Cold Item Integration in Deep Hybrid Recommenders via Tunable Stochastic Gates

12/12/2021
by   Oren Barkan, et al.
0

A major challenge in collaborative filtering methods is how to produce recommendations for cold items (items with no ratings), or integrate cold item into an existing catalog. Over the years, a variety of hybrid recommendation models have been proposed to address this problem by utilizing items' metadata and content along with their ratings or usage patterns. In this work, we wish to revisit the cold start problem in order to draw attention to an overlooked challenge: the ability to integrate and balance between (regular) warm items and completely cold items. In this case, two different challenges arise: (1) preserving high quality performance on warm items, while (2) learning to promote cold items to relevant users. First, we show that these two objectives are in fact conflicting, and the balance between them depends on the business needs and the application at hand. Next, we propose a novel hybrid recommendation algorithm that bridges these two conflicting objectives and enables a harmonized balance between preserving high accuracy for warm items while effectively promoting completely cold items. We demonstrate the effectiveness of the proposed algorithm on movies, apps, and articles recommendations, and provide an empirical analysis of the cold-warm trade-off.

READ FULL TEXT
research
12/23/2022

What You Like: Generating Explainable Topical Recommendations for Twitter Using Social Annotations

With over 500 million tweets posted per day, in Twitter, it is difficult...
research
09/10/2019

Wasserstein Collaborative Filtering for Item Cold-start Recommendation

The item cold-start problem seriously limits the recommendation performa...
research
06/08/2021

MindReader: Recommendation over Knowledge Graph Entities with Explicit User Ratings

Knowledge Graphs (KGs) have been integrated in several models of recomme...
research
04/24/2023

ExCalibR: Expected Calibration of Recommendations

In many recommender systems and search problems, presenting a well balan...
research
07/14/2016

Fifty Shades of Ratings: How to Benefit from a Negative Feedback in Top-N Recommendations Tasks

Conventional collaborative filtering techniques treat a top-n recommenda...
research
02/27/2020

HAM: Hybrid Associations Model with Pooling for Sequential Recommendation

We developed a hybrid associations model (HAM) to generate sequential re...

Please sign up or login with your details

Forgot password? Click here to reset