Decision-Theoretic Planning with non-Markovian Rewards

09/11/2011
by   C. Gretton, et al.
0

A decision process in which rewards depend on history rather than merely on the current state is called a decision process with non-Markovian rewards (NMRDP). In decision-theoretic planning, where many desirable behaviours are more naturally expressed as properties of execution sequences rather than as properties of states, NMRDPs form a more natural model than the commonly adopted fully Markovian decision process (MDP) model. While the more tractable solution methods developed for MDPs do not directly apply in the presence of non-Markovian rewards, a number of solution methods for NMRDPs have been proposed in the literature. These all exploit a compact specification of the non-Markovian reward function in temporal logic, to automatically translate the NMRDP into an equivalent MDP which is solved using efficient MDP solution methods. This paper presents NMRDPP (Non-Markovian Reward Decision Process Planner), a software platform for the development and experimentation of methods for decision-theoretic planning with non-Markovian rewards. The current version of NMRDPP implements, under a single interface, a family of methods based on existing as well as new approaches which we describe in detail. These include dynamic programming, heuristic search, and structured methods. Using NMRDPP, we compare the methods and identify certain problem features that affect their performance. NMRDPPs treatment of non-Markovian rewards is inspired by the treatment of domain-specific search control knowledge in the TLPlan planner, which it incorporates as a special case. In the First International Probabilistic Planning Competition, NMRDPP was able to compete and perform well in both the domain-independent and hand-coded tracks, using search control knowledge in the latter.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/19/2012

Implementation and Comparison of Solution Methods for Decision Processes with Non-Markovian Rewards

This paper examines a number of solution methods for decision processes ...
research
12/12/2012

Anytime State-Based Solution Methods for Decision Processes with non-Markovian Rewards

A popular approach to solving a decision process with non-Markovian rewa...
research
09/26/2020

Online Learning of Non-Markovian Reward Models

There are situations in which an agent should receive rewards only after...
research
08/18/2020

A Relation Analysis of Markov Decision Process Frameworks

We study the relation between different Markov Decision Process (MDP) fr...
research
05/09/2012

Regret-based Reward Elicitation for Markov Decision Processes

The specification of aMarkov decision process (MDP) can be difficult. Re...
research
12/24/2021

Multi-Provider NFV Network Service Delegation via Average Reward Reinforcement Learning

In multi-provider 5G/6G networks, service delegation enables administrat...
research
03/02/2020

Learning and Solving Regular Decision Processes

Regular Decision Processes (RDPs) are a recently introduced model that e...

Please sign up or login with your details

Forgot password? Click here to reset