Learning Preconditions for Planning from Plan Traces and HTN Structure
Abstract
A great challenge in developing planning systems for practical applications is the difficulty of acquiring the domain information needed to guide such systems. This paper describes a way to learn some of that knowledge. More specifically: We introduce a theoretical basis for formally defining algorithms that learn preconditions for HTN methods. We describe CaMeL, a supervised, eager, and incremental learning process for preconditions of HTN methods. We state and prove theorems about CaMeL's soundness, completeness, and convergence properties. We present empirical results about CaMeL's convergence under various conditions. Among other things, CaMeL converges the fastest on the preconditions of the HTN methods that are needed the most often. Thus CaMeL's output can be useful even before it has fully converged.
Document Details
- Document Type
- Technical Report
- Publication Date
- Jan 01, 2006
- Accession Number
- ADA448060
Entities
People
- Dana S. Nau
- David W. Aha
- Hector Munoz-avila
- Okhtay Ilghami
Organizations
- University of Maryland