Turkish tweet sentiment analysis with word embedding and machine learning

Değer Ayata, M. Saraçlar, Arzucan Özgür
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引用次数: 23

Abstract

This work includes processing and classification of tweets which are written in Turkish language. Four different sector tweet datasets are vectorized with Word Embedding model and classified with Support Vector Machine and Random Forests classifiers and results have been compared. We have showed that sector based tweet classification is more successful compared to general tweets. Accuracy rates for Banking sector is 89.97%, for Football 84.02%, for Telecom 73.86%, for Retail 63.68% and for overall 74.60% have been achieved.
土耳其推特情绪分析与词嵌入和机器学习
这项工作包括处理和分类用土耳其语写的推文。采用Word Embedding模型对4个不同的行业推文数据集进行向量化,并采用支持向量机和随机森林分类器进行分类,并对分类结果进行比较。我们已经表明,与一般推文相比,基于行业的推文分类更成功。银行业的准确率为89.97%,足球为84.02%,电信为73.86%,零售业为63.68%,总体为74.60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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