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Enhancing deep learning sentiment analysis with ensemble techniques in social applications

机译:在社交应用中使用集成技术增强深度学习情感分析

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Deep learning techniques for Sentiment Analysis have become very popular. They provide automatic feature extraction and both richer representation capabilities and better performance than traditional feature based techniques (i.e., surface methods). Traditional surface approaches are based on complex manually extracted features, and this extraction process is a fundamental question in feature driven methods. These long-established approaches can yield strong baselines, and their predictive capabilities can be used in conjunction with the arising deep learning methods. In this paper we seek to improve the performance of deep learning techniques integrating them with traditional surface approaches based on manually extracted features. The contributions of this paper are sixfold. First, we develop a deep learning based sentiment classifier using a word embeddings model and a linear machine learning algorithm. This classifier serves as a baseline to compare to subsequent results. Second, we propose two ensemble techniques which aggregate our baseline classifier with other surface classifiers widely used in Sentiment Analysis. Third, we also propose two models for combining both surface and deep features to merge information from several sources. Fourth, we introduce a taxonomy for classifying the different models found in the literature, as well as the ones we propose. Fifth, we conduct several experiments to compare the performance of these models with the deep learning baseline. For this, we use seven public datasets that were extracted from the microblogging and movie reviews domain. Finally, as a result, a statistical study confirms that the performance of these proposed models surpasses that of our original baseline on Fl-Score. (C) 2017 The Authors. Published by Elsevier Ltd.
机译:用于情感分析的深度学习技术已经非常流行。与传统的基于特征的技术(即表面方法)相比,它们提供了自动特征提取功能,并且具有更丰富的表示功能和更好的性能。传统的表面方法基于复杂的手动提取特征,而此提取过程是特征驱动方法中的一个基本问题。这些历史悠久的方法可以产生强大的基准,其预测能力可以与新兴的深度学习方法结合使用。在本文中,我们力求提高深度学习技术的性能,这些技术与基于手动提取特征的传统表面方法相结合。本文的贡献是六个方面。首先,我们使用词嵌入模型和线性机器学习算法开发基于深度学习的情感分类器。该分类器用作与后续结果进行比较的基准。其次,我们提出了两种集成技术,将我们的基线分类器与在情感分析中广泛使用的其他表面分类器进行汇总。第三,我们还提出了两个模型,用于结合表面特征和深度特征以合并来自多个来源的信息。第四,我们引入分类法,对文献中发现的不同模型以及我们提出的模型进行分类。第五,我们进行了一些实验,以将这些模型的性能与深度学习基准进行比较。为此,我们使用从微博和电影评论领域中提取的七个公共数据集。最后,结果是,一项统计研究证实,这些提出的模型的性能超过了我们在Fl-Score上的原始基线。 (C)2017作者。由Elsevier Ltd.发布

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