FairRank: Fairness-aware Single-tower Ranking Framework for News Recommendation

04/01/2022
by   Chuhan Wu, et al.
0

Single-tower models are widely used in the ranking stage of news recommendation to accurately rank candidate news according to their fine-grained relatedness with user interest indicated by user behaviors. However, these models can easily inherit the biases related to users' sensitive attributes (e.g., demographics) encoded in training click data, and may generate recommendation results that are unfair to users with certain attributes. In this paper, we propose FairRank, which is a fairness-aware single-tower ranking framework for news recommendation. Since candidate news selection can be biased, we propose to use a shared candidate-aware user model to match user interest with a real displayed candidate news and a random news, respectively, to learn a candidate-aware user embedding that reflects user interest in candidate news and a candidate-invariant user embedding that indicates intrinsic user interest. We apply adversarial learning to both of them to reduce the biases brought by sensitive user attributes. In addition, we use a KL loss to regularize the attribute labels inferred from the two user embeddings to be similar, which can make the model capture less candidate-aware bias information. Extensive experiments on two datasets show that FairRank can improve the fairness of various single-tower news ranking models with minor performance losses.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/30/2020

Fairness-aware News Recommendation with Decomposed Adversarial Learning

News recommendation is important for online news services. Most news rec...
research
06/11/2021

DebiasGAN: Eliminating Position Bias in News Recommendation with Adversarial Learning

News recommendation is important for improving news reading experience o...
research
05/10/2022

Selective Fairness in Recommendation via Prompts

Recommendation fairness has attracted great attention recently. In real-...
research
07/30/2020

Fairness-Aware Online Personalization

Decision making in crucial applications such as lending, hiring, and col...
research
08/11/2017

Improved Abusive Comment Moderation with User Embeddings

Experimenting with a dataset of approximately 1.6M user comments from a ...
research
09/02/2019

Analysis of Bias in Gathering Information Between User Attributes in News Application

In the process of information gathering on the web, confirmation bias is...
research
03/16/2020

Identifying Notable News Stories

The volume of news content has increased significantly in recent years a...

Please sign up or login with your details

Forgot password? Click here to reset