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Interpolative self-training approach for sentiment analysis

机译:情绪分析的内插自培养方法

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Sentiment analysis has become one of the fundamental research areas with an objective of estimating the polarity of text documents. While sentiment analysis requires rich training resources, the number of available labeled documents is limited. The proposed interpolative self-training model is an extension of self-training as one of the most common semi-supervised learning algorithms. The proposed method is based on enlarging learning documents by interpolating data in both the training and the test phase. The method also includes a weighting strategy for data selection in each iteration. The method is evaluated using four Twitter datasets for the task of sentiment analysis. The results indicate that the proposed self-training model successfully outperforms the baseline and the standard self-training approach.
机译:情绪分析已成为基本研究领域之一,目的是估算文本文件的极性。虽然情感分析需要丰富的培训资源,但可用标签文件的数量有限。建议的内插自培训模式是自我培训的延伸,作为最常见的半监督学习算法之一。该方法基于通过在训练和测试阶段内插入数据来扩大学习文档。该方法还包括每个迭代中的数据选择的加权策略。使用四个Twitter数据集来评估该方法,用于情感分析的任务。结果表明,拟议的自我训练模型成功地优于基线和标准的自我训练方法。

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