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Using term-frequency-inverse-document frequency of email to detect change in social groups

机译:使用电子邮件的术语频率-反文档频率来检测社交群体的变化

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Interest in the classification of large text data sets continues to grow. The Enron email corpus remains a rich source of inquiry given its size and the unique characteristic of email: timestamps. Using this temporal data, we study a method for detecting temporal changes in the classifications. Using term-frequency-inverse-document-frequency (TFIDF) upon which we apply a change detection algorithm (CUSUM), our results suggest a methodology for predicting changes in email conversations in a social network.
机译:对大文本数据集进行分类的兴趣持续增长。鉴于Enron电子邮件语料库的大小和电子邮件的独特特征:时间戳,它仍然是丰富的查询来源。使用此时间数据,我们研究了一种检测分类中时间变化的方法。使用我们在其上应用更改检测算法(CUSUM)的术语频率-反文档频率(TFIDF),我们的结果提出了一种预测社交网络中电子邮件会话更改的方法。

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