ICT Use, Digital Skills and Students’ Academic Performance: Exploring the Digital Divide
Abstract
:1. Introduction
2. The Impact of ICT on Student Performance
2.1. The Effects of ICT Equipment on Student Performance
2.1.1. The Beneficial Effects of University ICT Equipment on the Average Performance of Students
2.1.2. Personal Equipment as an Explanatory Factor for Performance Differentials and the Digital Divide
2.2. Students’ Innovative and Collaborative Uses of ICT Improve Their Results
2.3. Impact of Digital Skills on Student Performance
2.4. Strategies for Acquiring Digital Skills Limited to the Implementation of ICT-Specific Training by Universities
3. Research Methodology
3.1. Sample and Data Collection
3.2. Defining the Selected Variables
3.2.1. The Dependent Variable
3.2.2. The Variables of Interest
- The amount ICT equipment made available to students by universities;
- Students’ computer skills;
- Students’ Internet skills, i.e., level of skills to search, select and analyze large amounts of information in a meaningful way;
- The perceived usefulness of ICT-specific tools. Items positively correlated to this component reflect students’ beliefs about the performance and efficiency gains resulting from use of these tools;
- Innovative educational uses resulting from ICTs and developed by the student;
- The educational benefits of using remote working tools, including collaborative work enabled by the co-presence of students via asynchronous and synchronous collaborative communication tools;
- Creative uses enabled by ICT;
- The impact of using ICT-related tools on flexible working.
3.2.3. Control Variables
3.3. Model Specification
- is the probability that student i will achieve grade j;
- is the cumulative standard normal distribution function;
- and are the upper and lower threshold values for category j.
4. Results
4.1. ICT Investments Have a Small Impact on Students’ Academic Success
4.2. Innovative and Collaborative Uses of ICT Improve Students’ Results
4.3. Impact of Digital Skill Levels on Student Performance
4.4. ICT-Specific Training Does Not Improve Student Performance
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable | Variables (No. 1323) | Distribution (%) |
---|---|---|
Gender | Female | 48.90 |
Male | 51.10 | |
Age | 17 to 19 years old | 38.40 |
20 to 21 years old | 34.62 | |
22 to 23 years old | 20.18 | |
24 and over | 6.80 | |
University | Paris-Saclay University | 71.96 |
University of Paris-Nanterre | 21.47 | |
University Côte d’Azur | 6.58 | |
Educational level | L1 | 39.15 |
L2 | 35.15 | |
L3 | 25.70 | |
Baccalaureate series | Baccalaureate ES (Economics and Social Sciences) | 68.41 |
Baccalaureate S (Sciences) | 17.91 | |
Baccalaureate L (Literature) | 0.68 | |
Technological baccalaureate | 7.63 | |
Professional baccalaureate | 0.45 | |
Foreign baccalaureate | 4.91 | |
Baccalaureate results | With standard pass | 36.51 |
With honors | 37.11 | |
With high honors | 19.35 | |
With highest honor | 7.03 | |
Studying parallel to employment | Not studying parallel to employment | 70.14 |
Studying parallel to employment | 29.86 | |
