New Item Consumption Prediction Using Deep Learning

05/05/2019
by   Michael Shekasta, et al.
0

Recommendation systems have become ubiquitous in today's online world and are an integral part of practically every e-commerce platform. While traditional recommender systems use customer history, this approach is not feasible in 'cold start' scenarios. Such scenarios include the need to produce recommendations for new or unregistered users and the introduction of new items. In this study, we present the Purchase Intent Session-bAsed (PISA) algorithm, a content-based algorithm for predicting the purchase intent for cold start session-based scenarios. Our approach employs deep learning techniques both for modeling the content and purchase intent prediction. Our experiments show that PISA outperforms a well-known deep learning baseline when new items are introduced. In addition, while content-based approaches often fail to perform well in highly imbalanced datasets, our approach successfully handles such cases. Finally, our experiments show that combining PISA with the baseline in non-cold start scenarios further improves performance.

READ FULL TEXT

page 3

page 4

page 8

research
04/19/2021

SIGIR 2021 E-Commerce Workshop Data Challenge

The 2021 SIGIR workshop on eCommerce is hosting the Coveo Data Challenge...
research
05/04/2021

PreSizE: Predicting Size in E-Commerce using Transformers

Recent advances in the e-commerce fashion industry have led to an explor...
research
07/12/2019

On the Importance of News Content Representation in Hybrid Neural Session-based Recommender Systems

News recommender systems are designed to surface relevant information fo...
research
06/18/2017

Addressing Item-Cold Start Problem in Recommendation Systems using Model Based Approach and Deep Learning

Traditional recommendation systems rely on past usage data in order to g...
research
06/28/2021

Intent Disentanglement and Feature Self-supervision for Novel Recommendation

One key property in recommender systems is the long-tail distribution in...
research
09/18/2018

In-Session Personalization for Talent Search

Previous efforts in recommendation of candidates for talent search follo...
research
09/06/2018

Deep neural network marketplace recommenders in online experiments

Recommendations are broadly used in marketplaces to match users with ite...

Please sign up or login with your details

Forgot password? Click here to reset