Financial fraud detection systems face significant challenges in adapting to evolving fraud patterns while maintaining high detection accuracy and minimizing false positives in dynamic financial environments. Traditional approaches rely on static models that cannot effectively capture temporal dependencies or adapt feature representations to changing fraud behaviors. The challenge lies in developing systems that can simultaneously model temporal transaction patterns and dynamically adapt feature representations to detect emerging fraud techniques while maintaining computational efficiency for real-time financial applications. This study proposes a novel Temporal and Feature-Level Adaptive Deep Learning (TFADL) framework that integrates temporal sequence modeling with dynamic feature adaptation mechanisms for enhanced financial fraud detection. The framework employs Long Short-Term Memory (LSTM) networks to capture temporal transaction patterns while utilizing adaptive feature selection and representation learning techniques to continuously adjust to evolving fraud behaviors. The integrated approach enables real-time fraud detection with continuously updated feature representations that respond to changing fraud patterns and transaction dynamics. Experimental evaluation using comprehensive financial fraud datasets demonstrates that the proposed framework achieves 44% improvement in fraud detection accuracy compared to traditional deep learning approaches. The TFADL method results in 39% better detection of novel fraud patterns and 35% reduction in false positive rates while maintaining processing speeds suitable for real-time financial transaction monitoring. The framework successfully combines temporal modeling with adaptive feature learning to provide 42% improvement in detection of sophisticated fraud schemes that exhibit complex temporal and feature-level characteristics.
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Weilun Tsai
National Cheng Kung University
Journal of Computing and Electronic Information Management
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Weilun Tsai (Fri,) studied this question.
synapsesocial.com/papers/68c1d98f54b1d3bfb60fb821 — DOI: https://doi.org/10.54097/j8gvbk95
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