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首页> 外文期刊>International Journal of Information Technology and Computer Science >FBSEM: A Novel Feature-Based Stacked Ensemble Method for Sentiment Analysis
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FBSEM: A Novel Feature-Based Stacked Ensemble Method for Sentiment Analysis

机译:FBSEM:一种用于情感分析的新颖堆叠集合方法

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摘要

Sentiment analysis is the process of determining the attitude or the emotional state of a text automatically. Many algorithms are proposed for this task including ensemble methods, which have the potential to decrease error rates of the individual base learners considerably. In many machine learning tasks and especially in sentiment analysis, extracting informative features is as important as developing sophisticated classifiers. In this study, a stacked ensemble method is proposed for sentiment analysis, which systematically combines six feature extraction methods and three classifiers. The proposed method obtains cross-validation accuracies of 89.6%, 90.7% and 67.2% on large movie, Turkish movie and SemEval-2017 datasets, respectively, outperforming the other classifiers. The accuracy improvements are shown to be statistically significant at the 99% confidence level by performing a Z-test.
机译:情绪分析是自动确定文本的态度或情绪状态的过程。提出了许多算法,包括该任务,包括集合方法,这可能有可能降低各个基础学习者的错误率。在许多机器学习任务中,特别是在情感分析中,提取信息特征与开发复杂的分类器一样重要。在该研究中,提出了一种堆叠的集合方法,用于情感分析,其系统地结合了六种特征提取方法和三分类器。所提出的方法分别在大型电影,土耳其电影和Semeval-2017数据集中获得了89.6%,90.7%和67.2%的交叉验证精度,优于其他分类器。通过进行Z检验,精度改善在99%的置信水平处具有统计学意义。

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