SLGP Header

Effective Cloud Search Based on Multi Keyword Ranked Over Encrypted Cloud Data

IJCSEC Front Page

Abstract
In recent years, consumer-centric cloud computing paradigm has emerged as the development of smart electronic devices combined with the emerging cloud computing technologies. A variety of cloud services are delivered to the consumers with the premise that an effective and efficient cloud search service is achieved. For consumers, they want to find the most relevant products or data, which is highly desirable in the “pay-as-you use” cloud computing paradigm. As sensitive data (such as photo albums, emails, personal health records, financial records, etc.) are encrypted before outsourcing to cloud, traditional keyword search techniques are useless. Meanwhile, existing search approaches over encrypted cloud data support only exact or fuzzy keyword search, but not semantics-based multi-keyword ranked search. Therefore, how to enable an effective searchable system with support of ranked search remains a very challenging problem. This paper proposes an effective approach to solve the problem of multi-keyword ranked search over encrypted cloud data supporting synonym queries. The main contribution of this paper is summarized in two aspects: multi-keyword ranked search to achieve more accurate search results and synonym-based search to support synonym queries. The ranked search enables cloud customers to find the most relevant information quickly. Ranked search can also reduce network traffic as the cloud server sends back only the most relevant data. Multikeyword search is also very important to improve search result accuracy as single keyword search often return coarse search results. To meet the challenge of effective search system, this paper proposes a practically efficient and flexible searchable scheme which supports both multi-keyword ranked search and synonym-based search. To address multi-keyword search and result ranking, Vector Space Model (VSM) (says database,) is used to build document index, that is to say, each document is expressed as a vector where each dimension value is the Term Frequency (TF) weight of its corresponding keyword. The contributions of this paper are summarized as follows: For the first time, a semantics-based multi-keyword ranked search technology over encrypted cloud data which supports synonym queries is proposed. The search results can be achieved when authorized cloud customers input the synonyms of the predefined keywords, not the exact or fuzzy matching keywords, due to the possible synonym substitution and/or her lack of exact knowledge about the data. Extensive experiments on the real-world dataset further show the effectiveness and efficiency of proposed solution.
Index Terms: : Cloud computing, Consumer centric cloud, Multi-keyword ranked search, synonym based search.
I.Introduction
In recent years, many consumer electronic devices (e.g. Smartphone) with support of high speed computing combined with the emerging cloud computing paradigm provide a variety of service to the consumers. A novel middleware architecture that allows sessions initiated from one device to be seamlessly transferred to a second one under a cloud computing environment. Cloud computing middleware Media Cloud for set top boxes for classifying, searching, and delivering media inside home network and across the cloud. A personalized DTV program recommendation system under a cloud computing environment. The system can analyze and use the viewing pattern of consumers to personalize the program recommendations. However, all these services are likely to be available to consumers only with the premise that an effective and efficient cloud search service is achieved. Consumers want to find the most relevant products or data, which is highly desirable in the ”pay-as-you use” cloud computing paradigm.

References:

  1. Cao.N et al (2011), “Privacy-preserving multi-keyword ranked search over encrypted cloud data,” Proceedings of IEEE INFOCOM 2011, pp. 829-837.
  2. Grzonkowski.S, and Corcoran.P.M (2010) “Sharing cloud services: user authentication for social enhancement of home networking,” IEEE Trans.Consumer Electron., vol. 57, no. 3, pp. 1424-1432.
  3. Lee.S.G et al (2010), “Personalized DTV program recommendation system under a kcloud computing environment,” IEEE Trans. Consumer Electron., vol. 56, no. 2, pp. 1034-1042.
  4. Li.J et al (2010), “Fuzzy keyword search over encrypted data in cloud computing,” Proceedings of IEEE INFOCOM’10 Mini-Conference, San Diego, CA, USA, pp. 1-5.
  5. Sun.W, et al (2013),“Privacypreserving multi-keyword text search in the cloud supporting similarity based ranking,” ASIACCS 2013, Hangzhou, China, May 2013, pp. 71-82.
  6. Wang.C et al (2010), “Secure ranked keyword search over encrypted cloud data,” Proceedings of IEEE 30th International Conference on Distributed Computing Systems (ICDCS), pp. 253-262.
  7. Zhangjie Fu (2014), “Achieving Effective Cloud Search Services:Multi-Keyword ranked search over encrypted cloud data supporting synonym query” ,“IEEE Transactions on Consumer Electronics”, Vol. 60, No. 1.