Asimovian Adaptive Agents

Author:

Gordon D. F.

Abstract

The goal of this research is to develop agents that are adaptive and predictable and timely. At first blush, these three requirements seem contradictory. For example, adaptation risks introducing undesirable side effects, thereby making agents' behavior less predictable. Furthermore, although formal verification can assist in ensuring behavioral predictability, it is known to be time-consuming. Our solution to the challenge of satisfying all three requirements is the following. Agents have finite-state automaton plans, which are adapted online via evolutionary learning (perturbation) operators. To ensure that critical behavioral constraints are always satisfied, agents' plans are first formally verified. They are then reverified after every adaptation. If reverification concludes that constraints are violated, the plans are repaired. The main objective of this paper is to improve the efficiency of reverification after learning, so that agents have a sufficiently rapid response time. We present two solutions: positive results that certain learning operators are a priori guaranteed to preserve useful classes of behavioral assurance constraints (which implies that no reverification is needed for these operators), and efficient incremental reverification algorithms for those learning operators that have negative a priori results.

Publisher

AI Access Foundation

Subject

Artificial Intelligence

Cited by 20 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Verification and repair of control policies for safe reinforcement learning;Applied Intelligence;2017-08-05

2. Dynamic verification of hierarchical multi-agent plans;Multiagent and Grid Systems;2017-07-04

3. LEARNING AND VERIFYING SAFETY CONSTRAINTS FOR PLANNERS IN A KNOWLEDGE-IMPOVERISHED SYSTEM;Computational Intelligence;2012-04-23

4. NeVer: a tool for artificial neural networks verification;Annals of Mathematics and Artificial Intelligence;2011-07

5. Safe and effective learning: A case study;2010 IEEE International Conference on Robotics and Automation;2010-05

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