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Privacy preservation in distributed data mining for protein secondary structure prediction

机译:用于蛋白质二级结构预测的分布式数据挖掘中的隐私保护

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Data mining deals with the theory of knowledge discovery or gaining meaningful information from a dataset. The gaining of meaningful information may vary from subject to subject and person to person as per the requirement of the situation. Data sharing and information sharing among two or more parties or upon a common platform or upon a common cluster always needs special priority and special attention regarding the security issue as well as getting the exact information in the exact place. Privacy preservation deals with the security issue upon a distributed platform or upon a common sharing platform. So in a distributed data mining upon which data shared, needs special priority regarding the privacy and security of the information. Proteins are the large biological molecule in a living body which contains number of amino acid sequence. Protein secondary structure prediction is the prediction of the three dimensional structure of the amino acid sequences which are generally changed from time to time by the effect of external agents or by the applications of different type of drugs. So when this type of research data are shared upon a common platform to gain knowledge by different researchers for different drug design it needs some special attention and some special security. In this paper we have proposed a technique for the privacy preservation of the genomic data sharing or the secondary structure sharing when these are takes place upon a common platform. This technique will provide a better security for different researcher from different place of this Globe when they are sharing the data in a distributed platform with a common intention.
机译:数据挖掘处理知识发现理论或从数据集中获取有意义的信息。根据情况的要求,获取有意义的信息可能因主体而异,因人而异。在两个或多个参与方之间或在一个公共平台上或在一个公共群集上的数据共享和信息共享始终需要特别优先级和特别注意的安全问题,以及在正确的位置获取准确的信息。隐私保护在分布式平台或公共共享平台上处理安全问题。因此,在共享数据的分布式数据挖掘中,需要关于信息的隐私和安全性的特殊优先级。蛋白质是生物体内的大型生物分子,其中包含许多氨基酸序列。蛋白质二级结构预测是对氨基酸序列的三维结构的预测,这些氨基酸序列通常会由于外部因素的影响或通过使用不同类型的药物而时不时发生变化。因此,当在一个通用平台上共享这种类型的研究数据,以使不同的研究人员获得不同的药物设计知识时,就需要特别注意和特别安全。在本文中,我们提出了一种在基因组数据共享或二级结构共享发生在公共平台上时进行隐私保护的技术。当来自全球各地的研究人员出于共同的目的在分布式平台中共享数据时,该技术将为他们提供更好的安全性。

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