Hours allocated to the use of ICT for educational purposes | Less than 6 h per week | 77.85 |
6 h and more | 22.15 | |
The intensity of Internet use | The low intensity of Internet use | 48.68 |
High intensity of Internet use | 51.32 | |
Owning a computer in the home | Not owning a computer at home | 11.72 |
Owning a computer at home | 88.28 | |
Owning a laptop | Not owning a laptop | 17.69 |
Owning a laptop | 82.31 | |
Owning an Internet connection at home | Not owning an internet connection at home | 3.7 |
Owning an internet connection at home | 96.3 | |
Motivation for studies | Low motivation for studies | 19.50 |
Strong motivation for studies | 80.50 | |
Preparing for courses in advance | Not preparing for courses in advance | 49.81 |
Preparing for courses in advance | 50.19 |
Variables | Nature of the Variable | Min | Max |
---|---|---|---|
Dependent variable | |||
Overall average | Grades from A to E | E | A |
ICT equipment | |||
Owning a laptop | Dichotomous variable | 0 | 1 |
Owning an Internet connection at home | Dichotomous variable | 0 | 1 |
University ICT equipment | The score calculated based on equipment | 2.95 | 14.76 |
ICT use | |||
ICT and work flexibility | Calculated score | 1.43 | 7.16 |
Perceived usefulness of ICT use | Calculated score | 5.68 | 28.38 |
Collaborative uses of ICT | Calculated score | 2.02 | 10.10 |
Innovative uses of ICT | Calculated score | 2.75 | 13.74 |
Creative uses of ICT | Calculated score | 1.52 | 7.59 |
Digital Skills | |||
Computer skills | Calculated score | 3.43 | 17.16 |
Skills for internet use | Calculated score | 2.88 | 14.39 |
ICT skills | Three levels of digital skills | 1 | 3 |
Basic ICT skills | Dichotomous variable | 0 | 1 |
Intermediate ICT skills | Dichotomous variable | 0 | 1 |
Advanced ICT skills | Dichotomous variable | 0 | 1 |
ICT training | |||
ICT-related training offered by the university | Dichotomous variable | 0 | 1 |
Training follow-up related to the use of specific ICT tools | Dichotomous variable | 0 | 1 |
Control variables | |||
Educational level | L1, L2, L3 | 1 | 3 |
Gender | Dichotomous variable | 0 | 1 |
Age | Four age categories are considered | 1 | 4 |
Baccalaureate honors | Four categories of honors degree are considered | 1 | 4 |
Studying parallel to employment | Dichotomous variable | 0 | 1 |
Preparing for courses in advance | Dichotomous variable | 0 | 1 |
Motivation for studies | Dichotomous variable | 0 | 1 |
Items | Standard Deviation | Saturation |
---|---|---|
Factor 1: ICT equipment endowments | ||
EQUIP1: Open-access computer rooms | 1.115 | 0.768 |
EQUIP2: Provision of discipline-specific software | 1.238 | 0.753 |
EQUIP3: Provision of media classrooms | 1.264 | 0.617 |
EQUIP4: Provision of technical support | 1.265 | 0.585 |
Factor 2: Computer Skills | ||
SKILL1: Degree of mastery of presentation software | 0.971 | 0.811 |
SKILL2: Degree of mastery of word processing software | 0.847 | 0.796 |
SKILL3: Degree of mastery of spreadsheets | 1.008 | 0.795 |
SKILL4: Degree of mastery of discipline-specific software | 1.055 | 0.770 |
