Targeted Active Learning for Bayesian Decision-Making

Louis Filstroff, Iiris Sundin, Petrus Mikkola, Aleksei Tiulpin, Juuso Kylmäoja, Samuel Kaski

Research output: Contribution to journalArticlepeer-review

Abstract

Active learning is usually applied to acquire labels of informative data points in supervised learning, to maximize accuracy in a sample-efficient way. However, maximizing the accuracy is not the end goal when the results are used for decision-making, for example in personalized medicine or economics. We argue that when acquiring samples sequentially, separating learning and decision-making is sub-optimal, and we introduce a novel active learning strategy which takes the down-the-line decision problem into account. Specifically, we introduce a novel active learning criterion which maximizes the expected information gain on the posterior distribution of the optimal decision. We compare our decision-making-aware active learning strategy to existing alternatives on both simulated and real data, and show improved performance in decision-making accuracy.
Original languageEnglish
JournalSubmitted
Publication statusPublished - 22 Oct 2021

Keywords

  • Machine learning
  • Artificial Intelligence

Research Beacons, Institutes and Platforms

  • Institute for Data Science and AI
  • Digital Futures
  • Sustainable Futures

Fingerprint

Dive into the research topics of 'Targeted Active Learning for Bayesian Decision-Making'. Together they form a unique fingerprint.

Cite this