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Providing Naieve Bayesian Classifier-Based Private Recommendations on Partitioned Data

机译:在分区数据上提供基于Naieve贝叶斯分类器的私有建议

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Data collected for collaborative filtering (CF) purposes might be split between various parties. Integrating such data is helpful for both e-companies and customers due to mutual advantageous. However, due to privacy reasons, data owners do not want to disclose their data. We hypothesize that if privacy measures are provided, data holders might decide to integrate their data to perform richer CF services. In this paper, we investigate how to achieve naieve Bayesian classifier (NBC)-based CF tasks on partitioned data with privacy. We perform experiments on real data, analyze our outcomes, and provide some suggestions.
机译:出于协作过滤(CF)目的而收集的数据可能会在各方之间分配。由于互惠互利,集成此类数据对电子公司和客户都有帮助。但是,由于隐私原因,数据所有者不想公开其数据。我们假设如果提供了隐私保护措施,则数据所有者可能会决定整合其数据以执行更丰富的CF服务。在本文中,我们研究了如何在具有隐私的分区数据上实现基于朴素贝叶斯分类器(NBC)的CF任务。我们对真实数据进行实验,分析结果并提供一些建议。

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