SKILL5: Degree of control over device installation | 1.062 | 0.741 |
Factor 3: Internet Skills | ||
SKILL6: Degree of proficiency in social network applications | 1.291 | 0.759 |
SKILL7: Degree of proficiency in chats and forum applications | 1.266 | 0.743 |
SKILL8: Degree of proficiency in messaging software | 1.244 | 0.711 |
SKILL9: Degree of proficiency in search engine use | 1.179 | 0.699 |
SKILL10: Degree of proficiency in online teaching platforms | 1.179 | 0.667 |
Factor 4: Perceived usefulness of ICT use | ||
UTIL1: The use of ICT increases interest in the course | 1.185 | 0.787 |
UTIL2: The use of ICT improves the understanding of content seen in the classroom | 1.095 | 0.757 |
UTIL3: Using ICT improves learning | 1.176 | 0.751 |
UTIL4: ICT courses lead students to spend more time on their studies | 1.221 | 0.748 |
UTIL5: Obtain better results for lessons where teachers use ICT | 1.271 | 0.713 |
UTIL6: The use of ICT allows students to deepen the content of the courses offered face to face | 1.149 | 0.697 |
UTIL7: Tendency to recommend courses where teachers use ICT | 1.290 | 0.692 |
UTIL8: The use of ICT improves the presentation and organization of work | 1.130 | 0.632 |
Factor 5: Innovative uses of ICT | ||
INNOV1: Providing digital resources to other students | 1.070 | 0.747 |
INNOV2: Development of educational resources | 0.947 | 0.722 |
INNOV3: Suggesting changes to educational resources | 0.838 | 0.707 |
INNOV4: Suggesting changes to courses offered by teachers | 1.021 | 0.671 |
Factor 6: Collaborative uses of ICT | ||
COLLAB1: Using ICT makes it easier to work with colleagues | 1.171 | 0.788 |
COLLAB2: Working in a group using ICT | 1.298 | 0.757 |
COLLAB3: Working on several projects using ICT | 1.292 | 0.737 |
Factor 7: Creative uses of ICT | ||
CREATIV1: ICT is the source of ideas for business creation | 1.288 | 0.671 |
CREATIV2: ICT helps develop innovative ideas | 1.206 | 0.648 |
Factor 8: Work flexibility | ||
FLEXIB1: Working at all times through ICT is beneficial | 1.239 | 0.845 |
FLEXIB2: Using mobile devices for study | 1.443 | 0.787 |
Factors | Own Values | % of Variance | % Cumulative | Cronbach Alpha |
---|---|---|---|---|
Factor 1: University ICT Equipment | 6.554 | 19.860 | 19.860 | 0.736 |
Factor 2: Computer Skills | 3.210 | 9.727 | 29.587 | 0.779 |
Factor 3: Internet Skills | 2.361 | 7.154 | 36.741 | 0.699 |
Factor 4: Perceived usefulness of ICT use | 1.971 | 5.972 | 42.713 | 0.878 |
Factor 5: Innovative use of ICT | 1.671 | 5.065 | 47.777 | 0.788 |
Factor 6: Collaborative use of ICT | 1.248 | 3.782 | 51.559 | 0.815 |
Factor 7: Creative use of ICT | 1.156 | 3.503 | 55.062 | 0.803 |
Factor 8: Work flexibility | 1.024 | 3.103 | 58.164 | 0.686 |
Kaiser–Meyer–Olkin Sampling Accuracy Measure (KMO) | 0.864 | |
---|---|---|
The determinant of the correlation matrix | 0.000014 | |
Bartlett’s sphericity test | Approximate chi-square | 14639.643 |
ddl | 528 | |
Meaning of Bartlett | 0.000 |
Coefficient | E | D | C | B | A | |
---|---|---|---|---|---|---|
Gender a | 0.5119 *** (0.2237) | −0.005 *** (0.002) | −0.0469 *** (0.0131) | −0.0408 *** (0.0120) | 0.0872 *** (0.0229) | 0.0058 *** (0.0019) |
