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iFeel 2.0: A Multilingual Benchmarking System for Sentence-Level Sentiment Analysis

机译:iFeel 2.0:句子级情感分析的多语言基准系统

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Sentiment analysis became a hot topic, specially with the amount of opinions available in social media data. With the increasing interest in this theme, several methods have been proposed in the literature. Recent efforts have showed that there is no single method that always achieves the best prediction performance for different datasets. Additionally, novel methods have not being extensively compared with other methods and across different datasets, specially methods that are not designed to the English language. Consequently, researchers tend to accept any popular method as a valid methodology to measure sentiments, a practice that is usual in science. In this context, we propose iFeel 2.0, an online web system that implements 19 sentence-level sentiment analysis methods and allows users to easily label a dataset with all of them. iFeel aims at easing the comparison of new methods with baseline approaches and can also be helpful for those interested in using sentiment analysis, allowing them to choose an appropriate sentiment analysis method that works fine for a new dataset. We also incorporate a multiple language feature to allow methods designed for specific languages to be easily compared with a baseline approach that simply translates the input data to English and run these 19 methods. We hope this system can represent an important contribution to this field.
机译:情感分析成为一个热门话题,特别是社交媒体数据中可用的意见金额。随着对该主题的兴趣日益较大,文献中提出了几种方法。最近的努力表明,没有单一的方法始终实现不同数据集的最佳预测性能。此外,与其他方法和跨不同的数据集,新的方法没有广泛地进行广泛的方法,特别是非设计给英语语言的方法。因此,研究人员倾向于接受任何流行的方法作为衡量情绪的有效方法,这是科学中通常的实践。在此上下文中,我们提出iFeel 2.0,这是一个实现19个句子级情绪分析方法的在线Web系统,并允许用户轻松地与所有这些数据集标记数据集。 IFEEL旨在缓解基线方法的新方法的比较,也可以帮助那些对使用情感分析的人员,允许它们选择适当的情感分析方法,该方法适用于新数据集。我们还包含多语言功能,以允许为特定语言设计的方法与仅将输入数据转换为英语的基线方法,并运行这19种方法。我们希望该系统可以代表对该领域的重要贡献。

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