LIMEADE: From AI Explanations to Advice Taking

Author:

Lee Benjamin Charles Germain1ORCID,Downey Doug2ORCID,Lo Kyle3ORCID,Weld Daniel S.1ORCID

Affiliation:

1. University of Washington & Allen Institute for Artificial Intelligence, USA

2. Northwestern University & Allen Institute for Artificial Intelligence, USA

3. Allen Institute for Artificial Intelligence, USA

Abstract

Research in human-centered AI has shown the benefits of systems that can explain their predictions. Methods that allow AI to take advice from humans in response to explanations are similarly useful. While both capabilities are well developed for transparent learning models (e.g., linear models and GA 2 Ms) and recent techniques (e.g., LIME and SHAP) can generate explanations for opaque models, little attention has been given to advice methods for opaque models. This article introduces LIMEADE, the first general framework that translates both positive and negative advice (expressed using high-level vocabulary such as that employed by post hoc explanations) into an update to an arbitrary, underlying opaque model. We demonstrate the generality of our approach with case studies on 70 real-world models across two broad domains: image classification and text recommendation. We show that our method improves accuracy compared to a rigorous baseline on the image classification domains. For the text modality, we apply our framework to a neural recommender system for scientific papers on a public website; our user study shows that our framework leads to significantly higher perceived user control, trust, and satisfaction.

Funder

National Science Foundation Graduate Research Fellowship

WRF/Cable Professorship, and the Allen Institute for Artificial Intelligence

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Human-Computer Interaction

Reference91 articles.

1. Jae-wook Ahn, Peter Brusilovsky, Jonathan Grady, Daqing He, and Sue Yeon Syn. 2007. Open user profiles for adaptive news systems: Help or harm? In Proceedings of the 16th International Conference on World Wide Web (WWW’07). ACM, New York, NY, 11–20. 10.1145/1242572.1242575

2. Jae-wook Ahn, Peter Brusilovsky, and Shuguang Han. 2015. Personalized search: Reconsidering the value of open user models. In Proceedings of the 20th International Conference on Intelligent User Interfaces (IUI’15). ACM, New York, NY, 202–212. 10.1145/2678025.2701410

3. Zeynep Akata, Scott Reed, Daniel Walter, Honglak Lee, and Bernt Schiele. 2015. Evaluation of output embeddings for fine-grained image classification. In 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR’15). 2927–2936. 10.1109/CVPR.2015.7298911

4. Power to the People: The Role of Humans in Interactive Machine Learning

5. Saleema Amershi, James Fogarty, and Daniel Weld. 2012. Regroup: Interactive machine learning for on-demand group creation in social networks. In Proceedings of the SIGCHI Conference on Human Factors in Computing Systems (CHI’12). ACM, New York, NY, 21–30. 10.1145/2207676.2207680

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