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Big data feature selection and projection for gender prediction based on user web behaviour | IEEE Conference Publication | IEEE Xplore

Big data feature selection and projection for gender prediction based on user web behaviour


Abstract:

Prediction of a visitors' gender and other demographic information helps with the presentation of the appropriate content to the user. In this paper, we perform gender pr...Show More

Abstract:

Prediction of a visitors' gender and other demographic information helps with the presentation of the appropriate content to the user. In this paper, we perform gender prediction based on Turkish users' web log data. Our methods use three different sets of features, namely the URLs (Uniform Resource Locator), the textual contents and the DMOZ (from directory.mozilla.org) hierarchies of the pages visited by each user. Since we have a sparse high-dimensional input dataset, first we apply Information Gain and Chi-square based feature selection. We use a MapReduce based approach to compute these feature relevance measures. We also apply stochastic singular value decomposition (SSVD) feature projection method. We present gender classification results, based on these feature selection and projection methods, using the Logistic Regression classifier. Using the Logistic Regression classifier on the selected URL features results in the best performance.
Date of Conference: 16-19 May 2015
Date Added to IEEE Xplore: 22 June 2015
Electronic ISBN:978-1-4673-7386-9
Print ISSN: 2165-0608
Conference Location: Malatya, Turkey

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