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Privacy Preserving Data Mining: A Parametric Analysis

机译:隐私保留数据挖掘:参数分析

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摘要

With technological revolution, a huge amount of data is being collected and as a consequence the need of mining knowledge from this data is triggered. But, data in its raw form comprises of sensitive information and advances in data mining techniques have increased the privacy breach. However, due to socio-technical transformations, most countries have levied the guidelines and policies for publishing certain data. As a result, a new area known as Privacy Preserving Data Mining (PPDM) has emerged. The goal of PPDM is to extract valuable information from data while retaining privacy of this data. The paper focuses on exploring PPDM in different aspects, such as types of privacy, PPDM scenarios and applications, methods of evaluating PPDM algorithms etc. Also, the paper shows parametric analysis and comparison of different PPDM techniques. The goal of this study is to facilitate better understanding of these PPDM techniques and boost fruitful research in this direction.
机译:通过技术革命,正在收集大量数据,因此触发了从该数据中采矿知识的需要。 但是,其原始形式的数据包括敏感信息和数据挖掘技术的进步增加了隐私违规行为。 但是,由于社会技术转型,大多数国家已征收出版某些数据的指导方针和政策。 结果,已经出现了一种新的区域,其被认为是保留数据挖掘(PPDM)的新区域。 PPDM的目标是从数据中提取有价值的信息,同时保留此数据的隐私。 本文侧重于在不同方面探索PPDM,例如隐私类型,PPDM情景和应用,评估PPDM算法等的方法。还,本文显示了不同PPDM技术的参数分析和比较。 本研究的目标是促进对这些PPDM技术的更好理解,并在此方向上提高富有成效的研究。

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