Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder

Out-of-distribution (OOD) detection, i.e., finding test samples derived from a different distribution than the training set, as well as reasoning about such samples (OOD reasoning), are necessary to ensure the safety of results generated by machine learning models. Recently there have been promising...

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Main Authors: Rahiminasab, Zahra, Yuhas, Michael, Easwaran, Arvind
Other Authors: College of Computing and Data Science
Format: Conference or Workshop Item
Language:English
Published: 2024
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Online Access:https://hdl.handle.net/10356/178684
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1786842024-07-10T03:04:42Z Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder Rahiminasab, Zahra Yuhas, Michael Easwaran, Arvind College of Computing and Data Science School of Computer Science and Engineering 2022 6th International Conference on System Reliability and Safety (ICSRS) Energy Research Institute @ NTU (ERI@N) Computer and Information Science Out-of-distribution reasoning Weakly-supervised disentanglement Out-of-distribution (OOD) detection, i.e., finding test samples derived from a different distribution than the training set, as well as reasoning about such samples (OOD reasoning), are necessary to ensure the safety of results generated by machine learning models. Recently there have been promising results for OOD detection in the latent space of variational autoencoders (VAEs). However, without disentanglement, VAEs cannot perform OOD reasoning. Disentanglement ensures a one-to-many mapping between generative factors of OOD (e.g., rain in image data) and the latent variables to which they are encoded. Although previous literature has focused on weakly-supervised disentanglement on simple datasets with known and independent generative factors. In practice, achieving full disentanglement through weak supervision is impossible for complex datasets, such as Carla, with unknown and abstract generative factors. As a result, we propose an OOD reasoning framework that learns a partially disentangled VAE to reason about complex datasets. Our framework consists of three steps: partitioning data based on observed generative factors, training a VAE as a logic tensor network that satisfies disentanglement rules, and run-time OOD reasoning. We evaluate our approach on the Carla dataset and compare the results against three state-of-the-art methods. We found that our framework outperformed these methods in terms of disentanglement and end-to-end OOD reasoning. Ministry of Education (MOE) Submitted/Accepted version This work is supported by MoE, Singapore, Tier-2 grant number MOE2019-T2-2-040. 2024-07-03T08:08:44Z 2024-07-03T08:08:44Z 2022 Conference Paper Rahiminasab, Z., Yuhas, M. & Easwaran, A. (2022). Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder. 2022 6th International Conference on System Reliability and Safety (ICSRS), 169-178. https://dx.doi.org/10.1109/ICSRS56243.2022.10067434 9781665470926 https://hdl.handle.net/10356/178684 10.1109/ICSRS56243.2022.10067434 2-s2.0-85151757683 169 178 en MOE2019- T2-2-040 10.21979/N9/0YI4HT © 2022 IEEE. All rights reserved. This article may be downloaded for personal use only. Any other use requires prior permission of the copyright holder. The Version of Record is available online at http://doi.org/10.1109/ICSRS56243.2022.10067434. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Computer and Information Science
Out-of-distribution reasoning
Weakly-supervised disentanglement
spellingShingle Computer and Information Science
Out-of-distribution reasoning
Weakly-supervised disentanglement
Rahiminasab, Zahra
Yuhas, Michael
Easwaran, Arvind
Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder
description Out-of-distribution (OOD) detection, i.e., finding test samples derived from a different distribution than the training set, as well as reasoning about such samples (OOD reasoning), are necessary to ensure the safety of results generated by machine learning models. Recently there have been promising results for OOD detection in the latent space of variational autoencoders (VAEs). However, without disentanglement, VAEs cannot perform OOD reasoning. Disentanglement ensures a one-to-many mapping between generative factors of OOD (e.g., rain in image data) and the latent variables to which they are encoded. Although previous literature has focused on weakly-supervised disentanglement on simple datasets with known and independent generative factors. In practice, achieving full disentanglement through weak supervision is impossible for complex datasets, such as Carla, with unknown and abstract generative factors. As a result, we propose an OOD reasoning framework that learns a partially disentangled VAE to reason about complex datasets. Our framework consists of three steps: partitioning data based on observed generative factors, training a VAE as a logic tensor network that satisfies disentanglement rules, and run-time OOD reasoning. We evaluate our approach on the Carla dataset and compare the results against three state-of-the-art methods. We found that our framework outperformed these methods in terms of disentanglement and end-to-end OOD reasoning.
author2 College of Computing and Data Science
author_facet College of Computing and Data Science
Rahiminasab, Zahra
Yuhas, Michael
Easwaran, Arvind
format Conference or Workshop Item
author Rahiminasab, Zahra
Yuhas, Michael
Easwaran, Arvind
author_sort Rahiminasab, Zahra
title Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder
title_short Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder
title_full Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder
title_fullStr Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder
title_full_unstemmed Out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder
title_sort out of distribution reasoning by weakly-supervised disentangled logic variational autoencoder
publishDate 2024
url https://hdl.handle.net/10356/178684
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