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CILIOS: Connectionist inductive learning and inter-ontology similarities for recommending information agents

机译:CILIOS:推荐信息代理的连接主义者的归纳学习和本体论相似性

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摘要

For a software information agent, operating on behalf of a human owner and belonging to a community of agents, the choice of communicating or not with another agent becomes a decision to take, since communication generally implies a cost. Since these agents often operate as recommender systems, on the basis of dynamic recognition of their human owners' behaviour and by generally using hybrid machine learning techniques, three main necessities arise in their design, namely (ⅰ) providing the agent with an internal representation of both interests and behaviour of its owner, usually called ontology; (ⅱ) detecting inter-ontology properties that can help an agent to choose the most promising agents to be contacted for knowledge-sharing purposes; (ⅲ) semi-automatically constructing the agent ontology, by simply observing the behaviour of the user supported by the agent, leaving to the user only the task of defining concepts and categories of interest. We present a complete MAS architecture, called connectionist learning and inter-ontology similarities (CILIOS), for supporting agent mutual monitoring, trying to cover all the issues above. CILIOS exploits an ontology model able to represent concepts, concept collections, functions and causal implications among events in a multi-agent environment; moreover, it uses a mechanism capable of inducing logical rules representing agent behaviour in the ontology by means of a connectionist ontology representation, based on neural-symbolic networks, i.e., networks whose input and output nodes are associated with logic variables.
机译:对于代表人类所有者进行操作并属于代理社区的软件信息代理,选择与其他代理进行通信或不进行通信成为选择决定,因为通信通常会带来成本。由于这些代理通常作为推荐系统运行,因此在动态识别其人类主人的行为的基础上,并且通常使用混合机器学习技术,因此在其设计中出现了三个主要必要条件,即(ⅰ)为代理提供内部表示。所有者的利益和行为,通常称为本体; (ⅱ)检测本体间的属性,以帮助代理选择最有希望的代理以进行知识共享; (ⅲ)通过简单地观察代理支持的用户的行为来半自动地构建代理本体,而仅将定义概念和兴趣类别的任务留给用户。我们提出了一个完整的MAS体系结构,称为连接主义学习和本体论间相似性(CILIOS),用于支持代理程序相互监视,以尝试解决上述所有问题。 CILIOS利用一种本体模型来表示概念,概念集合,功能以及多主体环境中事件之间的因果关系。此外,它使用一种机制,该机制能够基于神经符号网络,即其输入和输出节点与逻辑变量相关联的网络,通过连接论者本体表示来诱导表示本体中代理行为的逻辑规则。

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