Towards Principled User-side Recommender Systems

08/21/2022
by   Ryoma Sato, et al.
0

Traditionally, recommendation algorithms have been designed for service developers. However, recently, a new paradigm called user-side recommender systems has been proposed and they enable web service users to construct their own recommender systems without access to trade-secret data. This approach opens the door to user-defined fair systems even if the official recommender system of the service is not fair. While existing methods for user-side recommender systems have addressed the challenging problem of building recommender systems without using log data, they rely on heuristic approaches, and it is still unclear whether constructing user-side recommender systems is a well-defined problem from theoretical point of view. In this paper, we provide theoretical justification of user-side recommender systems. Specifically, we see that hidden item features can be recovered from the information available to the user, making the construction of user-side recommender system well-defined. However, this theoretically grounded approach is not efficient. To realize practical yet theoretically sound recommender systems, we propose three desirable properties of user-side recommender systems and propose an effective and efficient user-side recommender system, Consul, based on these foundations. We prove that Consul satisfies all three properties, whereas existing user-side recommender systems lack at least one of them. In the experiments, we empirically validate the theory of feature recovery via numerical experiments. We also show that our proposed method achieves an excellent trade-off between effectiveness and efficiency and demonstrate via case studies that the proposed method can retrieve information that the provider's official recommender system cannot.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/26/2021

Private Recommender Systems: How Can Users Build Their Own Fair Recommender Systems without Log Data?

Fairness is an important property in data-mining applications, including...
research
12/13/2022

FairRoad: Achieving Fairness for Recommender Systems with Optimized Antidote Data

Today, recommender systems have played an increasingly important role in...
research
07/10/2018

Privacy-Adversarial User Representations in Recommender Systems

Latent factor models for recommender systems represent users and items a...
research
12/07/2022

Pivotal Role of Language Modeling in Recommender Systems: Enriching Task-specific and Task-agnostic Representation Learning

Recent studies have proposed unified user modeling frameworks that lever...
research
05/20/2019

Recommendation from Raw Data with Adaptive Compound Poisson Factorization

Count data are often used in recommender systems: they are widespread (s...
research
09/30/2022

A Sequence-Aware Recommendation Method Based on Complex Networks

Online stores and service providers rely heavily on recommendation softw...
research
07/17/2023

An Admissible Shift-Consistent Method for Recommender Systems

In this paper, we propose a new constraint, called shift-consistency, fo...

Please sign up or login with your details

Forgot password? Click here to reset