使用窗口和文本挖掘,揭示以自然语言编写的文本数据流中重要术语的潜在变化

J. Zizka, F. Dařena
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引用次数: 4

摘要

本研究涉及分析用自然语言编写的连续文本数据流。其中一个问题是揭示互联网博客、讨论等中可能发生的重大概念变化,以及发现代表这些数据的是什么,这些数据在主题上是不变的还是变化的,以及发生了什么样的变化。使用具有自动生成决策树的文本挖掘来分析现实世界的文本数据集,以找到影响文档标签(类)正确分配的重要单词,并可用于检测明显的变化。变化和它们的检测在这里是通过两种语言的各种渐进混合来建模的,变化程度是通过余弦、欧几里德和雅卡德距离(相似性)来测量的,它们提供了定性相同的结果。监测过程是基于对流中连续相邻的数据窗口对进行分析,使用当前窗口和前一个窗口的比较,两个窗口都用单词表示的相关特征列表来表示。结果表明,该方法具有较好的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revealing potential changes of significant terms in streams of textual data written in natural languages using windowing and text mining
The presented research deals with analyzing continuous streams of textual data written in natural languages. One of problems is revealing possible significant concept changes in Internet blogs, discussions, etc., together with discovering what represents such data, if it is more-or-less topically invariable or changing, and what kind of change occurred. A real-world textual dataset is analyzed using text-mining with automatically generated decision trees to find significant words that affect correct assignment of document labels (classes) and can be used for detecting noticeable changes. The changes and their detection are here modeled by assorted gradual mixture of two languages and the change degree is measured by cosine, Eucledian, and Jaccard distance (similarity), which provide qualitatively the same result. The monitoring procedure is based on analyzing successively adjacent couples of data-windows in the stream using the comparison of the current and its previous window, both represented by their lists of relevant features expressed in words. The presented results demonstrate that the suggested method provides reliable results.
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