CONTRASTIVE EXPLANATIONS IN NEURAL NETWORKS
Mohit Prabhushankar, Gukyeong Kwon, Dogancan Temel, Ghassan AlRegib
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 15:06
Visual explanations are logical arguments based on visual features that justify the predictions made by neural networks. Current modes of visual explanations answer questions of the form `Why P?'. These Why questions operate under broad contexts thereby providing answers that are irrelevant in some cases. We propose to constrain these \emph{Why} questions based on some context $Q$ so that our explanations answer contrastive questions of the form `Why P, rather than Q?'. In this paper, we formalize the structure of contrastive visual explanations for neural networks. We define contrast based on neural networks and propose a methodology to extract defined contrasts. We then use the extracted contrasts as a plug-in on top of existing `Why P?' techniques, specifically Grad-CAM. We demonstrate their value in analyzing both networks and data in applications of large-scale recognition, fine-grained recognition, subsurface seismic analysis, and image quality assessment.