L2 b | 0.2052 (0.1905) | −0.002 (0.002) | −0.0182 (0.0134) | −0.0178 (0.0146) | 0.0357 (0.0273) | 0.0024 (0.0019 |
L3 b | 0.6006 *** (0.3048) | −0.005 *** (0.002) | −0.0494 *** (0.0130) | −0.0623 *** (0.0216) | 0.1092 *** (0.0319) | 0.0079 *** (0.0029) |
Baccalaureate S (Sciences) c | −0.1593 (0.1392) | 0.002 (0.002) | 0.0151 (0.0161) | 0.0115 (0.0107) | −0.0265 (0.0267) | −0.0017 (0.0017) |
Baccalaureate L (Literature) c | −0.6961 (0.2888) | 0.010 (0.012) | 0.0810 (0.0825) | 0.0132 (0.0267) | −0.0985 (0.0656) | −0.0057 (0.0035) |
Technological baccalaureate c | 0.0921 (0.2616) | −0.001 (0.002) | −0.0082 (0.0205) | −0.0081 (0.0225) | 0.0160 (0.0423) | 0.0011 (0.0029) |
Professional baccalaureate c | −1.4149 *** (0.1263) | 0.031 (0.021) | 0.2014 ** (0.0968) | −0.0627 (0.0830) | −0.1605 *** (0.0351) | −0.0087 *** (0.0024) |
Foreign baccalaureate c | 0.4674 (0.5141) | −0.004 * (0.002) | −0.0361 * (0.0213) | −0.0544 (0.0478) | 0.0878 (0.0652) | 0.0066 (0.0058) |
With honors d | 0.1769 (0.1678) | −0.002 (0.001) | −0.0158 (0.0125) | −0.0150 (0.0126) | 0.0306 (0.0245) | 0.0021 (0.0018) |
With high honors d | 0.6714 *** (0.3562) | −0.006 *** (0.002) | −0.0526 *** (0.0128) | −0.0763 *** (0.0274) | 0.1251 *** (0.0366) | 0.0094 *** (0.0037) |
With highest honor d | 0.7626 *** (0.5879) | −0.006 *** (0.002) | −0.0546 *** (0.0156) | −0.0998 ** (0.0480) | 0.1481 *** (0.0578) | 0.0121 ** (0.0065) |
Studying parallel to employment | −1.3727 *** (0.0360) | 0.019 *** (0.005) | 0.1486 *** (0.0217) | 0.0544 *** (0.0173) | −0.2081 *** (0.0216) | −0.0135 *** (0.0033) |
Motivation | 0.9344 *** (0.3931) | −0.012 *** (0.004) | −0.1019 *** (0.0210) | −0.0346 *** (0.0122) | 0.1403 *** (0.0216) | 0.0086 *** (0.0022) |
Preparing for courses in advance | 0.3223 ** (0.1899) | −0.003 ** (0.001) | −0.0290 ** (0.0126) | −0.0270 ** (0.0123) | 0.0555 ** (0.0238) | 0.0037 ** (0.0018) |
Owning a computer at home | −0.1001 (0.1822) | 0.001 (0.002) | 0.0089 (0.0173) | 0.0088 (0.0190) | −0.0174 (0.0357) | −0.0012 (0.0025) |
Owning an Internet connection at home | −0.4456 (0.2616) | 0.004 (0.003) | 0.0348 (0.0271) | 0.0509 (0.0599) | −0.0833 (0.0825) | −0.0062 (0.0070) |
Owning a laptop | 0.2756 (0.2354) | −0.003 (0.002) | −0.0268 (0.0187) | −0.0181 (0.0093) | 0.0451 (0.0278) | 0.0029 (0.0018) |
ICT-related training offered by universities | 0.1033 (0.1502) | −0.001 (0.001) | −0.0095 (0.0127) | −0.0081 (0.0102) | 0.0175 (0.0227) | 0.0011 (0.0015) |
Following training related to the use of ICT tools | 0.6249 *** (0.2700) | −0.006 (0.002) | −0.0528 *** (0.0117) | −0.0613 *** (0.0188) | 0.1119 *** (0.0276) | 0.0080 *** (0.0026) |
ICT equipment at university | 0.0395 (0.0302) | −0.001 (0.001) | −0.0036 (0.0026) | −0.0032 (0.0024) | 0.0068 (0.0049) | 0.0004 (0.0003) |
Perceived usefulness of ICT use | 0.2339 *** (0.0271) | −0.002 *** (0.001) | −0.0213 *** (0.0023) | −0.0189 *** (0.0036) | 0.0400 *** (0.0039) | 0.0026 *** (0.0005) |
Intermediate ICT skills e | 1.1167 *** (0.4708) | −0.012 *** (0.002) | −0.1008 *** (0.0150) | −0.0936 *** (0.0184) | 0.1922 *** (0.0262) | 0.0137 *** (0.0030) |
