Modeling Online Browsing and Path Analysis Using Clickstream Data

Clickstream data provide information about the sequence of pages or the path viewed by users as they navigate a website. We show how path information can be categorized and modeled using a dynamic multinomial probit model of Web browsing. We estimate this model using data from a major online booksel...

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Veröffentlicht in:Marketing science (Providence, R.I.) R.I.), 2004-10, Vol.23 (4), p.579-595
Hauptverfasser: Montgomery, Alan L, Li, Shibo, Srinivasan, Kannan, Liechty, John C
Format: Artikel
Sprache:eng
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Zusammenfassung:Clickstream data provide information about the sequence of pages or the path viewed by users as they navigate a website. We show how path information can be categorized and modeled using a dynamic multinomial probit model of Web browsing. We estimate this model using data from a major online bookseller. Our results show that the memory component of the model is crucial in accurately predicting a path. In comparison, traditional multinomial probit and first-order Markov models predict paths poorly. These results suggest that paths may reflect a user's goals, which could be helpful in predicting future movements at a website. One potential application of our model is to predict purchase conversion. We find that after only six viewings purchasers can be predicted with more than 40% accuracy, which is much better than the benchmark 7% purchase conversion prediction rate made without path information. This technique could be used to personalize Web designs and product offerings based upon a user's path.
ISSN:0732-2399
1526-548X
DOI:10.1287/mksc.1040.0073