Encrypted Keyword Search in Cloud Computing using Fuzzy Logic

Manisha Yadav, Drishti Gugal, Shivani Matkar, Sanket Waghmare
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引用次数: 1

Abstract

Research and Development, and information management professionals routinely employ simple keyword searches or more complex Boolean queries when using databases such as PubMed and Ovid and search engines like Google to find the information they need. While satisfying the basic needs of the researcher, basic search is limited which can adversely affect both precision and recall, decreasing productivity and damaging the researchers’ ability to discover new insights. The cloud service providers who store user’s data may access sensitive information without any proper authority. A basic approach to save the data confidentiality is to encrypt the data. Data encryption also demands the protection of keyword privacy since those usually contain very vital information related to the files. Encryption of keywords protects keyword safety. Fuzzy keyword search enhances system usability by matching the files perfectly or to the nearest possible files against the keywords entered by the user based on similar semantics. Encrypted keyword search in cloud using this logic provides the user, on entering keywords, to receive best possible files in a more secured manner, by protecting the user’s documents.
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基于模糊逻辑的云计算加密关键字搜索
研发人员和信息管理人员在使用PubMed和Ovid等数据库以及Google等搜索引擎时,通常使用简单的关键字搜索或更复杂的布尔查询来查找所需的信息。在满足研究人员的基本需求的同时,基本搜索是有限的,这可能会对准确性和召回率产生不利影响,降低生产力,损害研究人员发现新见解的能力。存储用户数据的云服务提供商可能在没有任何适当授权的情况下访问敏感信息。保存数据机密性的基本方法是对数据进行加密。数据加密还要求保护关键字隐私,因为这些关键字通常包含与文件相关的非常重要的信息。关键字加密保护关键字安全。模糊关键字搜索通过基于相似语义将文件与用户输入的关键字完美匹配或匹配到最接近的可能文件来增强系统可用性。使用此逻辑的云中的加密关键字搜索为用户提供了在输入关键字时,通过保护用户的文档,以更安全的方式接收最佳文件。
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