AIFeb 14, 2012

Belief change with noisy sensing in the situation calculus

arXiv:1202.3743v19 citations
Originality Incremental advance
AI Analysis

This addresses noisy sensing in belief change for AI agents, but is an incremental extension of prior work.

The paper tackles the problem of noisy sensing actions causing inconsistencies in situation calculus belief change frameworks, extending an existing framework to handle noisy sensings and proving agents can detect actual situations when noisy sensing ratios are limited.

Situation calculus has been applied widely in artificial intelligence to model and reason about actions and changes in dynamic systems. Since actions carried out by agents will cause constant changes of the agents' beliefs, how to manage these changes is a very important issue. Shapiro et al. [22] is one of the studies that considered this issue. However, in this framework, the problem of noisy sensing, which often presents in real-world applications, is not considered. As a consequence, noisy sensing actions in this framework will lead to an agent facing inconsistent situation and subsequently the agent cannot proceed further. In this paper, we investigate how noisy sensing actions can be handled in iterated belief change within the situation calculus formalism. We extend the framework proposed in [22] with the capability of managing noisy sensings. We demonstrate that an agent can still detect the actual situation when the ratio of noisy sensing actions vs. accurate sensing actions is limited. We prove that our framework subsumes the iterated belief change strategy in [22] when all sensing actions are accurate. Furthermore, we prove that our framework can adequately handle belief introspection, mistaken beliefs, belief revision and belief update even with noisy sensing, as done in [22] with accurate sensing actions only.

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