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On One Approach of Solving Sentiment Analysis Task for Kazakh and Russian Languages Using Deep Learning

机译:利用深度学习解决哈萨克语和俄语情感分析任务的一种方法

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The given research paper describes modern approaches of solving the task of sentiment analysis of the news articles in Kazakh and Russian languages by using deep recurrent neural networks. Particularly, we used Long-Short Term Memory (LSTM) in order to consider long term dependencies of the whole text. Thereby, research shows that good results can be achieved even without knowing linguistic features of particular language. Here we are going to use word embedding (word2vec, GloVes) as the main feature in our machine learning algorithms. The main idea of word embedding is the representations of words with the help of vectors in such manner that semantic relationships between words preserved as basic linear algebra operations.
机译:给出的研究论文介绍了使用深度递归神经网络解决哈萨克语和俄语语言新闻报道情感分析任务的现代方法。特别是,我们使用了长短期记忆(LSTM)来考虑整个文本的长期依赖性。因此,研究表明,即使不了解特定语言的语言特征也可以取得良好的结果。在这里,我们将使用词嵌入(word2vec,GloVes)作为我们的机器学习算法的主要功能。词嵌入的主要思想是在向量的帮助下对词进行表示,以保持词之间的语义关系作为基本线性代数运算的方式。

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