
Sign up to save your podcasts
Or


Today's episode discusses the accuracy paradox. There are cases when one might prefer a less accurate model because it yields more predictive power or better captures the underlying causal factors describing the outcome variable you are interested in. This is especially relevant in machine learning when trying to predict rare events. We discuss how the accuracy paradox might apply if you were trying to predict the likelihood a person was a bird owner.
By Kyle Polich4.4
475475 ratings
Today's episode discusses the accuracy paradox. There are cases when one might prefer a less accurate model because it yields more predictive power or better captures the underlying causal factors describing the outcome variable you are interested in. This is especially relevant in machine learning when trying to predict rare events. We discuss how the accuracy paradox might apply if you were trying to predict the likelihood a person was a bird owner.

290 Listeners

622 Listeners

584 Listeners

302 Listeners

332 Listeners

228 Listeners

205 Listeners

205 Listeners

306 Listeners

96 Listeners

516 Listeners

262 Listeners

130 Listeners

228 Listeners

624 Listeners