Automated Machine Learning, or AutoML, tries hundreds or even thousands of different ML pipelines to deliver models that often beat the experts and win competitions. But, is this the ultimate goal? Can a model developed with this approach be trusted without guarantees of predictive performance? The issue of overfitting must be closely considered because these methods can lead to overestimation -- and the Winner's Curse.
Check out the full article at KDNuggets.com website
Can you trust AutoML?
Check out the full article at KDNuggets.com website
Can you trust AutoML?
Comments
Post a Comment