Predicting online-purchasing behaviour

Predicting online-purchasing behaviour

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Article ID: iaor20062180
Country: Netherlands
Volume: 166
Issue: 2
Start Page Number: 557
End Page Number: 575
Publication Date: Oct 2005
Journal: European Journal of Operational Research
Authors: ,
Keywords: time series & forecasting methods, e-commerce
Abstract:

This empirical study investigates the contribution of different types of predictors to the purchasing behaviour at an online store. We use logit modelling to predict whether or not a a purchase is made during the next visit to the website using both forward and backward variable-selection techniques, as well as Furnival and Wilson's global score search algorithm to find the best subset of predictors. We contribute to the literature by using variables from four different categories in predicting online-purchasing behaviour: (1) general clickstream behaviour at the level of the visit, (2) more detailed clickstream information, (3) customer demographics, and (4) historical purchase behaviour. The results show that predictors from all four categories are retained in the final (best subset) solution indicating that clickstream behaviour is important when determining the tendency to buy. We clearly indicate the contribution in predictive power of variables that were never used before in online purchasing studies. Detailed clickstream variables are the most important ones in classifying customers according to their online purchase behaviour. Though our dataset is limited in size, we are able to highlight the advantage of e-commerce retailers being able to capture an elaborate list of customer information.

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