神经网络聚合方法的比较

John Pomerat, Aviv Segev
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引用次数: 0

摘要

深度学习在理论方面取得了成功。为了让深度学习在工业中取得成功,我们需要有能够处理真实数据中出现的许多不一致的算法。这些不一致会对深度学习算法的实现产生很大的影响。人工智能正在改变医疗行业。然而,获得使用医疗数据来训练机器学习算法的授权是一个巨大的障碍。一个可能的解决方案是在不共享患者信息的情况下共享数据。我们提出了一种用于深度学习算法的多方计算协议。该协议能够保护训练数据的隐私性和安全性。分析了神经网络组装的三种方法:迁移学习、平均集成学习和串联网络学习。在不同的实验中,将结果与基于数据共享的方法进行了比较。我们分析了该协议的安全问题。虽然分析是基于医疗数据,但机器学习训练多方计算的结果是理论性的,可以在多个研究领域实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Methods for Neural Network Aggregation
Deep learning has been successful in the theoretical aspect. For deep learning to succeed in industry, we need to have algorithms capable of handling many inconsistencies appearing in real data. These inconsistencies can have large effects on the implementation of a deep learning algorithm. Artificial Intelligence is currently changing the medical industry. However, receiving authorization to use medical data for training machine learning algorithms is a huge hurdle. A possible solution is sharing the data without sharing the patient information. We propose a multi-party computation protocol for the deep learning algorithm. The protocol enables to conserve both the privacy and the security of the training data. Three approaches of neural networks assembly are analyzed: transfer learning, average ensemble learning, and series network learning. The results are compared to approaches based on data-sharing in different experiments. We analyze the security issues of the proposed protocol. Although the analysis is based on medical data, the results of multi-party computation of machine learning training are theoretical and can be implemented in multiple research areas.
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