Abstract
The interaction with the various learners in a Massive Open Online Course (MOOC) is often complex. Contemporary MOOC learning analytics relate with click-streams, keystrokes and other user-input variables. Such variables however, do not always capture users’ learning and behavior (e.g., passive video watching). In this paper, we present a study with 40 students who watched a MOOC lecture while their eye-movements were being recorded. We then proposed a method to define stimuli-based gaze variables that can be used for any kind of stimulus. The proposed stimuli-based gaze variables indicate students’ content-coverage (in space and time) and reading processes (area of interest based variables) and attention (i.e., with-me-ness), at the perceptual (following teacher’s deictic acts) and conceptual levels (following teacher discourse). In our experiment, we identified a significant mediation effect of the content coverage, reading patterns and the two levels of with-me-ness on the relation between students’ motivation and their learning performance. Such variables enable common measurements for the different kind of stimuli present in distinct MOOCs. Our long-term goal is to create student profiles based on their performance and learning strategy using stimuli-based gaze variables and to provide students gaze-aware feedback to improve overall learning process. One key ingredient in the process of achieving a high level of adaptation in providing gaze-aware feedback to the students is to use Artificial Intelligence (AI) algorithms for prediction of student performance from their behaviour. In this contribution, we also present a method combining state-of-the-art AI technique with the eye-tracking data to predict student performance. The results show that the student performance can be predicted with an error of less than 5%.
Highlights
We present a study to investigate how well stimuli-based gaze analytics can be utilized to enhance motivation and learning in Massive Open Online Courses (MOOCs)
We address the general question of how gaze-variables can help students to watch MOOC videos more efficiently? We tackle this question from a teacher’s perspective and call it this gaze-based measure “with-me-ness”
The results show that the eyetracking data is an important source of information explaining different factors in teachers’ orchestration load and experience
Summary
We present a study to investigate how well stimuli-based gaze analytics can be utilized to enhance motivation and learning in Massive Open Online Courses (MOOCs). A multitude of factors affect academic performance of the students: previous grades (Astin, 1971), students’ efforts and motivation (Grabe & Latta, 1981), socioeconomic differences (Kaplan, 1982), quality of schooling (Wiley, 1976), attention (Good & Beckerman, 1978) and participation (Finn, 1989). In this contribution, we address the general question of how gaze-variables (related to students’ reading and attention) can help students to watch MOOC videos more efficiently?
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