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SAED: Edge-Based Intelligence for Privacy-Preserving Enterprise Search on the Cloud

机译:SAED:基于Edge的智能,保留了隐私企业搜索云

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Cloud-based enterprise search services (e.g., AWS Kendra) have been entrancing big data owners by offering convenient and real-time search solutions to them. However, the problem is that individuals and organizations possessing confidential big data are hesitant to embrace such services due to valid data privacy concerns. In addition, to offer an intelligent search, these services access the user’s search history that further jeopardizes his/her privacy. To overcome the privacy problem, the main idea of this research is to separate the intelligence aspect of the search from its pattern matching aspect. According to this idea, the search intelligence is provided by an on-premises edge tier and the shared cloud tier only serves as an exhaustive pattern matching search utility. We propose Smartness at Edge (SAED mechanism that offers intelligence in the form of semantic and personalized search at the edge tier while maintaining privacy of the search on the cloud tier. At the edge tier, SAED uses a knowledge-based lexical database to expand the query and cover its semantics. SAED personalizes the search via an RNN model that can learn the user’s interest. A word embedding model is used to retrieve documents based on their semantic relevance to the search query. SAED is generic and can be plugged into existing enterprise search systems and enable them to offer intelligent and privacy-preserving search without enforcing any change on them. Evaluation results on two enterprise search systems under real settings and verified by human users demonstrate that SAED can improve the relevancy of the retrieved results by on average ≈24% for plain-text and ≈75% for encrypted generic datasets.
机译:基于云的企业搜索服务(例如,AWS KENDRA)通过为它们提供方便和实时搜索解决方案,一直遍历大数据所有者。然而,问题是,由于有效的数据隐私问题,拥有保密大数据的个人和组织对这些服务犹豫不决。此外,要提供智能搜索,这些服务可以访问用户的搜索历史,进一步危及他/她的隐私。为了克服隐私问题,本研究的主要思想是将搜索的智能方面与其模式匹配方面分开。根据这个想法,搜索智能由本地边缘层提供,并且共享云层仅用作穷举模式匹配搜索实用程序。我们提出了Edge的智能性(SAED机制,以边缘层的语义和个性化搜索的形式提供智能,同时维护云层上搜索的隐私。在边缘层,SAED使用基于知识的词汇数据库来扩展查询并覆盖它的语义。SAED个性化通过可了解用户的兴趣的RNN模型的搜索。一个字嵌入模型用于基于其语义相关的搜索查询,检索文档。SAED是通用的,可以插入到现有的企业搜索系统并使它们能够提供智能和隐私保留搜索,而不强制对它们进行任何更改。评估结果在真实设置下的两个企业搜索系统上,由人类用户验证,证明SAED可以平均改善检索结果的相关性的相关性≈纯文本24%,加密通用数据集的≈75%。

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