Erum Parkar’s research while affiliated with Symbiosis Institute of Technology and other places

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Publications (2)


Figure 2: Confusion matrix of the (A) first and (B) second deep learning models.
Figure 7: (A) First SCM; (B) Second SCM; and (C) Third SCM. SCM, structured causal model.
Different synthetic BAF tabular datasets
Layers of the second deep learning model
Layers of the first deep learning model

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Comparative study of deep learning explainability and causal ai for fraud detection
  • Article
  • Full-text available

August 2024

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2 Citations

International Journal on Smart Sensing and Intelligent Systems

Erum Parkar

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Abdullah Alamri

This study aims to compare deep learning explainability (DLE) with explainable artificial intelligence and causal artificial intelligence (Causal AI) for fraud detection, emphasizing their distinct methodologies and potential to address critical challenges, particularly in finance. An empirical evaluation was conducted using the Bank Account Fraud datasets from NeurIPS 2022. DLE models, including deep learning architectures enhanced with interpretability techniques, were compared against Causal AI models that elucidate causal relationships in the data. DLE models demonstrated high accuracy (95% for Model A and 96% for Model B) and precision (97% for Model A and 95% for Model B) but exhibited reduced recall (98% for Model A and 97% for Model B) due to opaque decision-making processes. By contrast, Causal AI models showed balanced but lower performance with accuracy, precision, and recall, all at 60%. These findings underscore the need for transparent and reliable fraud detection systems, highlighting the trade-offs between model performance and interpretability. This study addresses a significant research gap by providing a comparative analysis of DLE and Causal AI in the context of fraud detection. The insights gained offer practical recommendations for enhancing model interpretability and reliability, contributing to advancements in AI-driven fraud detection systems in the financial sector.

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Citations (1)


... Using causal discovery methods is a way to overcome this limitation as these frameworks help explicitly model cause-and-effect relations among the variables to improve the out-of-distribution generalizability. This study presents an approach based on counterfactual learning to understand the effect of various soil factors on crop yield [6][7][8]. ...

Reference:

Counterfactual Based Approaches for Feature Attributions of Stress Factors Affecting Rice Yield
Comparative study of deep learning explainability and causal ai for fraud detection

International Journal on Smart Sensing and Intelligent Systems