在文本数据流中发现令人惊讶的模式

T. Snowsill, F. Nicart, Marco Stefani, T. D. Bie, N. Cristianini
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引用次数: 32

摘要

我们解决了在大型文本数据流中检测令人惊讶的模式的任务。当数据流由在线新闻媒体、电子邮件、Twitter feed、电影字幕、科学出版物等生成时,这些数据流可以揭示现实世界中的事件。对此类文本流的兴趣量通常超过了人类的分析能力,因此自动模式识别工具是必不可少的。我们特别感兴趣的是n-gram单词出现频率的惊人变化,或者更一般地说,是无限字母大小的符号出现频率的变化。尽管在字母表的大小(它本身是无界的)中可能的n-gram的数量呈指数级增长,但我们展示了如何有效地检测这些n-gram。为此,我们依赖于一种被称为泛化后缀树的数据结构,该结构还附加了有限数量的统计信息。至关重要的是,我们展示了如何以在线方式有效地更新泛化后缀树以及这些统计注释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding surprising patterns in textual data streams
We address the task of detecting surprising patterns in large textual data streams. These can reveal events in the real world when the data streams are generated by online news media, emails, Twitter feeds, movie subtitles, scientific publications, and more. The volume of interest in such text streams often exceeds human capacity for analysis, such that automatic pattern recognition tools are indispensable. In particular, we are interested in surprising changes in the frequency of n-grams of words, or more generally of symbols from an unlimited alphabet size. Despite the exponentially large number of possible n-grams in the size of the alphabet (which is itself unbounded), we show how these can be detected efficiently. To this end, we rely on a data structure known as a generalised suffix tree, which is additionally annotated with a limited amount of statistical information. Crucially, we show how the generalised suffix tree as well as these statistical annotations can efficiently be updated in an on-line fashion.
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