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首页> 外文期刊>IEEE Transactions on Parallel and Distributed Systems >Privacy Preserving Back-Propagation Neural Network Learning Made Practical with Cloud Computing
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Privacy Preserving Back-Propagation Neural Network Learning Made Practical with Cloud Computing

机译:云计算使隐私保护反向传播神经网络学习变得可行

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摘要

To improve the accuracy of learning result, in practice multiple parties may collaborate through conducting joint Back-Propagation neural network learning on the union of their respective data sets. During this process no party wants to disclose her/his private data to others. Existing schemes supporting this kind of collaborative learning are either limited in the way of data partition or just consider two parties. There lacks a solution that allows two or more parties, each with an arbitrarily partitioned data set, to collaboratively conduct the learning. This paper solves this open problem by utilizing the power of cloud computing. In our proposed scheme, each party encrypts his/her private data locally and uploads the ciphertexts into the cloud. The cloud then executes most of the operations pertaining to the learning algorithms over ciphertexts without knowing the original private data. By securely offloading the expensive operations to the cloud, we keep the computation and communication costs on each party minimal and independent to the number of participants. To support flexible operations over ciphertexts, we adopt and tailor the BGN "doubly homomorphic" encryption algorithm for the multiparty setting. Numerical analysis and experiments on commodity cloud show that our scheme is secure, efficient, and accurate.
机译:为了提高学习结果的准确性,在实践中,多方可以通过对各自数据集的并集进行联合反向传播神经网络学习来进行协作。在此过程中,任何一方都不想将自己的私人数据透露给他人。支持这种协作学习的现有方案要么在数据分区方面受到限制,要么仅考虑了两方。缺少一种解决方案,该解决方案允许两个或多个参与者(每个人都拥有任意划分的数据集)共同进行学习。本文利用云计算的功能解决了这个开放性问题。在我们提出的方案中,各方在本地加密自己的私人数据,并将密文上传到云中。然后,云在不知道原始私有数据的情况下,对密文执行与学习算法有关的大多数操作。通过将昂贵的操作安全地卸载到云中,我们使各方的计算和通信成本降至最低,并且与参与者的数量无关。为了支持对密文的灵活操作,我们为多方设置采用并定制了BGN“双重同态”加密算法。对商品云的数值分析和实验表明,该方案是安全,高效,准确的。

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