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Score Function Design for Decision Making using Conditional Kullback-Leibler Divergence

Sanghyuk LeeNew Uzbekistan University,Dept. of Computer Science,Tashkent,UzbekistanEunmi LeeCollege of General Education Kookmin University,Seoul,Korea
2024en
ABI

Аннотация

This study processes a more discriminative score function or decision measure to address current decision outcomes. Drawing from the information theory, the Kullback-Leibler(KL) divergence is enhanced with additional knowledge; specifically conditional KL divergence. A modified KL divergence is introduced alongside Bayesian theory to inform decision making. The effectiveness of the proposed score function is validated through two examples: the Korean election and car sales problem involving multi-criteria decision-making. Computational examples demonstrate that the proposed score function yields favourable results compared to existing methodologies.

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