Predicting Question Difficulty in Web Surveys: A Machine Learning Approach Based on Mouse Movement Features

Author:

Fernández-Fontelo Amanda1,Kieslich Pascal J.2,Henninger Felix23,Kreuter Frauke34,Greven Sonja1

Affiliation:

1. Chair of Statistics, School of Business and Economics, Humboldt-Universität zu Berlin, Germany

2. Mannheim Centre for European Social Research, University of Mannheim, Germany

3. Institute for Statistics, Ludwig-Maximilians-Universität München, Germany

4. Joint Program in Survey Methodology, University of Maryland, College Park, MD, USA

Abstract

Survey research aims to collect robust and reliable data from respondents. However, despite researchers’ efforts in designing questionnaires, survey instruments may be imperfect, and question structure not as clear as could be, thus creating a burden for respondents. If it were possible to detect such problems, this knowledge could be used to predict problems in a questionnaire during pretesting, inform real-time interventions through responsive questionnaire design, or to indicate and correct measurement error after the fact. Previous research has used paradata, specifically response times, to detect difficulties and help improve user experience and data quality. Today, richer data sources are available, for example, movements respondents make with their mouse, as an additional detailed indicator for the respondent–survey interaction. This article uses machine learning techniques to explore the predictive value of mouse-tracking data regarding a question’s difficulty. We use data from a survey on respondents’ employment history and demographic information, in which we experimentally manipulate the difficulty of several questions. Using measures derived from mouse movements, we predict whether respondents have answered the easy or difficult version of a question, using and comparing several state-of-the-art supervised learning methods. We have also developed a personalization method that adjusts for respondents’ baseline mouse behavior and evaluate its performance. For all three manipulated survey questions, we find that including the full set of mouse movement measures and accounting for individual differences in these measures improve prediction performance over response-time-only models.

Funder

German Research Foundation

Publisher

SAGE Publications

Subject

Law,Library and Information Sciences,Computer Science Applications,General Social Sciences

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