Smart interpretable model (SIM) enabling subject matter experts in rule generation
Current Artificial Intelligence (AI) technologies are widely regarded as black boxes, whose internal structures are not inherently transparent, even though they provide powerful prediction capabilities. Having a transparent model that enables users to understand its inner workings allows them to app...
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sg-ntu-dr.10356-1632192022-11-29T02:29:39Z Smart interpretable model (SIM) enabling subject matter experts in rule generation Christianto, Hotman Lee, Gary Kee Khoon Zhou, Jair Weigui Kasim, Henry Rajan, Deepu School of Computer Science and Engineering Rolls-Royce@NTU Corporate Lab Engineering::Computer science and engineering Interpretability Rule Generation and Selection Current Artificial Intelligence (AI) technologies are widely regarded as black boxes, whose internal structures are not inherently transparent, even though they provide powerful prediction capabilities. Having a transparent model that enables users to understand its inner workings allows them to appreciate the learning and inference process, leading to trust and higher confidence in the model. While methods that help with interpretability have been created, most of them require the user to have a certain level of AI knowledge and do not allow a user to fine-tune them based on prior knowledge. In this paper, we present a smart interpretable model (SIM) framework that requires little to no AI knowledge and can be used to create a set of fuzzy IF-THEN rules along with its corresponding membership functions at ease. The framework also allows users to incorporate prior knowledge during various steps in the framework and generates comprehensive insights summarized from rules and samples, allowing users to identify anomalous rules, feature contributions of each sample and confidence level for each rule. We demonstrate these capabilities and compare our model to other existing rule-based models using various datasets that have been used for rule-based model validations. Validations are then done in terms of performance and whether the rules that are generated by SIM are similar to the rules generated by other more recent rule-based models. This study is supported under the RIE2020 Industry Alignment Fund – Industry Collaboration Projects (IAF-ICP) Funding Initiative, as well as cash and in-kind contribution from Rolls-Royce Singapore Pte Ltd. 2022-11-29T02:29:39Z 2022-11-29T02:29:39Z 2022 Journal Article Christianto, H., Lee, G. K. K., Zhou, J. W., Kasim, H. & Rajan, D. (2022). Smart interpretable model (SIM) enabling subject matter experts in rule generation. Expert Systems With Applications, 207, 117945-. https://dx.doi.org/10.1016/j.eswa.2022.117945 0957-4174 https://hdl.handle.net/10356/163219 10.1016/j.eswa.2022.117945 2-s2.0-85133226329 207 117945 en Expert Systems with Applications © 2022 Elsevier Ltd. All rights reserved. |
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Engineering::Computer science and engineering Interpretability Rule Generation and Selection Christianto, Hotman Lee, Gary Kee Khoon Zhou, Jair Weigui Kasim, Henry Rajan, Deepu Smart interpretable model (SIM) enabling subject matter experts in rule generation |
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Current Artificial Intelligence (AI) technologies are widely regarded as black boxes, whose internal structures are not inherently transparent, even though they provide powerful prediction capabilities. Having a transparent model that enables users to understand its inner workings allows them to appreciate the learning and inference process, leading to trust and higher confidence in the model. While methods that help with interpretability have been created, most of them require the user to have a certain level of AI knowledge and do not allow a user to fine-tune them based on prior knowledge. In this paper, we present a smart interpretable model (SIM) framework that requires little to no AI knowledge and can be used to create a set of fuzzy IF-THEN rules along with its corresponding membership functions at ease. The framework also allows users to incorporate prior knowledge during various steps in the framework and generates comprehensive insights summarized from rules and samples, allowing users to identify anomalous rules, feature contributions of each sample and confidence level for each rule. We demonstrate these capabilities and compare our model to other existing rule-based models using various datasets that have been used for rule-based model validations. Validations are then done in terms of performance and whether the rules that are generated by SIM are similar to the rules generated by other more recent rule-based models. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Christianto, Hotman Lee, Gary Kee Khoon Zhou, Jair Weigui Kasim, Henry Rajan, Deepu |
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Article |
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Christianto, Hotman Lee, Gary Kee Khoon Zhou, Jair Weigui Kasim, Henry Rajan, Deepu |
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Christianto, Hotman |
title |
Smart interpretable model (SIM) enabling subject matter experts in rule generation |
title_short |
Smart interpretable model (SIM) enabling subject matter experts in rule generation |
title_full |
Smart interpretable model (SIM) enabling subject matter experts in rule generation |
title_fullStr |
Smart interpretable model (SIM) enabling subject matter experts in rule generation |
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Smart interpretable model (SIM) enabling subject matter experts in rule generation |
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smart interpretable model (sim) enabling subject matter experts in rule generation |
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2022 |
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https://hdl.handle.net/10356/163219 |
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1751548506704707584 |