2023
DOI: 10.1142/s0218539323410036
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An Efficient Multi-Class Privacy-Preserving-Based Encryption Framework for Large Distributed Databases

Abstract: This paper introduces a novel hybrid filter-based ensemble multi-class classification model for distributed privacy-preserving applications. The conventional privacy-preserving multi-class learning models have limited capacity to enhance the true positive rate, mainly due to computational time and memory constraints, as well as the static nature of metrics for parameter optimization and multi-class perturbation processes. In this research, we develop the proposed model on large medical and market databases wit… Show more

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