Trends and Transformations: A Bibliometric Analysis of Eye-Tracking Research in Educational Technology
Abstract
:1. Introduction
2. Literature Review
3. Research Design
3.1. Methodology
3.2. Bibliometric Analysis Visualization Tools
3.3. Research Design Process
3.3.1. Paper Retrieval Scheme Design
3.3.2. Data Collection
- (a)
- Publications that did not emphasize the topic of this study (i.e., eye tracking);
- (b)
- Articles that were not peer-reviewed;
- (c)
- Works that were not published in English;
- (d)
- Articles that were not accessible through the authors’ institutional database subscription.
3.3.3. Data Processing and Analysis
- (1)
- Descriptive Information Analysis: The descriptive information analysis was conducted using the biblioshiny package to identify the number of publications per year, scientific information sources, prolific authors, and highly cited documents. The general steps for conducting descriptive information statistical analysis with Bibliometrix are as follows: (1) Identify research-related search terms to ensure that subsequent analyses cover all major literature in the knowledge domain. (2) Data collection (titles, authors, keywords, abstracts, etc.): Download bibliometric records required for analysis through databases such as WOS and export them in plain text format. (3) Upload bibliometric records to Bibliometrix. (4) Within Bibliometrix, select the corresponding modules to obtain relevant statistical content. (5) Generate charts for the corresponding statistical content and save them as images or tables.
- (2)
- Keyword Co-occurrence Analysis: A keyword co-occurrence analysis was conducted utilizing CiteSpace 6.3.R1 to pinpoint keywords that frequently co-occur within the retrieved literature [30]. The procedure for performing co-occurrence analysis with CiteSpace is outlined below: (1) Launch CiteSpace and upload the plain text data file from WOS into CiteSpace. (2) Extract keywords from bibliometric records, including both author-provided terms and index-generated terms such as Keywords Plus®. (3) Apply time slicing to specify the range of the entire time interval and the length of individual time slices. In this study, the time interval was set from 2001 to 2024, with each time slice representing a 3-year period to capture the evolving trends effectively. (4) Select thresholds and criteria that represent the threshold level for co-occurrence analysis. For this study, the threshold was set to a minimum co-occurrence of 10 times to ensure the identification of significant and frequently discussed keywords. (5) View the visualization map. (6) Interact with the visualization, manipulating the display of visual properties by showing or hiding link strengths and using aliases to merge nodes [31].
- (3)
- Keyword Burst Detection Analysis: Burst keywords were identified using CiteSpace 6.3.R1 and Kleinberg’s burst detection algorithm [31], in conjunction with Gephi, enabling researchers to pinpoint emerging research interests within a specific domain and visualize keywords that exhibited high-frequency occurrences over a defined time interval. Kleinberg [32] proposed a two-state model to represent the non-burst phase (0) and the burst phase (1). For each state, the expected relevant occurrence probability of a specific word is denoted as p0 or p1, based on the word’s occurrence during the study period and the total number of documents, following a binomial distribution. Kleinberg constructed a cost model, as shown in Equation (1), where i represents the states 0 or 1, pi denotes the expected relevant occurrence probability of a word under states of 0 or 1, and is a cost associated with the state transition between 0 and 1. The total cost (TC) of the model is the sum of the negative logarithm of the probability that rt would generate using the binomial distribution and the transition cost associated with moving from state 0 to state 1. In essence, the burst detection problem is transformed into an optimization problem, aiming to identify the sequence of states for a detection word that yields the lowest total cost output, given the input statistics sequence.
