KR2024Proceedings of the 21st International Conference on Principles of Knowledge Representation and ReasoningProceedings of the 21st International Conference on Principles of Knowledge Representation and Reasoning

Hanoi, Vietnam. November 2-8, 2024.

Edited by

ISSN: 2334-1033
ISBN: 978-1-956792-05-8

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Copyright © 2024 International Joint Conferences on Artificial Intelligence Organization

Explaining Image Classifiers

  1. Hana Chockler(King's College London)
  2. Joseph Y. Halpern(Cornell University)

Keywords

  1. Explanation, abduction and diagnosis-General
  2. Reasoning about knowledge, beliefs, and other mental attitudes-General

Abstract

We focus on explaining image classifiers, taking the work of

Mothilal et al. 2021 (MMTS) as our point of departure. We observe that, although MMTS claim to be using the definition of explanation proposed by Halpern 2016, they do not quite do so. Roughly speaking, Halpern’s definition has a necessity clause and a sufficiency clause. MMTS replace the necessity clause by a requirement that, as we show, implies it. Halpern’s definition also allows agents to restrict the set of options considered.

While these difference may seem minor, as we show, they can have a nontrivial impact on explanations.

We also show that, essentially without change, Halpern’s definition can handle two issues that have proved difficult

for other approaches: explanations of absence (when, for example, an image classifier for tumors outputs “no tumor”) and explanations of rare events (such as tumors).