Why-oriented end-user debugging of naive Bayes text classification

Kulesza, T., Stumpf, S. , Wong, W.-K., Burnett, M. M., Perona, S., Ko, A. J. and Oberst, I. (2011) Why-oriented end-user debugging of naive Bayes text classification. ACM Transactions on Interactive Intelligent Systems, 1(1), 2. (doi: 10.1145/2030365.2030367)

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Abstract

Machine learning techniques are increasingly used in intelligent assistants, that is, software targeted at and continuously adapting to assist end users with email, shopping, and other tasks. Examples include desktop SPAM filters, recommender systems, and handwriting recognition. Fixing such intelligent assistants when they learn incorrect behavior, however, has received only limited attention. To directly support end-user “debugging” of assistant behaviors learned via statistical machine learning, we present a Why-oriented approach which allows users to ask questions about how the assistant made its predictions, provides answers to these “why” questions, and allows users to interactively change these answers to debug the assistant's current and future predictions. To understand the strengths and weaknesses of this approach, we then conducted an exploratory study to investigate barriers that participants could encounter when debugging an intelligent assistant using our approach, and the information those participants requested to overcome these barriers. To help ensure the inclusiveness of our approach, we also explored how gender differences played a role in understanding barriers and information needs. We then used these results to consider opportunities for Why-oriented approaches to address user barriers and information needs.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Stumpf, Dr Simone
Authors: Kulesza, T., Stumpf, S., Wong, W.-K., Burnett, M. M., Perona, S., Ko, A. J., and Oberst, I.
College/School:College of Science and Engineering > School of Computing Science
Journal Name:ACM Transactions on Interactive Intelligent Systems
Publisher:Association for Computing Machinery
ISSN:2160-6455
ISSN (Online):2160-6463

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