4. Results
4.1. Descriptive Bibliometric Analysis
4.1.1. Publication Time
4.1.2. Countries/Regions Analysis
4.1.3. Journal Distribution
4.1.4. Prolific Authors
4.1.5. Most Cited Documents
4.2. Keyword Co-Occurrence Analysis
4.3. Keyword Burst Detection Analysis
5. Discussion
5.1. RQ 1: Overall Bibliometric Data of Eye-Tracking Research in the Field of Educational Technology
5.2. RQ 2: Emerging Trends and Issues in Eye-Tracking Research in Educational Technology
5.3. Limitations and Future Research Directions
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A. Journals Included in This Analysis
No. | Source Title | Category Rank | Category Quartile | Impact Factor (2023) |
---|---|---|---|---|
1 | Computers in Human Behavior | 3 | Q1 | 9 |
2 | Computers & Education | 3 | Q1 | 8.9 |
3 | International Journal of Educational Technology in Higher Education | 4 | Q1 | 8.6 |
4 | British Journal of Educational Technology | 6 | Q1 | 6.7 |
5 | Internet and Higher Education | 8 | Q1 | 6.4 |
6 | Journal of Computer Assisted Learning, | 13 | Q1 | 5.1 |
7 | System | 15 | Q1 | 4.9 |
8 | Education and Information Technologies | 16 | Q1 | 4.8 |
9 | Educational Technology & Society, | 22 | Q1 | 4.6 |
10 | Journal of Research on Technology in Education | 24 | Q1 | 4.5 |
11 | International Journal of Computer-Supported Collaborative Learning | 28 | Q1 | 4.2 |
12 | Journal of Educational Computing Research | 33 | Q1 | 4 |
13 | Learning Media and Technology | 33 | Q1 | 4 |
14 | Distance Education | 45 | Q1 | 3.7 |
15 | Interactive Learning Environments | 57 | Q1 | 3.7 |
16 | Technology Pedagogy and Education | 60 | Q1 | 3.4 |
17 | ETR&D-Educational Technology Research and Development | 64 | Q1 | 3.3 |
18 | Australasian Journal of Educational Technology | 64 | Q1 | 3.3 |
19 | IEEE Transactions on Learning Technologies | 92 | Q1 | 2.9 |
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Parameter | Settings |
---|---|
Topic | TS = (eye OR gaze) AND (movement* OR track* OR record*) |
Type | Article |
Search Time | 1 June 2024 |
Citation Index | SCI-EXPANDED, SSCI, A&HCI |
Category | 19 journals, see Appendix A. |
Language | English |
Type | Inclusion Criteria |
---|---|
Research content standard | (1) The literature primarily focuses on core topics within the field of educational technology; (2) Only papers written in English are included; (3) Only papers that use eye tracking as the primary data collection tool are considered; (4) The research must describe an experiment involving participants and include a detailed description of the research methods applied, including the experimental setting. |
Research quality standard | (1) The included literature must be at least five pages in length, excluding reports and short papers that fall below this page threshold; (2) Full-text papers must be accessible through internet sources; (3) The literature must contain comprehensive information elements, including abstracts, author information, keyword fields, and references; (4) The included literature must have undergone standardization through a double-blind peer review process. |
No. | Country | Freq. |
---|---|---|
1 | China | 259 |
2 | USA | 134 |
3 | Germany | 76 |
4 | Netherlands | 68 |
5 | United Kingdom | 37 |
6 | Canada | 32 |
7 | Spain | 31 |
8 | Turkey | 27 |
9 | Australia | 26 |
10 | Italy | 20 |
11 | France | 19 |
12 | South Korea | 16 |
13 | Finland | 14 |
14 | Norway | 12 |
15 | Czech Republic | 11 |
16 | Japan | 11 |
17 | Switzerland | 11 |
18 | Chile | 10 |
19 | Israel | 9 |
20 | India | 7 |
Document | DOI | Year | LC | GC | LC/GC Ratio (%) |
---|---|---|---|---|---|
TSAI MJ, 2012, COMPUT EDUC [34] | 10.1016/j.compedu.2011.07.012 | 2012 | 27 | 178 | 15.17 |
MASON L, 2013, COMPUT EDUC [35] | 10.1016/j.compedu.2012.07.011 | 2013 | 24 | 167 | 14.37 |
VAN GOG T, 2009, COMPUT HUM BEHAV [36] | 10.1016/j.chb.2009.02.007 | 2009 | 18 | 128 | 14.06 |
OZCELIK E, 2009, COMPUT EDUC [37] | 10.1016/j.compedu.2009.03.002 | 2009 | 17 | 129 | 13.18 |
