Fast, formal, local eXplainable artificial intelligence for neural network

The impact of artificial intelligence has transformed our daily lives, enabling us to complete tasks with ease. However, its application in critical areas such as autonomous vehicles, healthcare, and finance presents safety concerns. The lack of transparency in AI, functioning as a black box, leaves...

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Main Author: Wong, Laurentius Reynald
Other Authors: Thomas Peyrin
Format: Final Year Project
Language:English
Published: Nanyang Technological University 2024
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Online Access:https://hdl.handle.net/10356/176177
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1761772024-05-18T16:52:32Z Fast, formal, local eXplainable artificial intelligence for neural network Wong, Laurentius Reynald Thomas Peyrin Xie Ming School of Mechanical and Aerospace Engineering mmxie@ntu.edu.sg, thomas.peyrin@ntu.edu.sg Engineering The impact of artificial intelligence has transformed our daily lives, enabling us to complete tasks with ease. However, its application in critical areas such as autonomous vehicles, healthcare, and finance presents safety concerns. The lack of transparency in AI, functioning as a black box, leaves users with uncertainties and questions. This final year project builds upon the framework of Truth Table Net (TTNet), a novel rule-based model trained by a deep Convolutional Neural Network. TTNet currently provides global, formal interpretations of a model, which offer valuable insights into the overall model behavior. However, in many scenarios, local interpretations are preferred as they provide detailed explanations. The focus of this final year project is to develop a framework, V, that automates the computation of local interpretations for TTNet. Specifically, the project aims to generate contrastive explanations (CXP) and abductive explanations (AXP). V is then tested on several tabular datasets, including adult, breast cancer, mushroom, spambase, and diabetes datasets. In the experiments, V demonstrated promising results, exhibiting very low inference times across all datasets. This suggests that the methodologies used to create V can be implemented in various industries requiring formal verification. Additionally, limitations and potential future work are discussed. Bachelor's degree 2024-05-14T02:28:29Z 2024-05-14T02:28:29Z 2024 Final Year Project (FYP) Wong, L. R. (2024). Fast, formal, local eXplainable artificial intelligence for neural network. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/176177 https://hdl.handle.net/10356/176177 en application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
spellingShingle Engineering
Wong, Laurentius Reynald
Fast, formal, local eXplainable artificial intelligence for neural network
description The impact of artificial intelligence has transformed our daily lives, enabling us to complete tasks with ease. However, its application in critical areas such as autonomous vehicles, healthcare, and finance presents safety concerns. The lack of transparency in AI, functioning as a black box, leaves users with uncertainties and questions. This final year project builds upon the framework of Truth Table Net (TTNet), a novel rule-based model trained by a deep Convolutional Neural Network. TTNet currently provides global, formal interpretations of a model, which offer valuable insights into the overall model behavior. However, in many scenarios, local interpretations are preferred as they provide detailed explanations. The focus of this final year project is to develop a framework, V, that automates the computation of local interpretations for TTNet. Specifically, the project aims to generate contrastive explanations (CXP) and abductive explanations (AXP). V is then tested on several tabular datasets, including adult, breast cancer, mushroom, spambase, and diabetes datasets. In the experiments, V demonstrated promising results, exhibiting very low inference times across all datasets. This suggests that the methodologies used to create V can be implemented in various industries requiring formal verification. Additionally, limitations and potential future work are discussed.
author2 Thomas Peyrin
author_facet Thomas Peyrin
Wong, Laurentius Reynald
format Final Year Project
author Wong, Laurentius Reynald
author_sort Wong, Laurentius Reynald
title Fast, formal, local eXplainable artificial intelligence for neural network
title_short Fast, formal, local eXplainable artificial intelligence for neural network
title_full Fast, formal, local eXplainable artificial intelligence for neural network
title_fullStr Fast, formal, local eXplainable artificial intelligence for neural network
title_full_unstemmed Fast, formal, local eXplainable artificial intelligence for neural network
title_sort fast, formal, local explainable artificial intelligence for neural network
publisher Nanyang Technological University
publishDate 2024
url https://hdl.handle.net/10356/176177
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