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Generalising Symbolic Knowledge in Online Classification and Prediction

机译:在线分类和预测中的符号知识泛化

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Increasingly, researchers and developers of knowledge based systems (KBS) have been incorporating the notion of context. For instance, Repertory Grids, Formal Concept Analysis (FCA) and Ripple-Down Rules (RDR) all integrate either implicit or explicit contextual information. However, these methodologies treat context as a static entity, neglecting many connectionists' work in learning hidden and dynamic contexts, which aid their ability to generalize. This paper presents a method that models hidden context within a symbolic domain in order to achieve a level of generalisation. The method developed builds on the already established Multiple Classification Ripple-Down Rules (MCRDR) approach and is referred to as Rated MCRDR (RM). RM retains a symbolic core, while using a connection based approach to learn a deeper understanding of the captured knowledge. This method is applied to a number of classification and prediction environments and results indicate that the method can learn the information that experts have difficulty providing.
机译:基于知识的系统(KBS)的研究人员和开发人员越来越多地纳入上下文的概念。例如,库目网格,形式概念分析(FCA)和波纹下移规则(RDR)都集成了隐式或显式上下文信息。但是,这些方法将上下文视为静态实体,而忽略了许多连接主义者在学习隐藏的和动态的上下文中的工作,这有助于他们的概括能力。本文提出了一种在符号域中对隐藏上下文建模的方法,以实现一定程度的概括。开发的方法建立在已经建立的多重降级规则(MCRDR)方法的基础上,被称为额定MCRDR(RM)。 RM保留了符号核心,同时使用基于连接的方法来学习对所捕获知识的更深入理解。该方法应用于多种分类和预测环境,结果表明该方法可以学习专家难以提供的信息。

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