Artwork

Content provided by Brian T. O’Neill from Designing for Analytics. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Brian T. O’Neill from Designing for Analytics 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://player.fm/legal.
Player FM - Podcast App
Go offline with the Player FM app!

125 - Human-Centered XAI: Moving from Algorithms to Explainable ML UX with Microsoft Researcher Vera Liao

44:42
 
Share
 

Manage episode 376109532 series 2527129
Content provided by Brian T. O’Neill from Designing for Analytics. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Brian T. O’Neill from Designing for Analytics 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://player.fm/legal.

Today I’m joined by Vera Liao, Principal Researcher at Microsoft. Vera is a part of the FATE (Fairness, Accountability, Transparency, and Ethics of AI) group, and her research centers around the ethics, explainability, and interpretability of AI products. She is particularly focused on how designers design for explainability. Throughout our conversation, we focus on the importance of taking a human-centered approach to rendering model explainability within a UI, and why incorporating users during the design process informs the data science work and leads to better outcomes. Vera also shares some research on why example-based explanations tend to out-perform [model] feature-based explanations, and why traditional XAI methods LIME and SHAP aren’t the solution to every explainability problem a user may have.

Highlights/ Skip to:

  • I introduce Vera, who is Principal Researcher at Microsoft and whose research mainly focuses on the ethics, explainability, and interpretability of AI (00:35)
  • Vera expands on her view that explainability should be at the core of ML applications (02:36)
  • An example of the non-human approach to explainability that Vera is advocating against (05:35)
  • Vera shares where practitioners can start the process of responsible AI (09:32)
  • Why Vera advocates for doing qualitative research in tandem with model work in order to improve outcomes (13:51)
  • I summarize the slides I saw in Vera’s deck on Human-Centered XAI and Vera expands on my understanding (16:06)
  • Vera’s success criteria for explainability (19:45)
  • The various applications of AI explainability that Vera has seen evolve over the years (21:52)
  • Why Vera is a proponent of example-based explanations over model feature ones (26:15)
  • Strategies Vera recommends for getting feedback from users to determine what the right explainability experience might be (32:07)
  • The research trends Vera would most like to see technical practitioners apply to their work (36:47)
  • Summary of the four-step process Vera outlines for Question-Driven XAI design (39:14)

Links

  continue reading

113 episodes

Artwork
iconShare
 
Manage episode 376109532 series 2527129
Content provided by Brian T. O’Neill from Designing for Analytics. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Brian T. O’Neill from Designing for Analytics 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://player.fm/legal.

Today I’m joined by Vera Liao, Principal Researcher at Microsoft. Vera is a part of the FATE (Fairness, Accountability, Transparency, and Ethics of AI) group, and her research centers around the ethics, explainability, and interpretability of AI products. She is particularly focused on how designers design for explainability. Throughout our conversation, we focus on the importance of taking a human-centered approach to rendering model explainability within a UI, and why incorporating users during the design process informs the data science work and leads to better outcomes. Vera also shares some research on why example-based explanations tend to out-perform [model] feature-based explanations, and why traditional XAI methods LIME and SHAP aren’t the solution to every explainability problem a user may have.

Highlights/ Skip to:

  • I introduce Vera, who is Principal Researcher at Microsoft and whose research mainly focuses on the ethics, explainability, and interpretability of AI (00:35)
  • Vera expands on her view that explainability should be at the core of ML applications (02:36)
  • An example of the non-human approach to explainability that Vera is advocating against (05:35)
  • Vera shares where practitioners can start the process of responsible AI (09:32)
  • Why Vera advocates for doing qualitative research in tandem with model work in order to improve outcomes (13:51)
  • I summarize the slides I saw in Vera’s deck on Human-Centered XAI and Vera expands on my understanding (16:06)
  • Vera’s success criteria for explainability (19:45)
  • The various applications of AI explainability that Vera has seen evolve over the years (21:52)
  • Why Vera is a proponent of example-based explanations over model feature ones (26:15)
  • Strategies Vera recommends for getting feedback from users to determine what the right explainability experience might be (32:07)
  • The research trends Vera would most like to see technical practitioners apply to their work (36:47)
  • Summary of the four-step process Vera outlines for Question-Driven XAI design (39:14)

Links

  continue reading

113 episodes

All episodes

×
 
Loading …

Welcome to Player FM!

Player FM is scanning the web for high-quality podcasts for you to enjoy right now. It's the best podcast app and works on Android, iPhone, and the web. Signup to sync subscriptions across devices.

 

Quick Reference Guide