Start of Main Content
        Journal Article
                        A Guadagni Little Likelihood Can Have Multiple Maxima
Marketing Letters
                    Author(s)
                    
            
                        Despite many advances in marketing models, the Guadagni-Little (1983) model is still in widespread use by both practitioners and academics.  For many new marketing models, the Guadagni-Little model serves as a benchmark.  The key variable that allows the Guadagni-Little model to accurately fit data is the loyalty variable, which is an exponential smoothing of past purchases.  In this paper, I show that inclusion of this variable in the logit model may result in a likelihood function that can have multiple maxima.  I am able to demonstrate this using simulated data and actual household scanner panel data.  In addition, I document a systematic relationship between the loyalty coefficient and the loyalty smoothing parameter.  Insight for this systematic relationship and the multiple maxima is obtained by recognizing a trade-off between capturing household heterogeneity and state dependence.  Finally, in the Guadagni-Little model extreme parameter values capture two different idealized forms of consumer behavior.  However, reported studies rarely find these extreme parameter values.  I show that procedures commonly used to initialize loyalty biases against these extreme parameter values.  This bias offers some explanation for the observed empirical regularity in Guadagni-Little parameter estimates and suggests that researchers should be cautious concluding these parameters capture regularity in consumer behavior.
                    
            
                    Date Published:
                    2002
                
                                                    
                    Citations:
                    Anderson, Eric T.. 2002. A Guadagni Little Likelihood Can Have Multiple Maxima. Marketing Letters. (2)135-150.
                
            
        