Curse of "Low" Dimensionality in Recommender Systems

05/23/2023
by   Naoto Ohsaka, et al.
0

Beyond accuracy, there are a variety of aspects to the quality of recommender systems, such as diversity, fairness, and robustness. We argue that many of the prevalent problems in recommender systems are partly due to low-dimensionality of user and item embeddings, particularly when dot-product models, such as matrix factorization, are used. In this study, we showcase empirical evidence suggesting the necessity of sufficient dimensionality for user/item embeddings to achieve diverse, fair, and robust recommendation. We then present theoretical analyses of the expressive power of dot-product models. Our theoretical results demonstrate that the number of possible rankings expressible under dot-product models is exponentially bounded by the dimension of item factors. We empirically found that the low-dimensionality contributes to a popularity bias, widening the gap between the rank positions of popular and long-tail items; we also give a theoretical justification for this phenomenon.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/10/2023

Fair Recommendation by Geometric Interpretation and Analysis of Matrix Factorization

Matrix factorization-based recommender system is in effect an angle pres...
research
06/11/2023

Skellam Rank: Fair Learning to Rank Algorithm Based on Poisson Process and Skellam Distribution for Recommender Systems

Recommender system is a widely adopted technology in a diversified class...
research
01/22/2016

Recommender systems inspired by the structure of quantum theory

Physicists use quantum models to describe the behavior of physical syste...
research
08/28/2019

How big can style be? Addressing high dimensionality for recommending with style

Using embeddings as representations of products is quite commonplace in ...
research
06/12/2023

Enhancing Topic Extraction in Recommender Systems with Entropy Regularization

In recent years, many recommender systems have utilized textual data for...
research
03/01/2018

Pairwise Inner Product Distance: Metric for Functionality, Stability, Dimensionality of Vector Embedding

In this paper, we present a theoretical framework for understanding vect...
research
07/23/2020

Critically Examining the Claimed Value of Convolutions over User-Item Embedding Maps for Recommender Systems

In recent years, algorithm research in the area of recommender systems h...

Please sign up or login with your details

Forgot password? Click here to reset