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Main Authors: Bykov, Kirill, Höhne, Marina M. -C., Creosteanu, Adelaida, Müller, Klaus-Robert, Klauschen, Frederick, Nakajima, Shinichi, Kloft, Marius
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2108.10346
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author Bykov, Kirill
Höhne, Marina M. -C.
Creosteanu, Adelaida
Müller, Klaus-Robert
Klauschen, Frederick
Nakajima, Shinichi
Kloft, Marius
author_facet Bykov, Kirill
Höhne, Marina M. -C.
Creosteanu, Adelaida
Müller, Klaus-Robert
Klauschen, Frederick
Nakajima, Shinichi
Kloft, Marius
contents To advance the transparency of learning machines such as Deep Neural Networks (DNNs), the field of Explainable AI (XAI) was established to provide interpretations of DNNs' predictions. While different explanation techniques exist, a popular approach is given in the form of attribution maps, which illustrate, given a particular data point, the relevant patterns the model has used for making its prediction. Although Bayesian models such as Bayesian Neural Networks (BNNs) have a limited form of transparency built-in through their prior weight distribution, they lack explanations of their predictions for given instances. In this work, we take a step toward combining these two perspectives by examining how local attributions can be extended to BNNs. Within the Bayesian framework, network weights follow a probability distribution; hence, the standard point explanation extends naturally to an explanation distribution. Viewing explanations probabilistically, we aggregate and analyze multiple local attributions drawn from an approximate posterior to explore variability in explanation patterns. The diversity of explanations offers a way to further explore how predictive rationales may vary across posterior samples. Quantitative and qualitative experiments on toy and benchmark data, as well as on a real-world pathology dataset, illustrate that our framework enriches standard explanations with uncertainty information and may support the visualization of explanation stability.
format Preprint
id arxiv_https___arxiv_org_abs_2108_10346
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Explaining Bayesian Neural Networks
Bykov, Kirill
Höhne, Marina M. -C.
Creosteanu, Adelaida
Müller, Klaus-Robert
Klauschen, Frederick
Nakajima, Shinichi
Kloft, Marius
Machine Learning
Artificial Intelligence
Computer Vision and Pattern Recognition
To advance the transparency of learning machines such as Deep Neural Networks (DNNs), the field of Explainable AI (XAI) was established to provide interpretations of DNNs' predictions. While different explanation techniques exist, a popular approach is given in the form of attribution maps, which illustrate, given a particular data point, the relevant patterns the model has used for making its prediction. Although Bayesian models such as Bayesian Neural Networks (BNNs) have a limited form of transparency built-in through their prior weight distribution, they lack explanations of their predictions for given instances. In this work, we take a step toward combining these two perspectives by examining how local attributions can be extended to BNNs. Within the Bayesian framework, network weights follow a probability distribution; hence, the standard point explanation extends naturally to an explanation distribution. Viewing explanations probabilistically, we aggregate and analyze multiple local attributions drawn from an approximate posterior to explore variability in explanation patterns. The diversity of explanations offers a way to further explore how predictive rationales may vary across posterior samples. Quantitative and qualitative experiments on toy and benchmark data, as well as on a real-world pathology dataset, illustrate that our framework enriches standard explanations with uncertainty information and may support the visualization of explanation stability.
title Explaining Bayesian Neural Networks
topic Machine Learning
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2108.10346