土耳其语文本的情感提取

Mansur Alp Toçoğlu, A. Alpkocak
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引用次数: 8

摘要

在本研究中,我们提出了一个土耳其语文本情感提取系统。该系统甚至能够从给定文本中识别出快乐、羞耻、内疚、厌恶、悲伤、愤怒和恐惧等情绪状态。我们认为情感提取是一个文本分类问题,它需要一个训练集。因此,我们首先获得了一项调查,对500名大学生进行了调查,并开发了一个训练集,要求他们描述他们记得的七种情绪类别中最紧张的时刻。然后,对描述情感时刻的文本进行预处理并在向量空间模型中建模,采用tf × idf加权方案;然后在WEKA工具中应用朴素贝叶斯分类器并进行10倍交叉验证测试。我们从准确性,精密度,测量和召回措施方面评估了该系统。我们从第一个实验中获得的结果非常有希望,它在七个情感类别中平均达到了86%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emotion Extraction from Turkish Text
In this study we present an emotion extraction system from Turkish text. The system is able to recognizes even emotional states from a given text for happy, shame, guiltiness, disgust, sadness, angry and fear categories. We consider Emotion Extraction as a Text Classification problem, which requires a training set. Thus, we first obtained a survey which is done with 500 university students to develop a training set where they are asked to describe their most intense moments they remember for seven emotions categories. Then, the text describing emotional moments are pre processed and modeled in Vector Space Model where tf × idf weighting scheme is used. Then we applied Naive Bayes classifier and tested with 10-fold cross validation, in WEKA tool. We evaluated the system in terms of accuracy, precision, Measureand recall measures. The results we obtained from the first experimentation are very promising where it achieved around 86% accuracy for seven emotional classes in average.
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