Is Meta-Learning the Right Approach for the Cold-Start Problem in Recommender Systems?

08/16/2023
by   Davide Buffelli, et al.
0

Recommender systems have become fundamental building blocks of modern online products and services, and have a substantial impact on user experience. In the past few years, deep learning methods have attracted a lot of research, and are now heavily used in modern real-world recommender systems. Nevertheless, dealing with recommendations in the cold-start setting, e.g., when a user has done limited interactions in the system, is a problem that remains far from solved. Meta-learning techniques, and in particular optimization-based meta-learning, have recently become the most popular approaches in the academic research literature for tackling the cold-start problem in deep learning models for recommender systems. However, current meta-learning approaches are not practical for real-world recommender systems, which have billions of users and items, and strict latency requirements. In this paper we show that it is possible to obtaining similar, or higher, performance on commonly used benchmarks for the cold-start problem without using meta-learning techniques. In more detail, we show that, when tuned correctly, standard and widely adopted deep learning models perform just as well as newer meta-learning models. We further show that an extremely simple modular approach using common representation learning techniques, can perform comparably to meta-learning techniques specifically designed for the cold-start setting while being much more easily deployable in real-world applications.

READ FULL TEXT

page 4

page 5

research
07/07/2020

MAMO: Memory-Augmented Meta-Optimization for Cold-start Recommendation

A common challenge for most current recommender systems is the cold-star...
research
06/23/2022

On the Generalizability and Predictability of Recommender Systems

While other areas of machine learning have seen more and more automation...
research
03/19/2022

Meta-Learning for Online Update of Recommender Systems

Online recommender systems should be always aligned with users' current ...
research
07/17/2019

Deep Learning to Address Candidate Generation and Cold Start Challenges in Recommender Systems: A Research Survey

Among the machine learning applications to business, recommender systems...
research
07/06/2023

LogitMat : Zeroshot Learning Algorithm for Recommender Systems without Transfer Learning or Pretrained Models

Recommender system is adored in the internet industry as one of the most...
research
12/30/2020

Per-Instance Algorithm Selection for Recommender Systems via Instance Clustering

Recommendation algorithms perform differently if the users, recommendati...
research
10/04/2012

Learning Heterogeneous Similarity Measures for Hybrid-Recommendations in Meta-Mining

The notion of meta-mining has appeared recently and extends the traditio...

Please sign up or login with your details

Forgot password? Click here to reset