Downloads: 108 | Views: 248
Research Paper | Computer Science & Engineering | India | Volume 3 Issue 7, July 2014 | Popularity: 7 / 10
Improved Indexing and Advanced Relevance Ranking Score for Multi-Keyword Search over Encrypted Cloud Data
Amol D. Sawant, M. D. Ingle
Abstract: Cloud computing is used to outsource the large volume of and important o most sensitive data on the remote server that is cloud server. To provide the data confidentiality and privacy, the sensitive cloud data have to be outsourced in encrypted format on commercial public cloud or private cloud. Traditional encryption techniques is used to securely search over encrypted data through single keyword search with rank score of the files also it supports the multiple keyword search but the sum of relevance score of the files is preserved and will not meet the effective data utilization need and the requirement of the large number of users and the large database. In this paper we solve the problem of preserving sum of multiple keywords search files ranking score. The existing ranking algorithm doesnt use the OR of multi-keywords. Also we enhance the relevance ranking score of the files which enhances the system usability by giving relevance ranking instead of sending undifferentiated results. We explore the statistical measure approach i. e. improved relevance score, from the information retrieval to build the index of files and develop the advanced ranking function and the Advanced search to protect the sum of the sensitive score information by improving the index structure. The resulting design able to do the multiple keyword searches without losing the privacy of the multiple keywords and prevent the sum of the relevance score of multi-keyword from the server from leakage. Through analysis this solution gives the strong security guarantee for the compared to the previous searchable encryption scheme for multi-keyword search using OPM function. The experimental result demonstrates the efficiency of the proposed solution, with it reduces the number of distinct keywords and results in reduction of index size and improves the relevance ranking score function and gives the most relevant document to users.
Keywords: indexing, multi-, relevance ranking, encrypted searching
Edition: Volume 3 Issue 7, July 2014
Pages: 969 - 973
Make Sure to Disable the Pop-Up Blocker of Web Browser
Downloads: 656 | Views: 2000
Computer Science & Engineering, India, Volume 9 Issue 7, July 2020
Pages: 1454 - 1458Heart Disease Prediction with Machine Learning Approaches
Megha Kamboj
Downloads: 401 | Views: 718
Computer Science & Engineering, India, Volume 7 Issue 11, November 2018
Pages: 1951 - 1955Hadoop Performance Improvement using Metadata and Securing with Oauth Token
Swapnali A. Salunkhe, Amol B. Rajmane
Downloads: 386 | Views: 698
Computer Science & Engineering, India, Volume 9 Issue 12, December 2020
Pages: 1 - 3Comparative Study of Conventional Desktop Computer and Compute Stick
Aadarsh Sooraj, Sooraj G.
Downloads: 354 | Views: 698
Computer Science & Engineering, India, Volume 3 Issue 6, June 2014
Pages: 629 - 632Review Paper on Secure Hashing Algorithm and Its Variants
Priyanka Vadhera, Bhumika Lall
Downloads: 336 | Views: 687
Computer Science & Engineering, India, Volume 3 Issue 6, June 2014
Pages: 2148 - 2152The Impact and Application of 3D Printing Technology
Thabiso Peter Mpofu, Cephas Mawere, Macdonald Mukosera