In modern retail contexts, retailers sell products from vast product assortments to a large and heterogeneous customer base. Understanding purchase behavior in such a context is very important. Standard models cannot be used because of the high dimensionality of the data. We propose a new model that creates an efficient dimension reduction through the idea of purchase motivations. We only require customer-level purchase history data, which is ubiquitous in modern retailing. The model handles large-scale data and even works in settings with shopping trips consisting of few purchases. Essential features of our model are that it accounts for the product, customer, and time dimensions present in purchase history data; relates the relevance of m...
The study proposes a framework based on functional analysis of transaction data to predict customer ...
The goal of the following report is a mix between finding commercially interesting results and seein...
The customer lifetime value combines into one construct the transaction timing, spending and dropout...
In modern retail contexts, retailers sell products from vast product assortments to a large and hete...
Understanding customer purchase behavior is of increasing importance for modern retail. In this thes...
Consumer brands often offer discounts to attract new shoppers to buy their products. The most valuab...
This paper develops a model of conversion behavior (i.e., converting store visits into purchases) th...
Given the emerging concept of a customer-centric approach to marketing, customer relationship manage...
Abstract In this paper we investigate the regularities characterizing the temporal purchasing behavi...
This paper develops a model of conversion behavior (i.e., converting store visits into purchases) th...
In predictive analytics and statistics, entities are frequently treated as individual actors. Howeve...
An accurate prediction of what a customer will purchase next is of paramount importance to successfu...
When studying consumer buying behavior, most marketing models have focused on purchasing events only...
Data analytics is pervasive in retailing as a key tool to gain customer insights. Often, the data se...
Recent technological innovations (e.g. e-commerce platforms, automated retail stores) have enabled d...
The study proposes a framework based on functional analysis of transaction data to predict customer ...
The goal of the following report is a mix between finding commercially interesting results and seein...
The customer lifetime value combines into one construct the transaction timing, spending and dropout...
In modern retail contexts, retailers sell products from vast product assortments to a large and hete...
Understanding customer purchase behavior is of increasing importance for modern retail. In this thes...
Consumer brands often offer discounts to attract new shoppers to buy their products. The most valuab...
This paper develops a model of conversion behavior (i.e., converting store visits into purchases) th...
Given the emerging concept of a customer-centric approach to marketing, customer relationship manage...
Abstract In this paper we investigate the regularities characterizing the temporal purchasing behavi...
This paper develops a model of conversion behavior (i.e., converting store visits into purchases) th...
In predictive analytics and statistics, entities are frequently treated as individual actors. Howeve...
An accurate prediction of what a customer will purchase next is of paramount importance to successfu...
When studying consumer buying behavior, most marketing models have focused on purchasing events only...
Data analytics is pervasive in retailing as a key tool to gain customer insights. Often, the data se...
Recent technological innovations (e.g. e-commerce platforms, automated retail stores) have enabled d...
The study proposes a framework based on functional analysis of transaction data to predict customer ...
The goal of the following report is a mix between finding commercially interesting results and seein...
The customer lifetime value combines into one construct the transaction timing, spending and dropout...