Chinese Short Text Classification Based On Deep Learning

Xi He, Jianping Li, Tiankai Li, He Liu
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Abstract

With the development of Internet technology, more and more Chinese platforms are creating massive Chinese texts. At present, obtaining data samples for training is no longer a problem, and more and more researchers are beginning to devote themselves to obtaining great value from mining text information. Chinese text classification is mainly used for user sentiment analysis, personalized recommendation, topic tracking, and public opinion monitoring. However, Chinese texts naturally have many difficulties, such as many ambiguities, difficult word segmentation, fewer words, and sparse features. Traditional machine learning has a poor realization effect on Chinese texts. Deep neural networks are gradually becoming a new trend in Chinese text classification.
基于深度学习的中文短文本分类
随着互联网技术的发展,越来越多的中文平台正在创造海量的中文文本。目前,获取用于训练的数据样本已经不再是一个难题,越来越多的研究者开始致力于从文本信息的挖掘中获取巨大的价值。中文文本分类主要用于用户情感分析、个性化推荐、话题跟踪、舆情监测。然而,中文文本自然存在歧义多、分词困难、字数少、特征稀疏等问题。传统的机器学习对中文文本的实现效果较差。深度神经网络正逐渐成为中文文本分类的新趋势。
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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