2021
DOI: 10.48550/arxiv.2107.08808
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A Data-driven Explainable Case-based Reasoning Approach for Financial Risk Detection

Abstract: The rapid development of artificial intelligence methods contributes to their wide applications for forecasting various financial risks in recent years. This study introduces a novel explainable case-based reasoning (CBR) approach without a requirement of rich expertise in financial risk. Compared with other black-box algorithms, the explainable CBR system allows a natural economic interpretation of results. Indeed, the empirical results emphasize the interpretability of the CBR system in predicting financial … Show more

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References 66 publications
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