2021
DOI: 10.48550/arxiv.2110.15866
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Towards Comparative Physical Interpretation of Spatial Variability Aware Neural Networks: A Summary of Results

Abstract: Given Spatial Variability Aware Neural Networks (SVANNs), the goal is to investigate mathematical (or computational) models for comparative physical interpretation towards their transparency (e.g., simulatibility, decomposability and algorithmic transparency). This problem is important due to important use-cases such as reusability, debugging, and explainability to a jury in a court of law. Challenges include a large number of model parameters, vacuous bounds on generalization performance of neural networks, r… Show more

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