情感分析中自动标注方法的比较

IF 2.2 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Pub Date : 2022-11-05 DOI:10.5220/0011265900003269
Sumana Biswas, Karen Young, J. Griffith
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引用次数: 1

摘要

为监督机器学习任务标记大量社交媒体数据不仅耗时,而且困难且昂贵。另一方面,监督机器学习模型的准确性与它们训练的标记数据的质量密切相关,而自动情绪标记技术可以减少人类标记的时间和成本。我们比较了三种自动情感标签技术:TextBlob、Vader和Afinn,在没有任何人工帮助的情况下将情感分配给推特。我们比较了三种场景:一种使用具有现有地面实况标签的训练和测试数据集;第二个实验使用自动标签作为训练和测试数据集;第三个实验使用三种自动标记技术来标记训练数据集,并使用基本事实标记进行测试。实验在两个Twitter数据集上进行了评估:SemEval-2013(DS-1)和SemEval-2016(DS-2)。结果表明,使用BiLSTM深度学习模型,Afinn标记技术获得了80.17%(DS-1)和80.05%(DS-2)的最高准确率。这些发现表明,自动文本标签可以提供显著的好处,并为人类标签工作的时间和成本提供了一个可行的替代方案。
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A Comparison of Automatic Labelling Approaches for Sentiment Analysis
Labelling a large quantity of social media data for the task of supervised machine learning is not only time-consuming but also difficult and expensive. On the other hand, the accuracy of supervised machine learning models is strongly related to the quality of the labelled data on which they train, and automatic sentiment labelling techniques could reduce the time and cost of human labelling. We have compared three automatic sentiment labelling techniques: TextBlob, Vader, and Afinn to assign sentiments to tweets without any human assistance. We compare three scenarios: one uses training and testing datasets with existing ground truth labels; the second experiment uses automatic labels as training and testing datasets; and the third experiment uses three automatic labelling techniques to label the training dataset and uses the ground truth labels for testing. The experiments were evaluated on two Twitter datasets: SemEval-2013 (DS-1) and SemEval-2016 (DS-2). Results show that the Afinn labelling technique obtains the highest accuracy of 80.17% (DS-1) and 80.05% (DS-2) using a BiLSTM deep learning model. These findings imply that automatic text labelling could provide significant benefits, and suggest a feasible alternative to the time and cost of human labelling efforts.
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来源期刊
Data
Data Decision Sciences-Information Systems and Management
CiteScore
4.30
自引率
3.80%
发文量
0
审稿时长
10 weeks
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