modified from open source ‘Malaysia—Subnational Administrative Boundaries’ (https://data.humdata.org/dataset/cod-ab-mys) using ArcGIS Desktop 10.8.1 (https://www.esri.com/en-us/arcgis/products/arcgis-desktop/overview).
Figure 4Challenges of e-learning from the aspect of social isolation and low digital literacy (the images were generated and modified from open source ‘Malaysia—Subnational Administrative Boundaries’ (https://data.humdata.org/dataset/cod-ab-mys) using ArcGIS Desktop 10.8.1 (https://www.esri.com/en-us/arcgis/products/arcgis-desktop/overview).
Figure 2Challenges of e-learning from the aspect of the decreased focus on learning and physical health problems (the images were generated and modified from open source ‘Malaysia—Subnational Administrative Boundaries’ (https://data.humdata.org/dataset/cod-ab-mys) using ArcGIS Desktop 10.8.1 (https://www.esri.com/en-us/arcgis/products/arcgis-desktop/overview).
Results of the Mann–Whitney U test.
| Component/domain | Location | Frequency (%) | Mean rank (MR) | |
|---|---|---|---|---|
| (Co1) Decreased focus on learning | Urban | 988 (41.27) | 1127.3 | ≤ 0.01 |
| Rural | 1406 (58.73) | 1246.8 | ||
| (Co2) Physical health problems | Urban | 988 (41.27) | 1142.7 | 0.001 |
| Rural | 1406 (58.73) | 1236.0 | ||
| (Co3) Mental health problems | Urban | 988 (41.27) | 1179.9 | 0.297 |
| Rural | 1406 (58.73) | 1209.8 | ||
| (Co4) Problems with technical and poor internet access | Urban | 988 (41.27) | 965.3 | ≤ 0.01 |
| Rural | 1406 (58.73) | 1360.6 | ||
| (Co5) Social isolation | Urban | 988 (41.27) | 1145.5 | 0.002 |
| Rural | 1406 (58.73) | 1234.1 | ||
| (Co6) Low digital literacy | Urban | 988 (41.27) | 1129.5 | ≤ 0.01 |
| Rural | 1406 (58.73) | 1245.3 |
Mann–Whitney U (p value) at the level of significance (α = 0.05).