Compositional Explanations for Image Classifiers

03/05/2021
by   Hana Chockler, et al.
0

Existing algorithms for explaining the output of image classifiers perform poorly on inputs where the object of interest is partially occluded. We present a novel, black-box algorithm for computing explanations that uses a principled approach based on causal theory. We implement the method in the tool CET (Compositional Explanation Tool). Owing to the compositionality in its algorithm, CET computes explanations that are much more accurate than those generated by the existing explanation tools on images with occlusions and delivers a level of performance comparable to the state of the art when explaining images without occlusions.

READ FULL TEXT

page 1

page 7

research
01/22/2023

The Shape of Explanations: A Topological Account of Rule-Based Explanations in Machine Learning

Rule-based explanations provide simple reasons explaining the behavior o...
research
10/07/2021

Cartoon Explanations of Image Classifiers

We present CartoonX (Cartoon Explanation), a novel model-agnostic explan...
research
02/17/2022

GRAPHSHAP: Motif-based Explanations for Black-box Graph Classifiers

Most methods for explaining black-box classifiers (e.g., on tabular data...
research
06/30/2016

A Model Explanation System: Latest Updates and Extensions

We propose a general model explanation system (MES) for "explaining" the...
research
06/01/2021

Explanations for Monotonic Classifiers

In many classification tasks there is a requirement of monotonicity. Con...
research
11/22/2022

Explaining Image Classifiers with Multiscale Directional Image Representation

Image classifiers are known to be difficult to interpret and therefore r...
research
05/24/2023

Explaining the Uncertain: Stochastic Shapley Values for Gaussian Process Models

We present a novel approach for explaining Gaussian processes (GPs) that...

Please sign up or login with your details

Forgot password? Click here to reset