Multicalibrated Partitions for Importance Weights
Parikshit Gopalan, Omer Reingold, Vatsal Sharan, Udi Wieder

TL;DR
This paper introduces a novel approach using multicalibrated partitions to improve the estimation of importance weights from samples, addressing limitations of previous methods and providing bounds for set-wise accuracy.
Contribution
It proposes a new multicalibration-based method for importance weight estimation that ensures set-wise accuracy bounds and improves upon MaxEntropy approaches.
Findings
The new method satisfies set-wise accuracy bounds.
It outperforms MaxEntropy in high-importance sets.
Efficient algorithm under standard learnability assumptions.
Abstract
The ratio between the probability that two distributions and give to points are known as importance weights or propensity scores and play a fundamental role in many different fields, most notably, statistics and machine learning. Among its applications, importance weights are central to domain adaptation, anomaly detection, and estimations of various divergences such as the KL divergence. We consider the common setting where and are only given through samples from each distribution. The vast literature on estimating importance weights is either heuristic, or makes strong assumptions about and or on the importance weights themselves. In this paper, we explore a computational perspective to the estimation of importance weights, which factors in the limitations and possibilities obtainable with bounded computational resources. We significantly strengthen…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Domain Adaptation and Few-Shot Learning · Bayesian Modeling and Causal Inference
