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Schematic interpretation and the CLARET consolidated learning algorithm

机译:示意图解释和克莱特综合学习算法

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A new learning algorithm, the Consolidated Learning Algorithm based on Relational Evidence Theory (CLARET) is presented, which relies on inductive logic programming and graph matching techniques. In relational evidence theory, two different approaches to evidential learning are consolidated in how they apply to generalising within relational data structures. Attribute-based discrimination (decision trees) is integrated with part-based interpretation (graph matching) for evaluating and updating representations in spatial domains. This allows an interpretation stage to be incorporated into the generalization process. A systematic approach to finding interpretations is demonstrated for an online, hand drawn, schematic diagram and symbols recognition system. The approach uses an adaptive representational bias and search strategy during learning by efficiently grounding the learning procedures in the relational spatial constraints of their application.
机译:一种新的学习算法,介绍了基于关系证据理论(克莱特)的整合学习算法,依赖于电感逻辑编程和图形匹配技术。在关系证据理论中,两种不同的证据学习方法都在合并数据结构中的普遍存在中巩固了综合。基于属性的歧视(决策树)与基于部分的解释(图匹配)集成,用于评估和更新空间域中的表示。这允许将解释阶段结合到泛化过程中。对在线,手绘,示意图和符号识别系统进行了系统寻找解释的系统方法。该方法在学习期间使用自适应代表性偏置和搜索策略,通过有效地将学习过程有效地接地,在其应用的关系空间限制中。

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