NEFCIS:基于神经模糊概念的规范挖掘推理系统

Arunprasath Shankar, B. Singh, F. Wolff, C. Papachristou
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引用次数: 3

摘要

在基于组件的工程方法中,可以将系统设想为可重用且独立开发的组件的集合。为了生产支持组件选择和装配的自动化工具,需要基于产品规格的精确选择和检索策略。传统方法使用基于关键字的模型来自动检索符合一组需求的规范文档。这些方法通常无法挖掘关系,并且过度关注注入匹配。本文提出了一种基于神经模糊概念的推理系统(NEFCIS),它是一种新型的混合专家系统方法,旨在提取概念并利用提取的概念而不仅仅是关键字来检索相关信息。通过在模型中加入模糊逻辑,我们可以更精确地处理查询,并产生更深入的知识推理。我们描述了所提出的方法的基本原则,并用示例场景来说明它。
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NEFCIS: Neuro-fuzzy Concept Based Inference System for Specification Mining
In a component based engineering approach, a system can be envisioned as an assembly of reusable and independently developed components. In order to produce automated tools to support the selection and assembly of components, precise selection and retrieval strategies based on product specifications are needed. Conventional approaches use keyword based models for automatically retrieving specification documents that match a set of requirements. These approaches typically fail to mine relationships and spotlight excessively on injective matching. In this paper, we propose a Neuro-fuzzy Concept based Inference System (NEFCIS) which is a novel hybrid expert system approach targeted to extract concepts and retrieve relevant information using the excerpted concepts rather than only keywords. By infusing fuzzy logic into our model, we can process the queries with greater precision and produce deeper knowledge inferences. We describe the basic principles of the proposed methodology and illustrate it with example scenarios.
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