4.3 Article

Second Order Mutual Information based Grey Wolf Optimization for effective storage and de-duplication

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SPRINGER INDIA
DOI: 10.1007/s12046-018-0939-2

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De-duplication; simhash algorithm; Huffman coding; Grey Wolf Optimization; accuracy

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This paper intends to perform de-duplication for enhancing the storage optimization by utilizing the similarity in mutual information. Hence, this paper contributes by proposing a hybrid fingerprint extracting using SH and HC algorithms. Secondly, the data is clustered using the latest technique called as SOMI-GO to extract the metadata. The extracted metadata is stored in metadata server which provides better storage optimization and de-duplication. SOMI-GO is adopted as it provides maximum second-order mutual information based on the similarity index. The proposed SOMI-GO technique is compared with the existing methods such as K-means, K-mode, ED-PSO, ED-GA and ED-GWO in terms of accuracy, TPR, TNR and performance time and the significance of the SOMI-GO method is described.

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