How does this interaction affect me? Interpretable attribution for feature interactions

Bibliographic Details
Title: How does this interaction affect me? Interpretable attribution for feature interactions
Authors: Tsang, Michael, Rambhatla, Sirisha, Liu, Yan
Publication Year: 2020
Collection: Computer Science
Statistics
Subject Terms: Statistics - Machine Learning, Computer Science - Machine Learning
More Details: Machine learning transparency calls for interpretable explanations of how inputs relate to predictions. Feature attribution is a way to analyze the impact of features on predictions. Feature interactions are the contextual dependence between features that jointly impact predictions. There are a number of methods that extract feature interactions in prediction models; however, the methods that assign attributions to interactions are either uninterpretable, model-specific, or non-axiomatic. We propose an interaction attribution and detection framework called Archipelago which addresses these problems and is also scalable in real-world settings. Our experiments on standard annotation labels indicate our approach provides significantly more interpretable explanations than comparable methods, which is important for analyzing the impact of interactions on predictions. We also provide accompanying visualizations of our approach that give new insights into deep neural networks.
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2006.10965
Accession Number: edsarx.2006.10965
Database: arXiv
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