Confidential Truth Finding with Multi-Party Computation (Extended Version)

Angelo Saadeh, P. Senellart, S. Bressan
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Abstract

Federated knowledge discovery and data mining are challenged to assess the trustworthiness of data originating from autonomous sources while protecting confidentiality and privacy. Truth-finding algorithms help corroborate data from disagreeing sources. For each query it receives, a truth-finding algorithm predicts a truth value of the answer, possibly updating the trustworthiness factor of each source. Few works, however, address the issues of confidentiality and privacy. We devise and present a secure secret-sharing-based multi-party computation protocol for pseudo-equality tests that are used in truth-finding algorithms to compute additions depending on a condition. The protocol guarantees confidentiality of the data and privacy of the sources. We also present variants of truth-finding algorithms that would make the computation faster when executed using secure multi-party computation. We empirically evaluate the performance of the proposed protocol on two state-of-the-art truth-finding algorithms, Cosine, and 3-Estimates, and compare them with that of the baseline plain algorithms. The results confirm that the secret-sharing-based secure multi-party algorithms are as accurate as the corresponding baselines but for proposed numerical approximations that significantly reduce the efficiency loss incurred.
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机密真相查找与多方计算(扩展版)
联邦知识发现和数据挖掘面临的挑战是评估来自自治源的数据的可信度,同时保护机密性和隐私。寻找真相的算法有助于从不一致的来源证实数据。对于它接收到的每个查询,真值查找算法预测答案的真值,可能更新每个源的可信度因子。然而,很少有作品涉及保密和隐私问题。我们设计并提出了一种安全的基于秘密共享的多方计算协议,用于伪等式测试,该协议用于根据条件计算加法的真值查找算法。该协议保证了数据的机密性和来源的隐私性。我们还介绍了查找真值算法的变体,这些算法在使用安全多方计算执行时可以使计算更快。我们对所提出的协议在两种最先进的真值查找算法(余弦和3-估计)上的性能进行了实证评估,并将它们与基线普通算法进行了比较。结果证实,基于秘密共享的安全多方算法与相应的基线一样准确,但所提出的数值近似值显着降低了所产生的效率损失。
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