Graph explorer

Bootstrapping Skills

The monolithic approach to policy representation in Markov Decision Processes (MDPs) looks for a single policy that can be represented as a function from states to actions. For the monolithic approach to succeed (and this is not always possible), a complex feature representation is often necessary since the policy is a complex object that has to prescribe what actions to take all over the state space. This is especially true in large domains with complicated dynamics. It is also computationally inefficient to both learn and plan in MDPs using a complex monolithic approach. We present a different approach where we restrict the policy space to policies that can be represented as combinations of simpler, parameterized skills---a type of temporally extended action, with a simple policy representation. We introduce Learning Skills via Bootstrapping (LSB) that can use a broad family of Reinforcement Learning (RL) algorithms as a "black box" to iteratively learn parametrized skills. Initially, the learned skills are short-sighted but each iteration of the algorithm allows the skills to bootstrap off one another, improving each skill in the process. We prove that this bootstrapping

5 nodes5 linksoverview mapBootstrapping Skills
5 nodes5 links
Bootstrapping Skills5 visible / 5 total nodes / 8 links
Works onCo-authorshipCo-authorshipCo-authorshipAuthorshipAuthorshipAuthorshipTopic signalWBootstrapping Skillspreprint / 2015ADaniel J. MankowitzResearcherATimothy A. MannResearcherAShie MannorResearcherTArtificial Intelligence22915 works
PaperSignal 104 links

Bootstrapping Skills

preprint / 2015

Open