基于神经模糊系统的文档语料库不连贯检测

Susana Martín-Toral, Víctor Arribas, G. Palmero
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引用次数: 1

摘要

本文的目的是检测技术文档语料库中包含的概念、想法、价值观和其他内容的不连贯。文档集合的生成、修改或更新的方式会在信息一致性方面产生问题和错误,从而导致法律、经济和社会问题。针对这一问题,提出了一种基于总结、匹配和神经模糊系统的解决方案。为了实现这一目标,每个文档(来自电域)都以4元组术语的形式总结其相关信息,描述最相关的想法和概念,这些想法和概念必须没有不连贯。然后使用几种著名的算法(Levenshtein距离和余弦相似度)匹配这些表示。通过训练神经模糊系统FasArt,在监督分类过程中,根据活动区域和领域专家的先前知识,最终确定不连贯的真实存在与否及其相关性。另一方面,利用这种模糊方法,可以通过一组模糊规则从神经模糊系统中提取学习和专家知识,这些规则可以支持对这一复杂和非客观问题的决策系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Incoherences in a Document Corpus Based on the Application of a Neuro-Fuzzy System
The aim of this paper is to detect incoherences in concepts, ideas, values, and others contained in technical document corpora. The way in which document collections are generated, modified or updated generates problems and mistakes in the information coherency, leading to legal, economic and social problems. A solution based on summarization, matching and neuro-fuzzy systems is proposed to dealt with this problem. For this goal, every document (from the electric domain) is summarized by its relevant information in the form of 4-tuples of terms, describing the most relevant ideas and concepts that must be free of incoherences. These representations are then matched using several well-known algorithms (Levenshtein distance and cosine similarity). The final decision about the real existence or not of an incoherence, and its relevancy, is obtained by training a neuro-fuzzy system FasArt in a supervised classification process, based on the previous knowledge of the activity area and domain experts. On the other hand, using this fuzzy approach, it is possible to extract the learnt and expert knowledge from the the neuro-fuzzy system, through a set of fuzzy rules that can support a decision taking system about this complex and non objective problem.
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