Towards Fair Personalization by Avoiding Feedback Loops

12/20/2020
by   Gökhan Çapan, et al.
0

Self-reinforcing feedback loops are both cause and effect of over and/or under-presentation of some content in interactive recommender systems. This leads to erroneous user preference estimates, namely, overestimation of over-presented content while violating the right to be presented of each alternative, contrary of which we define as a fair system. We consider two models that explicitly incorporate, or ignore the systematic and limited exposure to alternatives. By simulations, we demonstrate that ignoring the systematic presentations overestimates promoted options and underestimates censored alternatives. Simply conditioning on the limited exposure is a remedy for these biases.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/15/2019

A Bayesian Choice Model for Eliminating Feedback Loops

Self-reinforcing feedback loops in personalization systems are typically...
research
09/13/2018

A Fairness-aware Hybrid Recommender System

Recommender systems are used in variety of domains affecting people's li...
research
03/30/2022

Long-term Dynamics of Fairness Intervention in Connection Recommender Systems

Recommender system fairness has been studied from the perspectives of a ...
research
11/08/2020

Adversarial Counterfactual Learning and Evaluation for Recommender System

The feedback data of recommender systems are often subject to what was e...
research
08/21/2020

Theoretical Modeling of the Iterative Properties of User Discovery in a Collaborative Filtering Recommender System

The closed feedback loop in recommender systems is a common setting that...
research
02/21/2023

Overview of the TREC 2021 Fair Ranking Track

The TREC Fair Ranking Track aims to provide a platform for participants ...
research
02/16/2018

Dealing with Uncertainties in User Feedback: Strategies Between Denying and Accepting

Latest research revealed a considerable lack of reliability within user ...

Please sign up or login with your details

Forgot password? Click here to reset