LGAICYHCMLSep 13, 2019

Explainable Machine Learning in Deployment

arXiv:1909.06342v4685 citations
AI Analysis

This research addresses the gap between explainability techniques and their practical application for stakeholders, though it is incremental in synthesizing existing limitations.

The study investigated how organizations use explainable machine learning in practice, finding that most deployments are for internal debugging by engineers rather than for end users, highlighting a gap with transparency goals.

Explainable machine learning offers the potential to provide stakeholders with insights into model behavior by using various methods such as feature importance scores, counterfactual explanations, or influential training data. Yet there is little understanding of how organizations use these methods in practice. This study explores how organizations view and use explainability for stakeholder consumption. We find that, currently, the majority of deployments are not for end users affected by the model but rather for machine learning engineers, who use explainability to debug the model itself. There is thus a gap between explainability in practice and the goal of transparency, since explanations primarily serve internal stakeholders rather than external ones. Our study synthesizes the limitations of current explainability techniques that hamper their use for end users. To facilitate end user interaction, we develop a framework for establishing clear goals for explainability. We end by discussing concerns raised regarding explainability.

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