Inferring Complementary Products from Baskets and Browsing Sessions

09/25/2018
by   Ilya Trofimov, et al.
0

Complementary products recommendation is an important problem in e-commerce. Such recommendations increase the average order price and the number of products in baskets. Complementary products are typically inferred from basket data. In this study, we propose the BB2vec model. The BB2vec model learns vector representations of products by analyzing jointly two types of data - Baskets and Browsing sessions (visiting web pages of products). These vector representations are used for making complementary products recommendation. The proposed model alleviates the cold start problem by delivering better recommendations for products having few or no purchases. We show that the BB2vec model has better performance than other models which use only basket data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/09/2022

Towards High-Order Complementary Recommendation via Logical Reasoning Network

Complementary recommendation gains increasing attention in e-commerce si...
research
08/10/2022

Identifying Substitute and Complementary Products for Assortment Optimization with Cleora Embeddings

Recent years brought an increasing interest in the application of machin...
research
08/22/2019

Session-based Complementary Fashion Recommendations

In modern fashion e-commerce platforms, where customers can browse thous...
research
11/18/2022

Recommending Related Products Using Graph Neural Networks in Directed Graphs

Related product recommendation (RPR) is pivotal to the success of any e-...
research
11/09/2017

SHOPPER: A Probabilistic Model of Consumer Choice with Substitutes and Complements

We develop SHOPPER, a sequential probabilistic model of market baskets. ...
research
04/04/2022

Automated generalisation of buildings using CartAGen platform

In this paper, we present a methodology to automatically derive the gene...
research
11/28/2022

Two Is Better Than One: Dual Embeddings for Complementary Product Recommendations

Embedding based product recommendations have gained popularity in recent...

Please sign up or login with your details

Forgot password? Click here to reset