Advanced ICT skills e | 2.6444 *** (3.6531) | −0.016 *** (0.003) | −0.1460 *** (0.0130) | −0.4063 *** (0.0471) | 0.4857 *** (0.0410) | 0.0823 *** (0.0161) |
ICT and work flexibility | 0.2287 *** (0.0600) | −0.002 *** (0.001) | −0.0208 *** (0.0044) | −0.0185 *** (0.0050) | 0.0391 *** (0.0083) | 0.0026 *** (0.0007) |
Collaborative use of ICT | 0.4238 *** (0.0656) | −0.004 *** (0.001) | −0.0386 *** (0.0045) | −0.0343 *** (0.0065) | 0.0724 *** (0.0077) | 0.0048 *** (0.0010) |
Innovative use of ICT | 0.2889 *** (0.0582) | −0.003 *** (0.001) | −0.0263 *** (0.0040) | −0.0234 *** (0.0054) | 0.0494 *** (0.0079) | 0.0033 *** (0.0007) |
Creative use of ICT | 0.1765 *** (0.0517) | −0.002 *** (0.001) | −0.0161 *** (0.0041) | −0.0143 *** (0.0041) | 0.0302 *** (0.0074) | 0.0020 *** (0.0006) |
Pseudolikelihood Log | −912.17739 | |||||
Pseudo R2 | 36.97% | |||||
Wald chi2(27) | 474.08 | |||||
Observations | 982 |
Coefficient | E | D | C | B | A | |
---|---|---|---|---|---|---|
Gender a | 0.4303 *** (0.1708) | −0.0030 *** (0.0010) | −0.0253 *** (0.0071) | −0.0740 *** (0.0192) | 0.0881 *** (0.0229) | 0.0142 *** (0.0039) |
L2 b | 0.1224 (0.1472) | −0.0008 (0.0009) | −0.0070 (0.0073) | −0.0215 (0.0232) | 0.0252 (0.0270) | 0.0041 (0.0044) |
L3 b | 0.5543 *** (0.2498) | −0.0034 *** (0.0010) | −0.0290 *** (0.0073) | −0.1024 *** (0.0281) | 0.1139 *** (0.0296) | 0.0208 *** (0.0063) |
Baccalaureate S (Sciences) c | −0.2931 ** (0.1026) | 0.0022 ** (0.0012) | 0.0185 ** (0.0096) | 0.0476 ** (0.0210) | −0.0595 *** (0.0275) | −0.0088 ** (0.0041) |
Baccalaureate L (Literature) c | −0.9610 *** (0.1866) | 0.0109 (0.0087) | 0.0831 (0.0582) | 0.1012 *** (0.0166) | −0.1744 *** (0.0723) | −0.0209 *** (0.0072) |
Technological baccalaureate c | 0.0122 (0.2183) | −0.0001 (0.0015) | −0.0007 (0.0125) | −0.0021 (0.0377) | 0.0025 (0.0445) | 0.0004 (0.0072) |
Professional baccalaureate c | −0.9769 *** (0.1733) | 0.0112 (0.0082) | 0.0852 (0.0554) | 0.1013 *** (0.0153) | −0.1766 *** (0.0675) | −0.0210 *** (0.0067) |
Foreign baccalaureate c | 0.0540 (0.2750) | −0.0004 (0.0017) | −0.0031 (0.0146) | −0.0095 (0.0465) | 0.0111 (0.0539) | 0.0018 (0.0090) |
With honors d | 0.2592 ** (0.1530) | −0.0017 ** (0.0008) | −0.0147 ** (0.0067) | −0.0458 ** (0.0212) | 0.0534 ** (0.0244) | 0.0088 ** (0.0043) |
With high honors d | 0.5260 *** (0.2658) | −0.0031 *** (0.0009) | −0.0269 *** (0.0073) | −0.0984 *** (0.0316) | 0.1082 *** (0.0321) | 0.0202 *** (0.0074) |
With highest honor d | 0.8296 *** (0.5496) | −0.0041 *** (0.0011) | −0.0362 *** (0.0084) | −0.1639 *** (0.0502) | 0.1656 *** (0.0433) | 0.0386 *** (0.0160) |
Studying parallel to employment | −1.2864 *** (0.0347) | 0.0122 *** (0.0030) | 0.0956 *** (0.0154) | 0.1719 *** (0.0158) | −0.2446 *** (0.0214) | −0.0351 *** (0.0060) |
Motivation | 0.9088 *** (0.3400) | −0.0085 *** (0.0023) | −0.0676 *** (0.0138) | −0.1226 *** (0.0161) | 0.1750 *** (0.0247) | 0.0237 *** (0.0043) |
Preparing for courses in advance | 0.4208 *** (0.1800) | −0.0029 *** (0.0010) | −0.0246 *** (0.0075) | −0.0726 *** (0.0203) | 0.0862 *** (0.0241) | 0.0139 *** (0.0044) |
