Secure Data Contribution and Retrieval in Social Networks Using Effective Privacy Preserving Data Mining Techniques

Dharmendra Ambani, Kishor H. Atkotiya
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引用次数: 0

Abstract

Privacy Preserving Data-Mining is the major use of data- mining methods for ensuring privacy of personal information. Data-mining algorithms search for the information that is most valuable. A major aspect of Privacy Preserving Data Mining is the safeguarding of sensitive information against unauthorized access. The Secure Data Contribution Retrieval algorithm assigns a privacy policy and security is assigned depending on the application needs and compatibility. This method is capable of meeting the requirements for numerous datasets. Currently, social media sites such as Facebook, Twitter, and YouTube are quite popular. Then, the expanded attribute-based encryption methodology allows users to transfer data contents across orbit software networks. Data leakage occurs during the gathering and storage of user Orbit Software Networks in an insecure distributed or centralized system. Third, the suggested Level by Level Security Optimization and Content Visualization algorithm helps prevent privacy problems when sharing information and visualizing data. They use privacy levels at the individual level following the assessment of the privacy compatibility of orbit software networks application. Experimental analysis employs the data from social datasets.
基于有效隐私保护数据挖掘技术的社交网络安全数据贡献与检索
隐私保护数据挖掘是数据挖掘方法在保护个人信息隐私方面的主要应用。数据挖掘算法搜索最有价值的信息。隐私保护数据挖掘的一个主要方面是保护敏感信息免受未经授权的访问。安全数据贡献检索算法根据应用程序的需要和兼容性分配隐私策略和安全性。该方法能够满足大量数据集的需求。目前,Facebook、Twitter、YouTube等社交媒体网站非常受欢迎。然后,扩展的基于属性的加密方法允许用户跨轨道软件网络传输数据内容。用户轨道软件网络在不安全的分布式或集中式系统中采集和存储数据时,会发生数据泄露。第三,建议的逐级安全优化和内容可视化算法有助于防止信息共享和数据可视化时的隐私问题。他们在评估轨道软件网络应用程序的隐私兼容性后,在个人层面使用隐私级别。实验分析采用来自社会数据集的数据。
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