Identifiable Latent Bandits: Leveraging observational data for personalized decision-making
Journal article, 2026

Sequential decision-making algorithms such as multi-armed bandits can find optimal personalized decisions, but are notoriously sample-hungry. In personalized medicine, for example, training a bandit from scratch for every patient is typically infeasible, as the number of trials required is much larger than the number of decision points for a single patient. To combat this, latent bandits offer rapid exploration and personalization beyond what context variables alone can offer, provided that a latent variable model of problem instances can be learned consistently. However, existing works give no guidance as to how such a model can be found. In this work, we propose an identifiable latent bandit framework that leads to optimal decision-making with a shorter exploration time than classical bandits by learning from historical records of decisions and outcomes. Our method is based on nonlinear independent component analysis that provably identifies representations from observational data sufficient to infer optimal actions in new bandit instances. We verify this strategy in simulated and semi-synthetic environments, showing substantial improvement over online and offline learning baselines when identifying conditions are satisfied.

Author

Ahmet Zahid Balcioglu

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

University of Gothenburg

Newton Mwai Kinyanjui

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

University of Gothenburg

Emil Carlsson

Sleep Cycle

Fredrik Johansson

University of Gothenburg

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

Transactions on Machine Learning Research

28358856 (eISSN)

Vol. 2026-May

Subject Categories (SSIF 2025)

Robotics and automation

Computer Sciences

Control Engineering

More information

Latest update

5/25/2026