Office of Research, UC Riverside
Thomas Stahovich
Professor
Mechanical Engineering Dept
stahov@ucr.edu
(951) 827-7719


Using data-mining to enable early interventions in introductory engineering courses

AWARD NUMBER
006947-002
FUND NUMBER
21287
STATUS
Closed
AWARD TYPE
3-Grant
AWARD EXECUTION DATE
7/31/2014
BEGIN DATE
10/1/2014
END DATE
9/30/2017
AWARD AMOUNT
$477,514

Sponsor Information

SPONSOR AWARD NUMBER
DUE-1432820
SPONSOR
NATIONAL SCIENCE FOUNDATION
SPONSOR TYPE
Federal
FUNCTION
Organized Research
PROGRAM NAME

Proposal Information

PROPOSAL NUMBER
14070722
PROPOSAL TYPE
New
ACTIVITY TYPE
Basic Research

PI Information

PI
Stahovich, Thomas
PI TITLE
Other
PI DEPTARTMENT
Mechanical Engineering
PI COLLEGE/SCHOOL
Bourns College of Engineering
CO PIs

Project Information

ABSTRACT

The goal of this project is to develop technology-based techniques to directly capture and analyze student learning steps and pathways, and then provide interventions based on that analysis to promote success in engineering courses. In this research, students will use smartpens and tablet computers to carry out learning activities in undergraduate engineering courses. The smartpens record problem-solving work, while the tablets record how students use instructional materials, such as e-books. This combination of technologies provides a fine-grained view of the learning process not available with conventional assessment methods, thereby enabling powerful tools for individualized assessment that can guide instruction.

Data mining techniques are used to examine the correlation between these learning activities and academic achievement as measured by exam performance, providing a means to distinguish between ineffective and effective learning strategies. These assessment techniques are used to create an early warning system that identifies students at risk of poor academic performance and recommends suitable learning strategies. The burgeoning field of educational informatics has begun to produce important insights about student learning. However, most research in this field has relied on data from artificial learning environments such as online tutoring systems. This project helps transform this field by creating techniques for capturing students' learning activities in existing engineering courses in a form suitable for data mining. This project helps detect the learning processes and suggest individualized interventions for the diverse students at a Hispanic Serving Institution, and thus helps to create increased opportunities for students from traditionally underrepresented groups to succeed in STEM careers.
(Abstract from NSF)