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Normative Rule Extraction from Implicit Learning into Explicit Representation

机译:从隐式学习中提取明确表示的规范性规则提取

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Normative multi-agent research is an alternative viewpoint in the design of adaptive autonomous agent architecture. Norms specify the standards of behaviors such as which actions or states should be achieved or avoided. The concept of norm synthesis is the process of generating useful normative rules. This study proposes a model for normative rule extraction from implicit learning, namely using the Q-learning algorithm, into explicit norm representation by implementing Dynamic Deontics and Hierarchical Knowledge Base (HKB) to synthesize useful normative rules in the form of weighted state-action pairs with deontic modality. OpenAi Gym is used to simulate the agent environment. Our proposed model is able to generate both obligative and prohibitive norms as well as deliberate and execute said norms. Results show the generated norms are best used as prior knowledge to guide agent behavior and performs poorly if not complemented by another agent coordination mechanism. Performance increases when using both obligation and prohibition norms, and in general, norms do speed up optimum policy reachability.
机译:规范多剂的研究是自适应自主代理架构设计中的替代观点。规范指定行为标准,例如应达到或避免该行动或国家。规范合成的概念是产生有用的规范规则的过程。本研究提出了一种模型,用于通过实现动态文字和分层知识库(HKB)来综合规范基于Quication Require的规范性规则提取模型,以通过加权状态 - 动作对的形式合成有用的规范规则患有语气的模态。 Openai健身房用于模拟代理环境。我们所提出的模型能够生成义务和禁止规范以及故意并执行所述规范。结果显示所生成的规范是最佳用作先前知识,以指导代理行为,如果没有被另一代理协调机制补充。使用义务和禁令规范时,性能会增加,并且通常,规范确实加快了最佳的政策可达性。

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