Text mining in computational advertising
Statistical Analysis and Data Mining The ASA Data Science Journal2013Vol. 6(4), pp. 273–285
Citations Over TimeTop 10% of 2013 papers
Abstract
Abstract Computational advertising uses information on web‐browsing activity and additional covariates to select advertisements for display to the user. The statistical challenge is to develop methodology that matches ads to users who are likely to purchase the advertised product. These methods not only involve text mining, but also may draw upon additional modeling related to both the user and the advertisement. This paper reviews various aspects of text mining, including n ‐grams, topic modeling, and text networks, and discusses different strategies in the context of specific business models. © 2013 Wiley Periodicals, Inc. Statistical Analysis and Data Mining, 2013
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