
Sign up to save your podcasts
Or


Deep neural networks are undeniably effective. They rely on such a high number of parameters, that they are appropriately described as "black boxes".
While black boxes lack desirably properties like interpretability and explainability, in some cases, their accuracy makes them incredibly useful.
But does achiving "usefulness" require a black box? Can we be sure an equally valid but simpler solution does not exist?
Cynthia Rudin helps us answer that question. We discuss her recent paper with co-author Joanna Radin titled (spoiler warning)…
Why Are We Using Black Box Models in AI When We Don't Need To? A Lesson From An Explainable AI Competition
By Kyle Polich4.4
475475 ratings
Deep neural networks are undeniably effective. They rely on such a high number of parameters, that they are appropriately described as "black boxes".
While black boxes lack desirably properties like interpretability and explainability, in some cases, their accuracy makes them incredibly useful.
But does achiving "usefulness" require a black box? Can we be sure an equally valid but simpler solution does not exist?
Cynthia Rudin helps us answer that question. We discuss her recent paper with co-author Joanna Radin titled (spoiler warning)…
Why Are We Using Black Box Models in AI When We Don't Need To? A Lesson From An Explainable AI Competition

290 Listeners

622 Listeners

584 Listeners

301 Listeners

333 Listeners

228 Listeners

206 Listeners

203 Listeners

306 Listeners

96 Listeners

519 Listeners

261 Listeners

132 Listeners

228 Listeners

617 Listeners