Academic Performance and College Dropout: Using Longitudinal Expectations Data to Estimate a Learning Model

44 Pages Posted: 5 Apr 2013 Last revised: 7 Apr 2024

See all articles by Todd R. Stinebrickner

Todd R. Stinebrickner

University of Western Ontario - Department of Economics

Ralph Stinebrickner

Berea College; University of Western Ontario

Date Written: April 2013

Abstract

We estimate a dynamic learning model of the college dropout decision, taking advantage of unique expectations data to greatly reduce our reliance on assumptions that would otherwise be necessary for identification. We find that forty-five percent of the dropout that occurs in the first two years of college can be attributed to what students learn about their about academic performance, but that this type of learning becomes a less important determinant of dropout after the midpoint of college We use our model to quantify the importance of the possible avenues through which poor grade performance could influence dropout. Our simulations show that students who perform poorly tend to learn that staying in school is not worthwhile, not that they fail out or learn that they are more likely (than they previously believed) to fail out in the future. We find that poor performance both substantially decreases the enjoyability of school and substantially influences beliefs about post-college earnings.

Suggested Citation

Stinebrickner, Todd R. and Stinebrickner, Ralph, Academic Performance and College Dropout: Using Longitudinal Expectations Data to Estimate a Learning Model (April 2013). NBER Working Paper No. w18945, Available at SSRN: https://ssrn.com/abstract=2245453

Todd R. Stinebrickner (Contact Author)

University of Western Ontario - Department of Economics ( email )

London, Ontario N6A 5B8
Canada

Ralph Stinebrickner

Berea College ( email )

Berea, KY 40404
United States

University of Western Ontario ( email )

1151 Richmond Street
Suite 2
London, Ontario N6A 5B8
Canada