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#16: Fairness in Recommender Systems with Michael D. Ekstrand

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Manage episode 363558898 series 3288795
Content provided by Marcel Kurovski. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Marcel Kurovski or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

In episode 16 of Recsperts, we hear from Michael D. Ekstrand, Associate Professor at Boise State University, about fairness in recommender systems. We discuss why fairness matters and provide an overview of the multidimensional fairness-aware RecSys landscape. Furthermore, we talk about tradeoffs, methods and receive practical advice on how to get started with tackling unfairness.

In our discussion, Michael outlines the difference and similarity between fairness and bias. We discuss several stages at which biases can enter the system as well as how bias can indeed support mitigating unfairness. We also cover the perspectives of different stakeholders with respect to fairness. We also learn that measuring fairness depends on the specific fairness concern one is interested in and that solving fairness universally is highly unlikely.

Towards the end of the episode, we take a look at further challenges as well as how and where the upcoming RecSys 2023 provides a forum for those interested in fairness-aware recommender systems.

Enjoy this enriching episode of RECSPERTS - Recommender Systems Experts.

  • (00:00) - Episode Overview
  • (02:57) - Introduction Michael Ekstrand
  • (17:08) - Motivation for Fairness-Aware Recommender Systems
  • (25:45) - Overview and Definition of Fairness in RecSys
  • (46:51) - Distributional and Representational Harm
  • (53:59) - Relationship between Fairness and Bias
  • (01:04:43) - Tradeoffs
  • (01:13:36) - Methods and Metrics for Fairness
  • (01:28:06) - Practical Advice for Tackling Unfairness
  • (01:32:24) - Further Challenges
  • (01:35:24) - RecSys 2023
  • (01:38:29) - Closing Remarks

Links from the Episode:

Papers:

General Links:

  continue reading

29 episodes

Artwork
iconShare
 
Manage episode 363558898 series 3288795
Content provided by Marcel Kurovski. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Marcel Kurovski or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ppacc.player.fm/legal.

In episode 16 of Recsperts, we hear from Michael D. Ekstrand, Associate Professor at Boise State University, about fairness in recommender systems. We discuss why fairness matters and provide an overview of the multidimensional fairness-aware RecSys landscape. Furthermore, we talk about tradeoffs, methods and receive practical advice on how to get started with tackling unfairness.

In our discussion, Michael outlines the difference and similarity between fairness and bias. We discuss several stages at which biases can enter the system as well as how bias can indeed support mitigating unfairness. We also cover the perspectives of different stakeholders with respect to fairness. We also learn that measuring fairness depends on the specific fairness concern one is interested in and that solving fairness universally is highly unlikely.

Towards the end of the episode, we take a look at further challenges as well as how and where the upcoming RecSys 2023 provides a forum for those interested in fairness-aware recommender systems.

Enjoy this enriching episode of RECSPERTS - Recommender Systems Experts.

  • (00:00) - Episode Overview
  • (02:57) - Introduction Michael Ekstrand
  • (17:08) - Motivation for Fairness-Aware Recommender Systems
  • (25:45) - Overview and Definition of Fairness in RecSys
  • (46:51) - Distributional and Representational Harm
  • (53:59) - Relationship between Fairness and Bias
  • (01:04:43) - Tradeoffs
  • (01:13:36) - Methods and Metrics for Fairness
  • (01:28:06) - Practical Advice for Tackling Unfairness
  • (01:32:24) - Further Challenges
  • (01:35:24) - RecSys 2023
  • (01:38:29) - Closing Remarks

Links from the Episode:

Papers:

General Links:

  continue reading

29 episodes

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