学习定性约束网络

Time Pub Date : 2018-01-01 DOI:10.4230/LIPIcs.TIME.2018.19
Malek Mouhoub, H. Marri, Eisa A. Alanazi
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引用次数: 5

摘要

时空推理是人工智能及其相关领域的基本任务,包括调度、规划和地理信息系统(GIS)。在这些应用中,我们经常处理不完整的定性信息。在这方面,使用定性约束网络(QCNs)的时间和空间的符号表示因此是实质性的。我们提出了一种从非专家那里学习QCN的新算法。学习过程包括不同的情况,其中查询用户是一项基本任务。在这里,要求成员查询是为了引出时间或空间实体对之间的时间或空间关系。在此获取过程中,通过路径一致性(PC)执行约束传播,以减少到达目标QCN所需的成员查询数量。我们使用学习理论机制来证明从查询中学习路径一致的QCNs的一些限制。我们的算法的时间性能已经在不同的场景下进行了实验评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Qualitative Constraint Networks
Temporal and spatial reasoning is a fundamental task in artificial intelligence and its related areas including scheduling, planning and Geographic Information Systems (GIS). In these applications, we often deal with incomplete and qualitative information. In this regard, the symbolic representation of time and space using Qualitative Constraint Networks (QCNs) is therefore substantial. We propose a new algorithm for learning a QCN from a non expert. The learning process includes different cases where querying the user is an essential task. Here, membership queries are asked in order to elicit temporal or spatial relationships between pairs of temporal or spatial entities. During this acquisition process, constraint propagation through Path Consistency (PC) is performed in order to reduce the number of membership queries needed to reach the target QCN. We use the learning theory machinery to prove some limits on learning path consistent QCNs from queries. The time performances of our algorithm have been experimentally evaluated using different scenarios.
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