Education 590ED - EducDataMining&LearnerAnalytic
Fall
2021
01
3.00
Shiting Lan,Ivon Arroyo
TU TH 1:00PM 2:15PM
UMass Amherst
23461
Computer Science Bldg rm 142
andrewlan@umass.edu
ivon@cs.umass.edu
23416,23423
The primary goal of this course is for students to be comfortable with exploring educational datasets and analyzing them, finding patterns in educational data, creating models that summarize and describe data, and creating predictive models, using a variety of techniques that span machine learning, data mining, and statistics. We will work with datasets that come from educational learning technologies, tutoring and assessment software, as well as other datasets that students might be interested in (e.g. datasets from students grades classes, many of which are publicly available through national sources). Students are encouraged to bring their own datasets of interest, if they have them or want to. Another goal is to understand how current researchers in the field of educational data mining, AI in Education, and educational technology are using a variety of techniques to understand and model their data. We will cover many different methods, from machine learning methods applied to educational data and classic models inspired by cognitive theory. We will also cover various applications including computerized adaptive testing, affect detection, reading and writing analysis, activity log analysis, and instructional policy design.
This course is open to EDUC Masters students only.