Sentiment Analysis in Turkish Based on Weighted Word Embeddings

Aytuğ Onan
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引用次数: 12

Abstract

In the era of big data, natural language processing becomes an important research discipline, owing to the immense quantity of text documents and the progresses in machine learning. Natural language processing has been succesfully employed in many different areas, including machine translation, search engines, virtual assistants, spam filtering, question answering and sentiment analysis. Recent studies in the field of natural language processing indicate that word embedding based representation, in which words have been represented in dense spaces through fixed length vectors, can yield promising results. In this study, we evaluate the predictive performance of 36 word embedding based representation obtained by three word embedding methods (i.e., word2vec, fastText and DOC2vec), two basic weighting functions (i.e., inverse document frequency and smooth inverse document frequency) and three vector pooling schemes (namely, weighted sum, center based approach and delta rule). Experimental analysis indicates that word2vec based representation in conjunction with inverse document frequency based weighting and center based pooling, yields promising results for sentiment analysis in Turkish.
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基于加权词嵌入的土耳其语情感分析
在大数据时代,由于海量的文本文档和机器学习的进步,自然语言处理成为一门重要的研究学科。自然语言处理已经成功地应用于许多不同的领域,包括机器翻译、搜索引擎、虚拟助手、垃圾邮件过滤、问答和情感分析。近年来在自然语言处理领域的研究表明,基于词嵌入的表示,即通过固定长度的向量在密集空间中表示词,可以取得很好的效果。在本研究中,我们评估了三种词嵌入方法(word2vec、fastText和DOC2vec)、两种基本加权函数(逆文档频率和平滑逆文档频率)和三种向量池化方案(加权和、基于中心的方法和delta规则)获得的36种基于词嵌入的表示的预测性能。实验分析表明,基于word2vec的表示结合基于逆文档频率的加权和基于中心的池化,对土耳其语的情感分析产生了有希望的结果。
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