Owning a computer at home | −0.1789 (0.1571) | 0.0012 (0.0012) | 0.0098 (0.0098) | 0.0322 (0.0351) | −0.0370 (0.0389) | −0.0063 (0.0071) |
Owning an Internet connection at home | −0.1473 (0.3022) | 0.0009 (0.0021) | 0.0081 (0.0182) | 0.0266 (0.0655) | −0.0305 (0.0727) | −0.0052 (0.0131) |
Owning a laptop | 0.1816 (0.1812) | −0.0013 (0.0012) | −0.0111 (0.0099) | −0.0303 (0.0241) | 0.0371 (0.0306) | 0.0057 (0.0045) |
ICT-related training offered by universities | 0.0872 (0.1239) | −0.0006 (0.0008) | −0.0052 (0.0068) | −0.0150 (0.0194) | 0.0179 (0.0233) | 0.0028 (0.0036) |
Following training related to the use of ICT tools | 0.6350 *** (0.2299) | −0.0042 *** (0.0011) | −0.0357 *** (0.0072) | −0.1121 *** (0.0228) | 0.1299 *** (0.0252) | 0.0222 *** (0.0052) |
ICT equipment at university | 0.0268 (0.0254) | −0.0002 (0.0002) | −0.0016 (0.0014) | −0.0046 (0.0044) | 0.0055 (0.0051) | 0.0009 *** (0.0008) |
Perceived usefulness of ICT use | 0.2136 *** (0.0225) | −0.0015 *** (0.0002) | −0.0125 *** (0.0013) | −0.0371 *** (0.0042) | 0.0440 *** (0.0044) | 0.0070 *** (0.0009) |
Intermediate ICT skills e | 0.9738 *** (0.3528) | −0.0066 *** (0.0013) | −0.0555 *** (0.0084) | −0.1687 *** (0.0247) | 0.1962 *** (0.0274) | 0.0347 *** (0.0055) |
Advanced ICT skills e | 2.4226 *** (2.4018) | −0.0113 *** (0.0019) | −0.0966 *** (0.0089) | −0.4298 *** (0.0368) | 0.3766 *** (0.0283) | 0.1610 *** (0.0220) |
ICT and work flexibility | 0.2326 *** (0.0505) | −0.0016 *** (0.0004) | −0.0136 *** (0.0024) | −0.0404 *** (0.0076) | 0.0479 *** (0.0086) | 0.0076 *** (0.0015) |
Collaborative use of ICT | 0.3798 *** (0.0509) | −0.0026 *** (0.0005) | −0.0221 *** (0.0025) | −0.0659 *** (0.0076) | 0.0782 *** (0.0081) | 0.0125 *** (0.0016) |
Innovative use of ICT | 0.2635 *** (0.0440) | −0.0018 *** (0.0004) | −0.0154 *** (0.0021) | −0.0457 *** (0.0069) | 0.0542 *** (0.0075) | 0.0087 *** (0.0013) |
Creative use of ICT | 0.1663 *** (0.0431) | −0.0011 *** (0.0003) | −0.0097 *** (0.0022) | −0.0289 *** (0.0066) | 0.0342 *** (0.0077) | 0.0055 *** (0.0013) |
Pseudolikelihood Log | −1260.4086 | |||||
Pseudo R2 | 36.20% | |||||
Wald chi2(27) | 626.06 | |||||
Observations | 1323 |
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Ben Youssef, A.; Dahmani, M.; Ragni, L. ICT Use, Digital Skills and Students’ Academic Performance: Exploring the Digital Divide. Information 2022, 13, 129. https://doi.org/10.3390/info13030129
Ben Youssef A, Dahmani M, Ragni L. ICT Use, Digital Skills and Students’ Academic Performance: Exploring the Digital Divide. Information. 2022; 13(3):129. https://doi.org/10.3390/info13030129
Chicago/Turabian StyleBen Youssef, Adel, Mounir Dahmani, and Ludovic Ragni. 2022. "ICT Use, Digital Skills and Students’ Academic Performance: Exploring the Digital Divide" Information 13, no. 3: 129. https://doi.org/10.3390/info13030129
APA StyleBen Youssef, A., Dahmani, M., & Ragni, L. (2022). ICT Use, Digital Skills and Students’ Academic Performance: Exploring the Digital Divide. Information, 13(3), 129. https://doi.org/10.3390/info13030129