Analyzing Log Data of Students Who Have Achieved Scores Adjacent to the Minimum Passing Grade for a K-MOOC Completion in the Context of Learning Analytics
Abstract
:1. Introduction
2. Related Work
3. Methods
3.1. Participants
3.2. Method
4. Results
4.1. Analyzing Results of Learning Activity Behaviors by Group according to Major Event Logs
4.2. Analyzing Results of Learning Activity Behaviors by Group Based on Sub-Events of “Textbook Interaction”
4.3. Analyzing Results of Learning Activity Behaviors by Group Based on Sub-Categories of “Problem Interaction”
5. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Total | NC | C | χ2 | |
---|---|---|---|---|---|
Gender | Male | 766 | 190 (33.0) | 576 (29.9) | 8.188 * |
Female | 1349 | 7 (1.2) | 1342 (69.7) | ||
etc. | 385 | 7 (0.4) | 378 (65.7) | ||
Age | 10’s | 160 | 41 (7.2) | 119 (6.2) | 38.480 *** |
20’s | 2172 | 471 (82.5) | 1701 (89.2) | ||
30’s | 52 | 13 (2.3) | 39 (2.0) | ||
40’s | 40 | 19 (3.3) | 21 (1.1) | ||
50’s | 40 | 21 (3.7) | 19 (1.0) | ||
60’s or older | 15 | 6 (1.1) | 9 (0.5) | ||
Educational background | Elementary school graduate | 2 | 1 (0.2) | 1 (0.1) | 18.141 * |
Middle school graduate | 55 | 18 (4.4) | 37 (2.6) | ||
High school graduate | 1482 | 308 (75.1) | 1174 (83.4) | ||
Junior college graduate | 37 | 9 (2.2) | 28 (2.0) | ||
University graduate | 200 | 61 (14.9) | 139 (9.9) | ||
Master | 26 | 10 (2.4) | 16 (1.1) | ||
PhD. | 8 | 2 (0.5) | 6 (0.4) | ||
etc. | 7 | 1 (0.2) | 6 (0.4) |
Major Event Variable | Group | No. of Students | Students Who Performed | No. of Logs per Student Who Performed | |||
---|---|---|---|---|---|---|---|
No. (%) | χ2 | M | SD | t | |||
Enrollment | NC | 581 | 483 (83.1) | 1.671 | 1.73 | 1.12 | 0.983 |
C | 1927 | 1556 (80.7) | 1.67 | 1.31 | |||
Navigation | NC | 581 | 572 (98.5) | 0.000 | 83.22 | 81.52 | 1.164 |
C | 1927 | 1897 (98.4) | 78.73 | 81.67 | |||
Video interaction | NC | 581 | 541 (93.1) | 0.097 | 309.35 | 529.65 | 0.778 |
C | 1927 | 1787 (92.7) | 290.92 | 491.48 | |||
Textbook interaction | NC | 302 | 186 (61.6) | 11.291 ** | 180.69 | 567.82 | −2.594 * |
C | 1212 | 867 (71.5) | 278.99 | 667.99 | |||
Problem interaction | NC | 581 | 566 (97.4) | 1.339 | 227.29 | 186.76 | 4.033 *** |
C | 1927 | 1892 (98.2) | 192.94 | 155.22 | |||
Bookmark | NC | 553 | 27 (4.9) | 0.999 | 17.95 | 91.56 | 0.890 |
C | 1764 | 69 (3.9) | 14.23 | 83.86 | |||
Library interaction | NC | 7 | 7 (100.0) | 2.501 | 3.43 | 1.51 | 0.024 |
C | 135 | 99 (73.3) | 3.39 | 4.02 | |||
Discussion forum | NC | 581 | 165 (28.4) | 3.538 | 2.08 | 6.64 | −0.411 |
C | 1927 | 627 (32.5) | 2.22 | 7.47 | |||
Open response assessment | NC | 64 | 12 (18.8) | 1.749 | 4.13 | 11.29 | −0.972 |
C | 350 | 93 (26.6) | 5.66 | 11.66 | |||
Poll and survey | NC | 255 | 96 (37.6) | 0.001 | 2.87 | 5.66 | 0.442 |
C | 856 | 323 (37.7) | 2.68 | 6.19 | |||
Course content completion | NC | 94 | 53 (56.4) | 0.025 | 4.79 | 6.48 | 0.718 |
C | 197 | 113 (57.4) | 4.26 | 5.47 | |||
Third-party content | NC | 12 | 10 (83.3) | 0.061 | 1.92 | 1.24 | −0.053 |
