Directions in ML: Automating ML Performance Metric Selection

Subscribers:
344,000
Published on ● Video Link: https://www.youtube.com/watch?v=fxBpePJxCKc



Duration: 59:40
885 views
25


From music recommendations to high-stakes medical treatment selection, complex decision-making tasks are increasingly automated as classification problems. Thus, there is a growing need for classifiers that accurately reflect complex decision-making goals. One often formalizes these learning goals via a performance metric, which, in turn, can be used to evaluate and compare classifiers. Yet, choosing the appropriate metric remains a challenging problem. This talk will outline metric elicitation as a formal strategy to address the metric selection problem. Metric elicitation automates the discovery of implicit preferences from an expert or an expert panel using relatively efficient and straightforward interactive queries. Beyond standard classification settings, I will also outline early work on metric selection for group-fair classification.

Learn more about the 2020-2021 Directions in ML: AutoML and Automating Algorithms virtual speaker series: https://aka.ms/diml




Other Videos By Microsoft Research


2021-03-08AI and Gaming Research Summit 2021: Responsible Gaming (Day 2 Track 2.1)
2021-03-08AI and Gaming Research Summit 2021 - Understanding Players (Day 2 Track 1.2)
2021-03-08AI and Gaming Research Summit 2021 - AI Agents (Day 2 Track 1.1)
2021-03-08AI and Gaming Research Summit 2021: Making Things that Make Things
2021-03-02IROS 2020 - Mixed Reality and Robotics Tutorial - Demo 1: Interaction
2021-03-02IROS 2020 - Mixed Reality and Robotics Tutorial - Demo 2: Co-localization
2021-02-16Interactive Error Resilience and the Surprising Power of Feedback
2021-02-12Microsoft Research Conversations in STEM: Medical and Health Technology
2021-02-12Microsoft Research Conversations in STEM: Research in STEM as a Career
2021-02-12Microsoft Research Conversations in STEM: Future Horizons of Science
2021-02-12Directions in ML: Automating ML Performance Metric Selection
2021-01-28Reinforcement Learning (RL) Open Source Fest 2020 | Day 1 Demos
2021-01-252021 Microsoft Research Ada Lovelace Fellow: Stefany Cruz
2021-01-252021 Microsoft Research PhD Fellow: Váleri N. Vasquez
2021-01-252021 Microsoft Research Ada Lovelace Fellow: Xinyu Wu
2021-01-252021 Microsoft Research PhD Fellow: Sekwon Lee
2021-01-252021 Microsoft Research PhD Fellow: Randi Williams
2021-01-252021 Microsoft Research PhD Fellow: Morgan Klaus Scheuerman
2021-01-252021 Microsoft Research PhD Fellow: Adebayo Eisape
2021-01-252021 Microsoft Research Ada Lovelace Fellow: Demba Komma
2021-01-252021 Microsoft Research Ada Lovelace Fellow: Emma Dauterman