کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
880361 | 1471446 | 2011 | 8 صفحه PDF | دانلود رایگان |

Extant customer-base models like the beta geometric/negative binomial distribution (BG/NBD) predict future purchasing based on customers' observed purchase history. We extend the BG/NBD by adding an important non-transactional element that also drives future purchases: complaint history. Our model retains several desirable properties of the BG/NBD: it can be implemented in readily available software, and estimation requires only customer-specific statistics, rather than detailed transaction-sequence data. The likelihood function is closed-form, and managerially relevant metrics are obtained by drawing from beta and gamma densities and transforming these draws to a sample average. Based on more than two years of individual-level data from a major U.S. internet and catalog retailer, our model with complaints outperforms both the original BG/NBD and a modified version. Even though complaints are rare and non-transactional events, they lead to different substantive insights about customer purchasing and drop-out: customers purchase faster but also drop out much faster. Furthermore, there is more heterogeneity in drop-out rates following a purchase than a complaint.
Research Highlights
► We incorporate complaints into the well-known purchase-only BG/NBD model.
► The proposed model is easy to implement and leads to improved forecasts.
► Though being rare and non-transactional, complaints change inference on purchasing.
► Complaints increase drop-out after purchase more than they increase purchasing.
► There is more heterogeneity in drop-out following a purchase than a complaint.
Journal: International Journal of Research in Marketing - Volume 28, Issue 1, March 2011, Pages 30–37