C | 348 | 280 (80.5) | 1.94 | 1.50 | |||
Student cohort | NC | 111 | 30 (27.0) | 1.403 | 0.27 | 0.45 | −0.531 |
C | 163 | 34 (20.9) | 0.40 | 2.52 |
Sub-Event Variable | Description |
---|---|
book | When the user navigates within the PDF viewer or PNG viewer, the browser emits a “corresponding event”. |
pdf.thumbnails.toggled | When the user clicks on the icon to show or hide the thumbnail of the page, the browser emits a “corresponding event”. |
pdf.thumbnails.navigated | When a user clicks on a thumbnail image to go to a page, the browser emits a “corresponding event”. |
pdf.outline.toggled | When the user clicks the outline icon to show or hide the list of book chapters, the browser emits a “corresponding event”. |
pdf.chapter.navigated | When the user clicks on a link in the outline to jump to a chapter, the browser emits a “corresponding event”. |
pdf.page.navigated | When the user manually enters a page number, the browser emits a “corresponding event”. |
pdf.zoom.buttons.changed | When the user clicks the Zoom-In or Zoom-Out icon, the browser emits a “corresponding event”. |
pdf.zoom.menu.changed | When the screen size changes, the browser emits a “corresponding event”. This change occurs after the student selects a size setting from the zoom menu or resizes the browser window. |
pdf.display.scaled | Whenever the page displayed on the screen changes while the user is scrolling up or down, the browser emits a “corresponding event”. |
pdf.page.scrolled | When a user finds a text value in a file, the browser emits a “corresponding event”. |
pdf.search.executed | To reduce the number of events that occur, instead of generating one event per input character, this event defines a search string as a set of characters consecutively entered into the search field within 500 ms of each other. |
pdf.search.navigatednext | When the user clicks the Find Next or Find Previous icon with the entered search string, the browser emits a “corresponding event”. |
pdf.search.highlight.toggled | When the user selects or removes the Highlight All option for a search, the browser emits a “corresponding event”. |
pdf.searchcasesensitivity.toggled | When the user selects or removes the Match Case option for a search, the browser emits a “corresponding event”. |
Sub-Event Variable | Group | Total No. of Students | Students Who Performed | No. of Logs per Student Who Performed | ||||
---|---|---|---|---|---|---|---|---|
No. of Students | Percentage (%) | χ2 | M | SD | t | |||
book | NC | 326 | 196 | 60.1 | 11.249 ** | 114.64 | 375.85 | −2.502 * |
C | 1267 | 885 | 69.9 | 176.90 | 485.43 | |||
pdf.thumbnails.toggled | NC | 319 | 5 | 1.6 | 2.771 | 0.02 | 0.19 | −3.203 ** |
C | 1132 | 38 | 3.4 | 0.10 | 0.71 | |||
pdf.thumbnails.navigated | NC | 310 | 0 | 0.0 | 2.546 | 0.00 | 0.00 | −2.110 * |
C | 1103 | 9 | 0.8 | 0.03 | 0.51 | |||
pdf.outline.toggled | NC | 228 | 0 | 0.0 | 0.789 | 0.00 | 0.00 | −0.773 |
C | 869 | 3 | 0.3 | 0.01 | 0.11 | |||
