LEP-QNN: Loan Eligibility Prediction Using Quantum Neural Networks
- URL: http://arxiv.org/abs/2412.03158v1
- Date: Wed, 04 Dec 2024 09:35:03 GMT
- Title: LEP-QNN: Loan Eligibility Prediction Using Quantum Neural Networks
- Authors: Nouhaila Innan, Alberto Marchisio, Mohamed Bennai, Muhammad Shafique,
- Abstract summary: We propose a novel approach that employs Quantum Machine Learning (QML) for Loan Eligibility Prediction using Quantum Neural Networks (LEP-QNN)
Our innovative approach achieves an accuracy of 98% in predicting loan eligibility from a single, comprehensive dataset.
This research showcases the potential of QML in financial predictions and establishes a foundational guide for advancing QML technologies.
- Score: 4.2435928520499635
- License:
- Abstract: Predicting loan eligibility with high accuracy remains a significant challenge in the finance sector. Accurate predictions enable financial institutions to make informed decisions, mitigate risks, and effectively adapt services to meet customer needs. However, the complexity and the high-dimensional nature of financial data have always posed significant challenges to achieving this level of precision. To overcome these issues, we propose a novel approach that employs Quantum Machine Learning (QML) for Loan Eligibility Prediction using Quantum Neural Networks (LEP-QNN).Our innovative approach achieves an accuracy of 98% in predicting loan eligibility from a single, comprehensive dataset. This performance boost is attributed to the strategic implementation of a dropout mechanism within the quantum circuit, aimed at minimizing overfitting and thereby improving the model's predictive reliability. In addition, our exploration of various optimizers leads to identifying the most efficient setup for our LEP-QNN framework, optimizing its performance. We also rigorously evaluate the resilience of LEP-QNN under different quantum noise scenarios, ensuring its robustness and dependability for quantum computing environments. This research showcases the potential of QML in financial predictions and establishes a foundational guide for advancing QML technologies, marking a step towards developing advanced, quantum-driven financial decision-making tools.
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