Explainable Multi-View Deep Networks Methodology for Experimental Physics
Nadav Schneider, Muriel Tzdaka, Galit Sturm, Guy Lazovski, Galit Bar,, Gilad Oren, Raz Gvishi, Gal Oren

TL;DR
This paper introduces new multi-view deep learning architectures and a methodology for explaining their decisions, specifically applied to physics experiments involving multiple imaging modalities, improving interpretability and classification accuracy.
Contribution
The paper proposes novel multi-view architectures and a methodology for explaining these models, addressing the explainability gap in multi-view deep learning for experimental physics.
Findings
Accuracy improved from 78% to 84%
AUC increased from 83% to 93%
Enhanced interpretability of multi-view models
Abstract
Physical experiments often involve multiple imaging representations, such as X-ray scans and microscopic images. Deep learning models have been widely used for supervised analysis in these experiments. Combining different image representations is frequently required to analyze and make a decision properly. Consequently, multi-view data has emerged - datasets where each sample is described by views from different angles, sources, or modalities. These problems are addressed with the concept of multi-view learning. Understanding the decision-making process of deep learning models is essential for reliable and credible analysis. Hence, many explainability methods have been devised recently. Nonetheless, there is a lack of proper explainability in multi-view models, which are challenging to explain due to their architectures. In this paper, we suggest different multi-view architectures for…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Radiomics and Machine Learning in Medical Imaging · Machine Learning in Materials Science
MethodsFocus
