We Can Measure XAI Explanations Better with Templates | AISC

Published on ● Video Link: https://www.youtube.com/watch?v=bD5_q2t-4S8



Duration: 44:52
221 views
8


For slides and more information on the paper, visit https://ai.science/e/we-can-measure-xai-explanations-better-with-templates--GJF2uhyoqDUXwR8ESj4y

Speaker: Jonathan Dodge; Host: Ali El-Sharif

Motivation:
Jonathan will present his work that argues that the Explainable AI (XAI) research community needs to think harder about how to compare, measure, and describe the quality of XAI explanations. The work demonstrates that one (or a few) explanations can be reasonably assessed with methods of the “Explanation Satisfaction” type, but that scaling up our ability to evaluate explanations requires more development of “Explanation Goodness” methods.

#explainableai #xai #ai #machinelearning




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