Mitigating Filter Bubbles within Deep Recommender Systems

09/16/2022
by   Vivek Anand, et al.
7

Recommender systems, which offer personalized suggestions to users, power many of today's social media, e-commerce and entertainment. However, these systems have been known to intellectually isolate users from a variety of perspectives, or cause filter bubbles. In our work, we characterize and mitigate this filter bubble effect. We do so by classifying various datapoints based on their user-item interaction history and calculating the influences of the classified categories on each other using the well known TracIn method. Finally, we mitigate this filter bubble effect without compromising accuracy by carefully retraining our recommender system.

READ FULL TEXT
research
04/08/2020

Trust in Recommender Systems: A Deep Learning Perspective

A significant remaining challenge for existing recommender systems is th...
research
04/29/2022

User-controllable Recommendation Against Filter Bubbles

Recommender systems usually face the issue of filter bubbles: overrecomm...
research
11/11/2017

Recommender Systems with Random Walks: A Survey

Recommender engines have become an integral component in today's e-comme...
research
02/27/2019

Degenerate Feedback Loops in Recommender Systems

Machine learning is used extensively in recommender systems deployed in ...
research
08/22/2019

Measuring the Business Value of Recommender Systems

Recommender Systems are nowadays successfully used by all major web site...
research
12/25/2018

Deep Autoencoder for Recommender Systems: Parameter Influence Analysis

Recommender systems have recently attracted many researchers in the deep...
research
06/25/2022

The Bandwagon Effect: Not Just Another Bias

Optimizing recommender systems based on user interaction data is mainly ...

Please sign up or login with your details

Forgot password? Click here to reset