Large Scale Sentiment Learning with Limited Labels

Vasileios Iosifidis, Eirini Ntoutsi
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引用次数: 31

Abstract

Sentiment analysis is an important task in order to gain insights over the huge amounts of opinions that are generated in the social media on a daily basis. Although there is a lot of work on sentiment analysis, there are no many datasets available which one can use for developing new methods and for evaluation. To the best of our knowledge, the largest dataset for sentiment analysis is TSentiment [8], a 1.6 millions machine-annotated tweets dataset covering a period of about 3 months in 2009. This dataset however is too short and therefore insufficient to study heterogeneous, fast evolving streams. Therefore, we annotated the Twitter dataset of 2015 (228 million tweets without retweets and 275 million with retweets) and we make it publicly available for research. For the annotation we leverage the power of unlabeled data, together with labeled data using semi-supervised learning and in particular, Self-Learning and Co-Training. Our main contribution is the provision of the TSentiment15 dataset together with insights from the analysis, which includes a batch and a stream-processing of the data. In the former, all labeled and unlabeled data are available to the algorithms from the beginning, whereas in the later, they are revealed gradually based on their arrival time in the stream.
有限标签的大规模情感学习
情感分析是一项重要的任务,它可以洞察每天在社交媒体上产生的大量意见。虽然在情感分析方面有很多工作,但没有很多可用的数据集可以用于开发新方法和评估。据我们所知,情感分析的最大数据集是sentiment[8],这是一个涵盖2009年约3个月的160万条机器注释推文数据集。然而,这个数据集太短,因此不足以研究异构的、快速发展的流。因此,我们标注了2015年的Twitter数据集(2.28亿条没有转发的推文和2.75亿条有转发的推文),并将其公开供研究使用。对于标注,我们利用未标记数据的力量,以及使用半监督学习,特别是自学习和共同训练的标记数据。我们的主要贡献是提供了TSentiment15数据集以及来自分析的见解,其中包括数据的批处理和流处理。在前者中,所有标记和未标记的数据从一开始就对算法可用,而在后者中,它们根据它们到达流的时间逐渐显示。
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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