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A local asynchronous distributed privacy preserving feature selection algorithm for large peer-to-peer networks

机译:大型对等网络的本地异步分布式隐私保护特征选择算法

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摘要

In this paper we develop a local distributed privacy preserving algorithm for feature selection in a large peer-to-peer environment. Feature selection is often used in machine learning for data compaction and efficient learning by eliminating the curse of dimensionality. There exist many solutions for feature selection when the data are located at a central location. However, it becomes extremely challenging to perform the same when the data are distributed across a large number of peers or machines. Centralizing the entire dataset or portions of it can be very costly and impractical because of the large number of data sources, the asynchronous nature of the peer-to-peer networks, dynamic nature of the dataetwork, and privacy concerns. The solution proposed in this paper allows us to perform feature selection in an asynchronous fashion with a low communication overhead where each peer can specify its own privacy constraints. The algorithm works based on local interactions among participating nodes. We present results on real-world dataset in order to test the performance of the proposed algorithm.
机译:在本文中,我们开发了用于大型对等环境中的特征选择的本地分布式隐私保护算法。通过消除维数的诅咒,特征选择通常用于机器学习中以进行数据压缩和有效学习。当数据位于中心位置时,存在许多用于特征选择的解决方案。但是,当数据分布在大量对等设备或计算机上时,执行相同的操作变得非常具有挑战性。由于大量的数据源,对等网络的异步特性,数据/网络的动态特性以及隐私问题,集中整个数据集或其一部分可能非常昂贵且不切实际。本文提出的解决方案使我们能够以低通信开销的异步方式执行特征选择,其中每个对等方都可以指定自己的隐私约束。该算法基于参与节点之间的局部交互作用而工作。为了测试所提出算法的性能,我们在真实数据集上展示了结果。

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