Backward-Compatible Prediction Updates: A Probabilistic Approach
–Neural Information Processing Systems
When machine learning systems meet real world applications, accuracy is only one of several requirements. While new improved models develop at a fast pace, downstream tasks vary more slowly or stay constant. Assume that we have a large unlabelled data set for which we want to maintain accurate predictions. Whenever a new and presumably better ML models becomes available, we encounter two problems: (i) given a limited budget, which data points should be re-evaluated using the new model?; and (ii) if the new predictions differ from the current ones, should we update? Problem (i) is about compute cost, which matters for very large data sets and models.
Neural Information Processing Systems
Oct-9-2024, 09:03:25 GMT
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