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Data transformation for privacy-preserving data mining.

机译:用于保护隐私的数据挖掘的数据转换。

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The sharing of data is often beneficial in data mining applications. It has been proven useful to support both decision-making processes and to promote social goals. However, the sharing of data has also raised a number of ethical issues. Some such issues include those of privacy, data security, and intellectual property rights.; In this thesis, we focus primarily on privacy issues in data mining, notably when data are shared before mining. Specifically, we consider some scenarios in which applications of association rule mining and data clustering require privacy safeguards. Addressing privacy preservation in such scenarios is complex. One must not only meet privacy requirements but also guarantee valid data mining results. This status indicates the pressing need for rethinking mechanisms to enforce privacy safeguards without losing the benefit of mining. These mechanisms can lead to new privacy control methods to convert a database into a new one in such a way as to preserve the main features of the original database for mining.; In particular, we address the problem of transforming a database to be shared into a new one that conceals private information while preserving the general patterns and trends from the original database. To address this challenging problem, we propose a unified framework for privacy-preserving data mining that ensures that the mining process will not violate privacy up to a certain degree of security. The framework encompasses a family of privacy-preserving data transformation methods, a library of algorithms, retrieval facilities to speed up the transformation process, and a set of metrics to evaluate the effectiveness of the proposed algorithms, in terms of information loss, and to quantify how much private information has been disclosed.; Our investigation concludes that privacy-preserving data mining is to some extent possible. We demonstrate empirically and theoretically the practicality and feasibility of achieving privacy preservation in data mining. Our experiments reveal that our framework is effective, meets privacy requirements, and guarantees valid data mining results while protecting sensitive information (e.g., sensitive knowledge and individuals' privacy).
机译:数据共享在数据挖掘应用程序中通常是有益的。实践证明,支持决策过程和促进社会目标非常有用。但是,数据共享也引发了许多道德问题。其中一些问题包括隐私,数据安全和知识产权问题。在本文中,我们主要关注数据挖掘中的隐私问题,尤其是在挖掘之前共享数据时。具体来说,我们考虑了一些关联规则挖掘和数据聚类的应用需要隐私保护措施的情况。在这种情况下解决隐私保护问题很复杂。一个人不仅必须满足隐私要求,而且还必须保证有效的数据挖掘结果。此状态表明迫切需要重新考虑机制以实施隐私保护措施而又不失去挖掘的利益。这些机制可以导致新的隐私控制方法将数据库转换为新的隐私控制方法,从而保留原始数据库的主要特征以供挖掘。特别是,我们解决了将要共享的数据库转换为隐藏私有信息的新问题,同时保留了原始数据库的一般模式和趋势的问题。为了解决这个具有挑战性的问题,我们提出了一个用于保护隐私的数据挖掘的统一框架,该框架可确保挖掘过程在一定程度上不会破坏隐私。该框架包括一系列保护隐私的数据转换方法,算法库,加快转换过程的检索工具,以及一组用于评估所提出算法在信息丢失和量化方面的有效性的指标。公开了多少私人信息;我们的调查得出的结论是,在一定程度上可以保护隐私。我们从经验和理论上证明了在数据挖掘中实现隐私保护的实用性和可行性。我们的实验表明,我们的框架有效,符合隐私要求,并在确保有效数据挖掘结果的同时保护敏感信息(例如,敏感知识和个人隐私)。

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