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Information-directed sampling for bandits: a primer

Machine Learning 2025-12-24 v1 Information Theory math.IT

Abstract

The Multi-Armed Bandit problem provides a fundamental framework for analyzing the tension between exploration and exploitation in sequential learning. This paper explores Information Directed Sampling (IDS) policies, a class of heuristics that balance immediate regret against information gain. We focus on the tractable environment of two-state Bernoulli bandits as a minimal model to rigorously compare heuristic strategies against the optimal policy. We extend the IDS framework to the discounted infinite-horizon setting by introducing a modified information measure and a tuning parameter to modulate the decision-making behavior. We examine two specific problem classes: symmetric bandits and the scenario involving one fair coin. In the symmetric case we show that IDS achieves bounded cumulative regret, whereas in the one-fair-coin scenario the IDS policy yields a regret that scales logarithmically with the horizon, in agreement with classical asymptotic lower bounds. This work serves as a pedagogical synthesis, aiming to bridge concepts from reinforcement learning and information theory for an audience of statistical physicists.

Keywords

Cite

@article{arxiv.2512.20096,
  title  = {Information-directed sampling for bandits: a primer},
  author = {Annika Hirling and Giorgio Nicoletti and Antonio Celani},
  journal= {arXiv preprint arXiv:2512.20096},
  year   = {2025}
}
R2 v1 2026-07-01T08:38:06.668Z