AIMEE: An Exploratory Study of How Rules Support AI Developers to Explain and Edit Models

Author:

Piorkowski David1ORCID,Vejsbjerg Inge2ORCID,Cornec Owen2ORCID,Daly Elizabeth M.2ORCID,Alkan Öznur3ORCID

Affiliation:

1. IBM Research, Yorktown Heights, NY, USA

2. IBM Research, Dublin, Ireland

3. Optum, Dublin, Ireland

Abstract

In real-world applications when deploying Machine Learning (ML) models, initial model development includes close analysis of the model results and behavior by a data scientist. Once trained, however, models may need to be retrained with new data or updated to adhere to new rules or regulations. This presents two challenges. First, how to communicate how a model is making its decisions before and after retraining, and second how to support model editing to take into account new requirements. To address these needs, we built AIMEE (AI Model Explorer and Editor), a tool created to address these challenges by providing interactive methods to explain, visualize, and modify model decision boundaries using rules. Rules should benefit model builders by providing a layer of abstraction for understanding and manipulating the model and reduces the need to modify individual rows of data directly. To evaluate if this was the case, we conducted a pair of user studies totaling 23 participants to evaluate AIMEE's rules-based approach for model explainability and editing. We found that participants correctly interpreted rules and report on their perspectives of how rules are beneficial (and not), ways that rules could support collaboration, and provide a usability evaluation of the tool.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Human-Computer Interaction,Social Sciences (miscellaneous)

Reference86 articles.

1. Peeking Inside the Black-Box: A Survey on Explainable Artificial Intelligence (XAI)

2. Oznur Alkan , Dennis Wei , Massimiliano Mattetti , Rahul Nair , Elizabeth Daly , and Diptikalyan Saha . 2022 . FROTE: Feedback Rule-Driven Oversampling for Editing Models . In Proceedings of Machine Learning and Systems 2022 , MLSys 2022, Santa Clara, CA, USA, August 29 - September 1, 2022. mlsys.org. Oznur Alkan, Dennis Wei, Massimiliano Mattetti, Rahul Nair, Elizabeth Daly, and Diptikalyan Saha. 2022. FROTE: Feedback Rule-Driven Oversampling for Editing Models. In Proceedings of Machine Learning and Systems 2022, MLSys 2022, Santa Clara, CA, USA, August 29 - September 1, 2022. mlsys.org.

3. Software Engineering for Machine Learning: A Case Study

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

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