pdf.chapter.navigated | NC | 326 | 142 | 43.6 | 13.081 *** | 7.46 | 15.40 | −4.196 *** |
C | 1267 | 694 | 54.8 | 11.84 | 21.40 | |||
pdf.page.navigated | NC | 307 | 3 | 1.0 | 0.709 | 0.01 | 0.10 | −1.929 |
C | 1100 | 18 | 1.6 | 0.03 | 0.28 | |||
pdf.zoom.buttons.changed | NC | 326 | 4 | 1.2 | 4.475 * | 0.06 | 0.54 | −2.100 * |
C | 1267 | 44 | 3.5 | 0.17 | 1.59 | |||
pdf.zoom.menu.changed | NC | 323 | 7 | 2.2 | 0.206 | 0.05 | 0.41 | −0.465 |
C | 1264 | 33 | 2.6 | 0.07 | 0.62 | |||
pdf.display.scaled | NC | 326 | 197 | 60.4 | 10.006 ** | 10.08 | 17.87 | −3.967 *** |
C | 1267 | 882 | 69.6 | 14.97 | 26.21 | |||
pdf.page.scrolled | NC | 326 | 116 | 35.6 | 5.071 * | 38.68 | 164.18 | −1.301 |
C | 1267 | 538 | 42.5 | 51.69 | 160.21 | |||
pdf.search.executed | NC | 326 | 13 | 4.0 | 17.401 *** | 2.26 | 17.72 | −4.858 *** |
C | 1267 | 150 | 11.8 | 10.46 | 48.85 | |||
pdf.search.navigatednext | NC | 326 | 13 | 4.0 | 16.387 *** | 2.17 | 16.50 | −3.902 *** |
C | 1267 | 146 | 11.5 | 8.27 | 45.18 | |||
pdf.search.highlight.toggled | NC | 303 | 3 | 1.0 | 4.157 * | 0.18 | 2.99 | −2.593 * |
C | 1090 | 34 | 3.1 | 1.28 | 12.72 | |||
pdf.searchcasesensitivity.toggled | NC | 169 | 0 | 0.0 | 1.393 | 0.00 | 0.00 | −2.197 * |
C | 733 | 6 | 0.8 | 0.02 | 0.20 |
Sub-Event Variable | Description |
---|---|
hints.demandhints_displayed | The course management team can devise problems with one or more hints. In the case of a problem that includes hints, whenever a user requests a hint, the server emits a “corresponding event”. |
hints.feedback_displayed | The course management team can devise a problem with a feedback message that appears after the user submits an answer to the problem. In the case of a problem with a feedback message, whenever the user selects Check, the server emits a “corresponding event”. |
problem_check | (Browser) Browser interactions and server requests both generate “corresponding events”. When the user checks the answer to a problem, the browser emits a “corresponding event”. (Server) (Browser) Browser interactions and server requests both generate “corresponding events”. |
problem_check_fail | When the answer to the problem is checked successfully, the server emits a “corresponding event”. |
problem_graded | Whenever the user clicks on Check in question, the server emits a “corresponding event” and is graded successfully. |
problem_reset | When the user clicks Reset to answer the question again, the browser emits a “corresponding event”. |
problem_save | When the user saves a problem, the browser emits a “corresponding event”. |
problem_show | When an answer to a problem is seen, the browser emits a “corresponding event”. That is, the user selects Show Answer. |
reset_problem | When a problem has been successfully reset, the server will emit a “corresponding event”. |
reset_problem_fail | When the problem is not successfully reset, the server emits a “corresponding event”. |
save_problem_fail | When a problem is not successfully saved, the server emits a “corresponding event”. |
