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引用次数: 4

摘要

可靠和可扩展的环境智能意味着一个分布式的代理系统,这些代理能够根据情况的要求协同工作或自主工作。在之前的研究中,我们赞成使用可以在代理之间分布的上下文信息的表示,以便每个代理只知道与其活动相关的信息。识别有趣的信息或相关情况是通过使用上下文模式来完成的——使用正则表达式标记的具有潜在未知节点和边缘的图形模式。在这种情况下,对于代理来说,一个主要的挑战是使用图形匹配算法,该算法要足以满足代理运行的设备的可能性。此外,该算法必须能够提供部分匹配。本文提出了一种专门针对这一问题设计的算法,该算法使用增长部分匹配来获得上下文图中与上下文模式(部分)匹配的最大子图。用该算法进行了实验,并将其性能与其他适用于该问题的算法进行了比较。
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Context Matching for Ambient Intelligence Applications
Reliable and scalable Ambient Intelligence means a distributed system of agents that are capable of working together or autonomously, depending on the requirements of the situation. In previous research we have argued in favor of the use of a representation for context information that can be distributed among agents, so that each agent knows only the information that is relevant to its activity. Recognizing interesting information or relevant situations is done by using context patterns -- graph patterns with potentially unknown nodes and edges labeled with regular expressions. In this context, a major challenge is for agents to use a graph matching algorithm that is adequate to the possibilities of the devices on which the agents are running. Moreover, it is necessary that the algorithm is able to provide partial matches. This paper presents an algorithm specifically designed for this problem, that uses growing partial matches to obtain the maximum sub-graph of the context graph that matches (part of) the context pattern. Experiments were performed with the algorithm and its performance has been compared with that of other algorithms adapted to our problem.
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