Personalized Purchase Prediction of Market Baskets with Wasserstein-Based Sequence Matching

05/24/2019
by   Mathias Kraus, et al.
0

Personalization in marketing aims at improving the shopping experience of customers by tailoring services to individuals. In order to achieve this, businesses must be able to make personalized predictions regarding the next purchase. That is, one must forecast the exact list of items that will comprise the next purchase, i.e., the so-called market basket. Despite its relevance to firm operations, this problem has received surprisingly little attention in prior research, largely due to its inherent complexity. In fact, state-of-the-art approaches are limited to intuitive decision rules for pattern extraction. However, the simplicity of the pre-coded rules impedes performance, since decision rules operate in an autoregressive fashion: the rules can only make inferences from past purchases of a single customer without taking into account the knowledge transfer that takes place between customers. In contrast, our research overcomes the limitations of pre-set rules by contributing a novel predictor of market baskets from sequential purchase histories: our predictions are based on similarity matching in order to identify similar purchase habits among the complete shopping histories of all customers. Our contributions are as follows: (1) We propose similarity matching based on subsequential dynamic time warping (SDTW) as a novel predictor of market baskets. Thereby, we can effectively identify cross-customer patterns. (2) We leverage the Wasserstein distance for measuring the similarity among embedded purchase histories. (3) We develop a fast approximation algorithm for computing a lower bound of the Wasserstein distance in our setting. An extensive series of computational experiments demonstrates the effectiveness of our approach. The accuracy of identifying the exact market baskets based on state-of-the-art decision rules from the literature is outperformed by a factor of 4.0.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/25/2019

Ask less - Scale Market Research without Annoying Your Customers

Market research is generally performed by surveying a representative sam...
research
09/16/2013

A Neural Network based Approach for Predicting Customer Churn in Cellular Network Services

Marketing literature states that it is more costly to engage a new custo...
research
07/23/2022

Personalized Promotion Decision Making Based on Direct and Enduring Effect Predictions

Promotions have been trending in the e-commerce marketplace to build up ...
research
08/26/2019

Multi-stage and Multi-customer Assortment Optimization with Inventory Constraints

We consider an assortment optimization problem where a customer chooses ...
research
08/19/2021

Personalized next-best action recommendation with multi-party interaction learning for automated decision-making

Automated next-best action recommendation for each customer in a sequent...
research
07/22/2022

Exploring Wasserstein Distance across Concept Embeddings for Ontology Matching

Measuring the distance between ontological elements is a fundamental com...

Please sign up or login with your details

Forgot password? Click here to reset