Aurélie C. Lozano, Naoki Abe, et al.
KDD 2009
We consider the problem of predicting the likelihood that a company will purchase a new product from a seller. The statistical models we have developed at IBM for this purpose rely on historical transaction data coupled with structured firmographic information like the company revenue, number of employees and so on. In this paper, we extend this methodology to include additional text-based features based on analysis of the content on each company's website. Empirical results demonstrate that incorporating such web content can significantly improve customer targeting. Furthermore, we present methods to actively select only the web content that is likely to improve our models, while reducing the costs of acquisition and processing. © 2008 ACM.
Aurélie C. Lozano, Naoki Abe, et al.
KDD 2009
Wojciech Gryc, Prem Melville, et al.
DEST 2010
Prem Melville, Vijil Chenthamarakshan, et al.
KDD 2013
Saharon Rosset
KDD 2005