大型语料库中历史时期的检测与描述

T. Popa, Traian Rebedea, Costin-Gabriel Chiru
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引用次数: 4

摘要

许多历史时期(或事件)都是通过与之密切相关的口号、表达或词汇来记住的。受过教育的人也能够确定一个特定的单词或表达是否与人类历史的特定时期有关。本文旨在建立重要历史时期(或事件)与该时期所写文本之间的相关性。为了实现这一点,我们开发了一个系统,该系统自动将单词(和使用潜在狄利克雷分配发现的主题)与最近历史中的时间段联系起来。为了使这种分析具有相关性和结论性,必须对历史上写的一套具有代表性的文本进行分析。为此,我们选择了Google Books Ngram语料库作为分析的基础,而不是依赖于手动选择的文本。虽然它只提供给定年份文本的单词n-gram统计数据,但生成的时间序列可以通过自动将它们与特定关键字甚至LDA主题链接起来,来提供有关最近历史上最重要的时期和事件的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting and Describing Historical Periods in a Large Corpora
Many historic periods (or events) are remembered by slogans, expressions or words that are strongly linked to them. Educated people are also able to determine whether a particular word or expression is related to a specific period in human history. The present paper aims to establish correlations between significant historic periods (or events) and the texts written in that period. In order to achieve this, we have developed a system that automatically links words (and topics discovered using Latent Dirichlet Allocation) to periods of time in the recent history. For this analysis to be relevant and conclusive, it must be undertaken on a representative set of texts written throughout history. To this end, instead of relying on manually selected texts, the Google Books Ngram corpus has been chosen as a basis for the analysis. Although it provides only word n-gram statistics for the texts written in a given year, the resulting time series can be used to provide insights about the most important periods and events in recent history, by automatically linking them with specific keywords or even LDA topics.
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