articleMar 18, 2015Closed access

Principles of Explanatory Debugging to Personalize Interactive Machine Learning

Oregon State University · City, University of London

Indexed incrossref

Abstract

How can end users efficiently influence the predictions that machine learning systems make on their behalf? This paper presents Explanatory Debugging, an approach in which the system explains to users how it made each of its predictions, and the user then explains any necessary corrections back to the learning system. We present the principles underlying this approach and a prototype instantiating it. An empirical evaluation shows that Explanatory Debugging increased participants' understanding of the learning system by 52% and allowed participants to correct its mistakes up to twice as efficiently as participants using a traditional learning system.

Citation impact

544
total citations
FWCI
39.62
Percentile
100%
References
48
Citations per year

Authors

4

Topics & keywords

Keywords
  • Debugging
  • Computer science
  • Human–computer interaction
  • Explanatory model
  • Machine learning
  • Empirical research
  • Artificial intelligence
  • Software engineering
No related works found for this paper.