Experiments in Text Classification: Analyzing the Sentiment of Electronic Product Reviews in Greek

IF 0.7 2区 文学 0 LANGUAGE & LINGUISTICS
Dimitris Bilianos
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引用次数: 5

Abstract

ABSTRACT Sentiment analysis, which deals with people’s sentiments as they appear in the growing amount of online social data, has been on the rise in the past few years. In its simplest form, sentiment analysis deals with the polarity of a given text, i.e., whether the opinion expressed in it is positive or negative. Sentiment analysis, or opinion mining applications on websites and the social media range from product reviews and brand reception to political issues and the stock market. The vast majority of the research in sentiment analysis has mostly dealt with English data, where there’s an abundance of readily available and annotated for sentiment corpora. With a few notable exceptions, the research in other minor languages such as Greek is lacking. This paper deals with sentiment analysis of electronic product reviews written in Greek. To this end, a small dataset of 480 positive and negative reviews is compiled and used, taken from the popular Greek e-commerce website, www.skroutz.gr. Different computational models for training and testing the dataset are evaluated, ranging from simple Naive Bayes with n-gram features to state-of-the-art BERT. The results look very promising for such a small corpus.
文本分类实验:希腊语电子产品评论的情感分析
摘要情绪分析在过去几年中一直在上升,它处理人们在越来越多的在线社交数据中出现的情绪。情感分析最简单的形式是处理给定文本的极性,即文本中表达的观点是积极的还是消极的。网站和社交媒体上的情绪分析或意见挖掘应用程序从产品评论和品牌接受到政治问题和股市。情感分析的绝大多数研究大多涉及英语数据,那里有大量现成的情感语料库和注释。除了少数显著的例外,对希腊语等其他次要语言的研究还很缺乏。本文对用希腊语撰写的电子产品评论进行情感分析。为此,我们汇编并使用了一个由480条正面和负面评论组成的小数据集,该数据集取自希腊流行的电子商务网站www.skroutz.gr。我们评估了用于训练和测试数据集的不同计算模型,从具有n-gram特征的简单朴素贝叶斯到最先进的BERT。对于这样一个小的语料库,结果看起来非常有希望。
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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来源期刊
CiteScore
2.90
自引率
7.10%
发文量
7
期刊介绍: The Journal of Quantitative Linguistics is an international forum for the publication and discussion of research on the quantitative characteristics of language and text in an exact mathematical form. This approach, which is of growing interest, opens up important and exciting theoretical perspectives, as well as solutions for a wide range of practical problems such as machine learning or statistical parsing, by introducing into linguistics the methods and models of advanced scientific disciplines such as the natural sciences, economics, and psychology.
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