Towards explainable artificial intelligence in the banking sector
This research addresses the imperative need for Explainable AI (XAI) tools tailored to the banking industry, where widespread adoption of AI has led to escalating demands for explainable and transparent models. The methodology involves the implementation of a user-centric system using the DASH frame...
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2024
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sg-ntu-dr.10356-1750852024-04-19T15:42:12Z Towards explainable artificial intelligence in the banking sector Jew, Clarissa Bella Lee Bu Sung, Francis School of Computer Science and Engineering Development Bank of Singapore EBSLEE@ntu.edu.sg Computer and Information Science XAI SHAP LIME Explainable AI Banking This research addresses the imperative need for Explainable AI (XAI) tools tailored to the banking industry, where widespread adoption of AI has led to escalating demands for explainable and transparent models. The methodology involves the implementation of a user-centric system using the DASH framework and introduces a novel approach of integrating two XAI techniques, SP-LIME and SHAP, with the aim of capitalizing on the strengths of each tool. Notably, the system is developed to reduce the time and effort required for users to understand XAI outputs which is a persistent challenge in the current XAI landscape. This research emphasizes a user-friendly approach, with a meticulous design that strives to ensure understandability and avoiding information overload. Drawing upon the capabilities of language generation models, the system goes beyond current XAI outputs by generating text-readable explanations, establishing a crucial link for users which was absent before. Preliminary survey findings indicate a positive response from respondents, affirming the viability of incorporating such technologies in the system. Several prompt engineering techniques were explored in the development of prompts to optimize the effectiveness of the generated explanations. Another distinctive feature of this research lies in the usage of perturbed samples to compute quantitative metrics, enhancing the reliability of XAI output, thereby fostering trust among users. This addresses a significant concern prevalent in current practical implementations of XAI, where the lack of such measures lead users to question the reliability of the output, thereby undermining the effectiveness of such tools. Overall, this research contributes to the ongoing efforts to bridge the gap between complex models and stakeholders in the banking sector by enhancing the comprehensibility and usability of XAI tools. Bachelor's degree 2024-04-19T04:38:07Z 2024-04-19T04:38:07Z 2024 Final Year Project (FYP) Jew, C. B. (2024). Towards explainable artificial intelligence in the banking sector. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175085 https://hdl.handle.net/10356/175085 en SCSE23-0776 application/pdf Nanyang Technological University |
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Computer and Information Science XAI SHAP LIME Explainable AI Banking Jew, Clarissa Bella Towards explainable artificial intelligence in the banking sector |
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This research addresses the imperative need for Explainable AI (XAI) tools tailored to the banking industry, where widespread adoption of AI has led to escalating demands for explainable and transparent models. The methodology involves the implementation of a user-centric system using the DASH framework and introduces a novel approach of integrating two XAI techniques, SP-LIME and SHAP, with the aim of capitalizing on the strengths of each tool.
Notably, the system is developed to reduce the time and effort required for users to understand XAI outputs which is a persistent challenge in the current XAI landscape. This research emphasizes a user-friendly approach, with a meticulous design that strives to ensure understandability and avoiding information overload.
Drawing upon the capabilities of language generation models, the system goes beyond current XAI outputs by generating text-readable explanations, establishing a crucial link for users which was absent before. Preliminary survey findings indicate a positive response from respondents, affirming the viability of incorporating such technologies in the system. Several prompt engineering techniques were explored in the development of prompts to optimize the effectiveness of the generated explanations.
Another distinctive feature of this research lies in the usage of perturbed samples to compute quantitative metrics, enhancing the reliability of XAI output, thereby fostering trust among users. This addresses a significant concern prevalent in current practical implementations of XAI, where the lack of such measures lead users to question the reliability of the output, thereby undermining the effectiveness of such tools.
Overall, this research contributes to the ongoing efforts to bridge the gap between complex models and stakeholders in the banking sector by enhancing the comprehensibility and usability of XAI tools. |
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Lee Bu Sung, Francis |
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Lee Bu Sung, Francis Jew, Clarissa Bella |
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Final Year Project |
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Jew, Clarissa Bella |
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Jew, Clarissa Bella |
title |
Towards explainable artificial intelligence in the banking sector |
title_short |
Towards explainable artificial intelligence in the banking sector |
title_full |
Towards explainable artificial intelligence in the banking sector |
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Towards explainable artificial intelligence in the banking sector |
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Towards explainable artificial intelligence in the banking sector |
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towards explainable artificial intelligence in the banking sector |
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Nanyang Technological University |
publishDate |
2024 |
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https://hdl.handle.net/10356/175085 |
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1814047303601750016 |