OZCELIK E, 2010, COMPUT HUM BEHAV [38] | 10.1016/j.chb.2009.09.001 | 2010 | 16 | 173 | 9.25 |
TSAI MJ, 2016, COMPUT EDUC [39] | 10.1016/j.compedu.2016.03.011 | 2016 | 16 | 83 | 19.28 |
SHE HC, 2009, COMPUT EDUC [40] | 10.1016/j.compedu.2009.06.012 | 2009 | 14 | 80 | 17.50 |
OUWEHAND K, 2015, EDUC TECHNOL SOC [41] | 2015 | 12 | 56 | 21.43 | |
VAN GOG T, 2014, COMPUT EDUC [42] | 10.1016/j.compedu.2013.12.004 | 2014 | 11 | 70 | 15.71 |
JAMET E, 2014, COMPUT HUM BEHAV [43] | 10.1016/j.chb.2013.11.013 | 2014 | 11 | 100 | 11.00 |
PARK B, 2015, COMPUT EDUC [44] | 10.1016/j.compedu.2015.02.016 | 2015 | 11 | 154 | 7.14 |
VAN WERMESKERKEN M, 2017, COMPUT EDUC [45] | 10.1016/j.compedu.2017.05.013 | 2017 | 11 | 58 | 18.97 |
MASON L, 2016, BRIT J EDUC TECHNOL [46] | 10.1111/bjet.12271 | 2016 | 10 | 47 | 21.28 |
WANG JH, 2020, COMPUT EDUC [47] | 10.1016/j.compedu.2019.103779 | 2020 | 10 | 75 | 13.33 |
VAN GOG T, 2009, COMPUT HUM BEHAV-a [48] | 10.1016/j.chb.2008.12.021 | 2009 | 9 | 114 | 7.89 |
LIU HC, 2011, COMPUT HUM BEHAV [49] | 10.1016/j.chb.2011.06.012 | 2011 | 9 | 61 | 14.75 |
STULL AT, 2018, COMPUT HUM BEHAV [50] | 10.1016/j.chb.2018.07.019 | 2018 | 9 | 65 | 13.85 |
STARK L, 2018, COMPUT EDUC [51] | 10.1016/j.compedu.2018.02.003 | 2018 | 9 | 50 | 18.00 |
SCHNEIDER B, 2013, INT J COMP-SUPP COLL [52] | 10.1007/s11412-013-9181-4 | 2013 | 8 | 105 | 7.62 |
YANG FY, 2013, COMPUT EDUC [53] | 10.1016/j.compedu.2012.10.009 | 2013 | 8 | 66 | 12.12 |
Characteristic | Value |
---|---|
Nodes | 298 |
Links | 1623 |
Modularity | 0.4969 |
Average degree of nodes | 4.094 |
Keywords | Frequency | Keywords | Frequency |
---|---|---|---|
attention | 70 | memory | 19 |
cognitive load | 67 | acquisition | 15 |
information | 49 | behavior | 14 |
comprehension | 42 | model | 13 |
performance | 33 | prior knowledge | 12 |
text | 29 | achievement | 12 |
multimedia learning | 29 | perception | 12 |
strategy | 27 | design | 12 |
visual attention | 26 | virtual reality | 11 |
knowledge | 24 | multimedia | 11 |
students | 22 | motivation | 11 |
technology | 20 | science | 11 |
impact | 19 | education | 10 |
Keywords | Degree | Keywords | Degree |
---|---|---|---|
information | 82 | environments | 34 |
attention | 80 | students | 33 |
cognitive load | 71 | model | 32 |
comprehension | 70 | science | 30 |
multimedia learning | 53 | motivation | 29 |
knowledge | 52 | behavior | 28 |
performance | 49 | perception | 28 |
strategy | 48 | education | 26 |
visual attention | 46 | multimedia | 24 |
memory | 41 | design | 23 |
text | 39 | applications in subject areas | 21 |
impact | 38 | cognitive processes | 21 |
prior knowledge | 36 | patterns | 21 |
acquisition | 36 | achievement | 21 |
technology | 35 | seductive details | 20 |
Keywords | Begin | End | Keywords | Begin | End |
---|---|---|---|---|---|
information | 2003 | 2014 | patterns | 2019 | 2020 |
applications in subject areas | 2009 | 2017 | achievement | 2020 | 2022 |
children | 2009 | 2020 | students | 2021 | 2024 |
comprehension | 2012 | 2016 | technology | 2021 | 2022 |
behavior | 2015 | 2018 | education | 2022 | 2024 |
illustrations | 2017 | 2019 |
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Share and Cite
Lai, L.; Su, B.; She, L. Trends and Transformations: A Bibliometric Analysis of Eye-Tracking Research in Educational Technology. J. Eye Mov. Res. 2025, 18, 23. https://doi.org/10.3390/jemr18030023
Lai L, Su B, She L. Trends and Transformations: A Bibliometric Analysis of Eye-Tracking Research in Educational Technology. Journal of Eye Movement Research. 2025; 18(3):23. https://doi.org/10.3390/jemr18030023
Chicago/Turabian StyleLai, Liqi, Baohua Su, and Linwei She. 2025. "Trends and Transformations: A Bibliometric Analysis of Eye-Tracking Research in Educational Technology" Journal of Eye Movement Research 18, no. 3: 23. https://doi.org/10.3390/jemr18030023
APA StyleLai, L., Su, B., & She, L. (2025). Trends and Transformations: A Bibliometric Analysis of Eye-Tracking Research in Educational Technology. Journal of Eye Movement Research, 18(3), 23. https://doi.org/10.3390/jemr18030023