Litcius/Paper detail

A primer on partially observable Markov decision processes (POMDPs)

Iadine Chadès, Luz Valerie Pascal, Sam Nicol, Cameron S. Fletcher, Jonathan Ferrer‐Mestres

2021Methods in Ecology and Evolution36 citationsDOIOpen Access PDF

Abstract

Abstract Partially observable Markov decision processes (POMDPs) are a convenient mathematical model to solve sequential decision‐making problems under imperfect observations. Most notably for ecologists, POMDPs have helped solve the trade‐offs between investing in management or surveillance and, more recently, to optimise adaptive management problems. Despite an increasing number of applications in ecology and natural resources, POMDPs are still poorly understood. The complexity of the mathematics, the inaccessibility of POMDP solvers developed by the Artificial Intelligence (AI) community, and the lack of introductory material are likely reasons for this. We propose to bridge this gap by providing a primer on POMDPs, a typology of case studies drawn from the literature, and a repository of POMDP problems. We explain the steps required to define a POMDP when the state of the system is imperfectly detected (state uncertainty) and when the dynamics of the system are unknown (model uncertainty). We provide input files and solutions to a selected number of problems, reflect on lessons learned applying these models over the last 10 years and discuss future research required on interpretable AI. Partially observable Markov decision processes are powerful decision models that allow users to make decisions under imperfect observations over time. This primer will provide a much‐needed entry point to ecologists.

Topics & Concepts

Partially observable Markov decision processComputer scienceMarkov decision processObservableDecision problemImperfectState (computer science)Markov chainArtificial intelligenceMachine learningManagement scienceOperations researchMarkov processMarkov modelMathematicsAlgorithmEconomicsPhilosophyPhysicsStatisticsLinguisticsQuantum mechanicsBayesian Modeling and Causal InferenceGene Regulatory Network AnalysisReinforcement Learning in Robotics