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contributor authorElizabeth A. Barnes
contributor authorRandal J. Barnes
contributor authorZane K. Martin
contributor authorJamin K. Rader
date accessioned2023-04-12T18:52:18Z
date available2023-04-12T18:52:18Z
date copyright2022/07/01
date issued2022
identifier otherAIES-D-22-0001.1.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4290389
description abstractWe develop and demonstrate a new interpretable deep learning model specifically designed for image analysis in Earth system science applications. The neural network is designed to be inherently interpretable, rather than explained via post hoc methods. This is achieved by training the network to identify parts of training images that act as prototypes for correctly classifying unseen images. The new network architecture extends the interpretable prototype architecture of a previous study in computer science to incorporate absolute location. This is useful for Earth system science where images are typically the result of physics-based processes, and the information is often geolocated. Although the network is constrained to only learn via similarities to a small number of learned prototypes, it can be trained to exhibit only a minimal reduction in accuracy relative to noninterpretable architectures. We apply the new model to two Earth science use cases: a synthetic dataset that loosely represents atmospheric high and low pressure systems, and atmospheric reanalysis fields to identify the state of tropical convective activity associated with the Madden–Julian oscillation. In both cases, we demonstrate that considering absolute location greatly improves testing accuracies when compared with a location-agnostic method. Furthermore, the network architecture identifies specific historical dates that capture multivariate, prototypical behavior of tropical climate variability.
publisherAmerican Meteorological Society
titleThis Looks Like That There: Interpretable Neural Networks for Image Tasks When Location Matters
typeJournal Paper
journal volume1
journal issue3
journal titleArtificial Intelligence for the Earth Systems
identifier doi10.1175/AIES-D-22-0001.1
treeArtificial Intelligence for the Earth Systems:;2022:;volume( 001 ):;issue: 003
contenttypeFulltext


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