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Distributed privacy-preserving P2P data mining via probabilistic neural network committee machines

机译:通过概率神经网络委员会的分布式隐私保留P2P数据挖掘

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This work describes a probabilistic neural network (PNN) committee machine for Peer-to-Peer data mining. The pattern neurons of the PNN committee are composed of locally trained class-specialized regularization network Peer classifiers. The training takes into account the asynchronous distributed and privacy-preserving requirements that can be met in P2P systems. The Peer classifiers are first trained in parallel based on their local data. While no local data exchange is possible among them, the peers can exchange their classifiers in the form of binaries, or agents. Then an asynchronous distributed computing P2P cycle is executed to construct a mutual validation matrix. The train set of one Peer becomes the validation set of the other and only average rates are returned back. From this matrix we demonstrate that it is possible to perform weight based ensemble selection of best peer members for every class and in this way to find class-specialized Peer modules for the committee machine.
机译:这项工作描述了一个概率神经网络(PNN)委员会机器,用于对等数据挖掘。 PNN委员会的图案神经元由本地培训的类专用正则化网络对等分类器组成。该培训考虑了可以在P2P系统中满足的异步分布式和隐私保留要求。对等分类器首先基于其本地数据并行培训。虽然它们中间没有可能,但对等体可以以二进制文件或代理商的形式交换他们的分类器。然后执行异步分布式计算P2P周期以构造相互验证矩阵。一个对等体的列车组成为另一个对等体的验证集,只回来了平均速率。从该矩阵中,我们证明可以为每个类执行基于权重的合奏选择最佳的对等成员,并以这种方式找到委员会机器的类专用对等模块。

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