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A Novel Gaussian Based Similarity Measure for Clustering Customer Transactions Using Transaction Sequence Vector

Authors :
Raj, M. S. B. Phridvi
Radhakrishna, Vangipuram
Rao, C. V. Guru
Source :
Rev. Tec. Ing. Univ. Zulia. Vol. 38, No 1, 85 - 96, April 2015
Publication Year :
2016

Abstract

Clustering Transactions in sequence, temporal and time series databases is achieving an important attention from the database researchers and software industry. Significant research is carried out towards defining and validating the suitability of new similarity measures for sequence, temporal, time series databases which can accurately and efficiently find the similarity between user transactions in the given database to predict the user behavior. The distribution of items present in the transactions contributes to a great extent in finding the degree of similarity between them. This forms the key idea of the proposed similarity measure. The main objective of the research is to first design the efficient similarity measure which essentially considers the distribution of the items in the item set over the entire transaction data set and also considers the commonality of items present in the transactions, which is the major drawback in the Jaccard, Cosine, Euclidean similarity measures. We then carry out the analysis for worst case, the average case and best case situations. The Similarity measure designed is Gaussian based and preserves the properties of Gaussian function. The proposed similarity measure may be used to both cluster and classify the user transactions and predict the user behaviors.<br />Comment: Technical Journal of the faculty of Engineering, April 2015, 12 pages, Journal Indexed in Scopus and Web of Science

Subjects

Subjects :
Computer Science - Databases

Details

Database :
arXiv
Journal :
Rev. Tec. Ing. Univ. Zulia. Vol. 38, No 1, 85 - 96, April 2015
Publication Type :
Report
Accession number :
edsarx.1604.05274
Document Type :
Working Paper