Predicting User Behavior in Display Advertising via Dynamic Collective Matrix Factorization

Conversion prediction and click prediction are two important and intertwined problems in display advertising, but existing approaches usually look at them in isolation. In this paper, we aim to predict the conversion response of users by jointly examining the past purchase behavior and the click response behavior. Additionally, we model the temporal dynamics between the click response and purchase activity into a unified framework. In particular, a novel matrix factorization approach named dynamic collective matrix factorization (DCMF) is proposed to address this problem. Our model considers temporal dynamics of post-click conversions and also takes advantages of the side information of users, advertisements, and items. Experiments on a real-world marketing dataset show that our model achieves significant improvements over several baselines.

[1]  Alexander J. Smola,et al.  Scalable hierarchical multitask learning algorithms for conversion optimization in display advertising , 2014, WSDM.

[2]  Tie-Yan Liu,et al.  Relational click prediction for sponsored search , 2012, WSDM '12.

[3]  Geoffrey J. Gordon,et al.  Relational learning via collective matrix factorization , 2008, KDD.

[4]  Yong Yu,et al.  SVDFeature: a toolkit for feature-based collaborative filtering , 2012, J. Mach. Learn. Res..

[5]  Ee-Peng Lim,et al.  Modeling Temporal Adoptions Using Dynamic Matrix Factorization , 2013, 2013 IEEE 13th International Conference on Data Mining.

[6]  David Lo,et al.  Predicting response in mobile advertising with hierarchical importance-aware factorization machine , 2014, WSDM.

[7]  Ruslan Salakhutdinov,et al.  Probabilistic Matrix Factorization , 2007, NIPS.

[8]  Sunho Park,et al.  Hierarchical Bayesian Matrix Factorization with Side Information , 2013, IJCAI.

[9]  Deepak Agarwal,et al.  LASER: a scalable response prediction platform for online advertising , 2014, WSDM.

[10]  Chih-Jen Lin,et al.  A fast parallel SGD for matrix factorization in shared memory systems , 2013, RecSys.

[11]  Rómer Rosales,et al.  Post-click conversion modeling and analysis for non-guaranteed delivery display advertising , 2012, WSDM '12.

[12]  Ram Akella,et al.  Measuring the effectiveness of display advertising: a time series approach , 2011, WWW.

[13]  Wentong Li,et al.  Estimating conversion rate in display advertising from past erformance data , 2012, KDD.

[14]  Sachin Garg,et al.  Response prediction using collaborative filtering with hierarchies and side-information , 2011, KDD.