The logical foundations of goal-regression planning in autonomous agents

作者:

摘要

This paper addresses the logical foundations of goal-regression planning in autonomous rational agents. It focuses mainly on three problems. The first is that goals and subgoals will often be conjunctions, and to apply goal-regression planning to a conjunction we usually have to plan separately for the conjuncts and then combine the resulting subplans. A logical problem arises from the fact that the subplans may destructively interfere with each other. This problem has been partially solved in the AI literature (e.g., in SNLP and UCPOP), but the solutions proposed there work only when a restrictive assumption is satisfied. This assumption pertains to the computability of threats. It is argued that this assumption may fail for an autonomous rational agent operating in a complex environment. Relaxing this assumption leads to a theory of defeasible planning. The theory is formulated precisely and an implementation in the OSCAR architecture is discussed.

论文关键词:Autonomous agents,Defeasible reasoning,Goal regression,OSCAR,Planning

论文评审过程:Received 1 April 1998, Revised 17 August 1998, Available online 28 June 1999.

论文官网地址:https://doi.org/10.1016/S0004-3702(98)00100-3