Formal approaches to a definition of agents
Martin Biehl

TL;DR
This thesis formalizes the concept of agents within multivariate Markov chains, introducing a new measure called complete local integration to identify entities as spatiotemporal patterns, and defines actions and perceptions for these entities.
Contribution
It introduces the measure CLI for identifying entities, formalizes entity definitions beyond perception-action loops, and provides a framework for actions and perceptions in multivariate Markov chains.
Findings
$ta-entities are blocks in specific partitions of trajectories.
CLI is based on SLI and minimized over all partitions.
Perception-action loop is too restrictive for general entity definitions.
Abstract
This thesis contributes to the formalisation of the notion of an agent within the class of finite multivariate Markov chains. Agents are seen as entities that act, perceive, and are goal-directed. We present a new measure that can be used to identify entities (called -entities), some general requirements for entities in multivariate Markov chains, as well as formal definitions of actions and perceptions suitable for such entities. The intuition behind -entities is that entities are spatiotemporal patterns for which every part makes every other part more probable. The measure, complete local integration (CLI), is formally investigated in general Bayesian networks. It is based on the specific local integration (SLI) which is measured with respect to a partition. CLI is the minimum value of SLI over all partitions. We prove that -entities are blocks in specific…
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Taxonomy
TopicsSemantic Web and Ontologies · Multi-Agent Systems and Negotiation
