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A model for privacy preserving in data mining using Soft Computing techniques

机译:使用软计算技术在数据挖掘中保护隐私的模型

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Data mining is branch of computer science that delivers valuable information hidden in large volumes of data. The success of data mining depends on the quality of data and the algorithms used to extract information. A large number of tools and techniques have been developed for the purpose. Soft Computing methods have also emerged as a powerful tool for data mining as soft computing is tolerant to uncertainty, partial truth and imprecision. It helps in achieving solutions that are low cost, robust and tractable. Neural Networks are being extensively used for analysis purposes in every field of life from business to health sectors. In the current scenario where privacy of an individual is an important issue, people are reluctant to share their confidential information. Thereby privacy preserving in data mining (PPDM) has emerged as an indistinguishable component of data mining. The aim of this paper is to propose a model that preserves the privacy of individuals without affecting the final results of the Neural Networks.
机译:数据挖掘是计算机科学的一个分支,可提供隐藏在大量数据中的有价值的信息。数据挖掘的成功取决于数据的质量和用于提取信息的算法。为此目的已经开发了许多工具和技术。由于软计算可以容忍不确定性,部分真实性和不精确性,因此软计算方法也已成为一种强大的数据挖掘工具。它有助于实现低成本,强大且易于处理的解决方案。神经网络已广泛用于从商业到卫生部门等生活各个领域的分析目的。在当前个人隐私是一个重要问题的情况下,人们不愿意共享他们的机密信息。因此,数据挖掘中的隐私保护(PPDM)已经成为数据挖掘中不可区分的组成部分。本文的目的是提出一种在不影响神经网络最终结果的前提下保护个人隐私的模型。

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