save_problem_success | When a problem is successfully saved, the server emits a “corresponding event”. |
showanswer | When an answer to a problem is found, the server emits a “corresponding event”. |
Sub-Event Variable | Group | Total No. of Students | Students Who Performed | No. of Logs per Student Who Performed | ||||
---|---|---|---|---|---|---|---|---|
No. of Students | Percentage (%) | χ2 | M | SD | t | |||
hints.demandhints_displayed | NC | 143 | 60 | 42.0 | 5.400 * | 4.74 | 13.33 | −2.768 ** |
C | 232 | 126 | 54.3 | 9.51 | 20.00 | |||
hints.feedback_displayed | NC | 115 | 82 | 71.3 | 29.308 *** | 10.51 | 16.52 | −8.471 *** |
C | 570 | 513 | 90.0 | 25.64 | 21.57 | |||
problem_check | NC | 581 | 573 | 98.6 | 0.002 | 143.49 | 103.60 | 4.888 *** |
C | 1927 | 1900 | 98.6 | 120.42 | 85.53 | |||
problem_check_fail | NC | 555 | 35 | 6.3 | 0.843 | 0.14 | 0.80 | 0.480 |
C | 1686 | 89 | 5.3 | 0.12 | 0.78 | |||
problem_graded | NC | 581 | 559 | 96.2 | 2.762 | 66.21 | 50.14 | 4.499 *** |
C | 1927 | 1879 | 97.5 | 55.91 | 41.95 | |||
problem_reset | NC | 40 | 12 | 30.0 | 0.113 | 0.53 | 1.01 | 0.369 |
C | 34 | 9 | 26.5 | 0.44 | 0.93 | |||
problem_save | NC | 576 | 206 | 35.8 | 1.154 | 1.84 | 9.92 | 1.029 |
C | 1714 | 571 | 33.3 | 1.50 | 5.14 | |||
problem_show | NC | 581 | 429 | 73.8 | 30.595 *** | 11.15 | 18.40 | 6.326 *** |
C | 1927 | 1181 | 61.3 | 6.00 | 12.31 | |||
reset_problem | NC | 40 | 13 | 32.5 | 0.320 | 0.53 | 0.93 | 0.386 |
C | 34 | 9 | 26.5 | 0.44 | 0.93 | |||
reset_problem_fail | NC | 40 | 1 | 2.5 | 0.862 | 0.03 | 0.16 | 0.921 |
C | 34 | 0 | 0.0 | 0.00 | 0.00 | |||
save_problem_fail | NC | 551 | 3 | 0.5 | 0.825 | 0.01 | 0.13 | −0.588 |
C | 1676 | 16 | 1.0 | 0.01 | 0.17 | |||
save_problem_success | NC | 576 | 212 | 36.8 | 0.736 | 1.93 | 9.98 | 0.935 |
C | 1714 | 597 | 34.8 | 1.62 | 5.52 | |||
showanswer | NC | 581 | 445 | 76.6 | 34.526 *** | 11.71 | 18.49 | 6.712 *** |
C | 1927 | 1223 | 63.5 | 6.22 | 12.49 |
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Kim, S.; Park, T. Analyzing Log Data of Students Who Have Achieved Scores Adjacent to the Minimum Passing Grade for a K-MOOC Completion in the Context of Learning Analytics. Sustainability 2022, 14, 11136. https://doi.org/10.3390/su141811136
Kim S, Park T. Analyzing Log Data of Students Who Have Achieved Scores Adjacent to the Minimum Passing Grade for a K-MOOC Completion in the Context of Learning Analytics. Sustainability. 2022; 14(18):11136. https://doi.org/10.3390/su141811136
Chicago/Turabian StyleKim, Sunyoung, and Taejung Park. 2022. "Analyzing Log Data of Students Who Have Achieved Scores Adjacent to the Minimum Passing Grade for a K-MOOC Completion in the Context of Learning Analytics" Sustainability 14, no. 18: 11136. https://doi.org/10.3390/su141811136
APA StyleKim, S., & Park, T. (2022). Analyzing Log Data of Students Who Have Achieved Scores Adjacent to the Minimum Passing Grade for a K-MOOC Completion in the Context of Learning Analytics. Sustainability, 14(18), 11136. https://doi.org/10.3390/su141811136