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Stacked denoising autoencoders for sentiment analysis: a review

机译:堆积的去噪自动化器,用于情感分析:审查

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摘要

Deep learning has been shown to outperform numerous conventional machine learning algorithms (e.g., support vector machines) in many fields, such as image processing and text analyses. This is due to its outstanding capability to model complex data distributions. However, as networks become deeper, there is an increased risk of overfitting and higher sensitivity to noise. Stacked denoising autoencoders (SDAs) provide an infrastructure to resolve these issues. In the field of sentiment recognition from textual contents, SDAs have been widely used (especially for domain adaptation), and have been consistently refined and improved through defining new alternate topologies as well as different learning algorithms. A wide selection of these approaches are reviewed and compared in this article. The results coming from the reviewed works indicate the promising capability of SDAs to perform sentiment recognition on a multitude of domains and languages. (C) 2017 John Wiley & Sons, Ltd
机译:深入学习已经显示出许多传统机器学习算法(例如,支持向量机)在许多领域,例如图像处理和文本分析。 这是由于其出色的复杂数据分布的功能。 然而,随着网络更深的,由于对噪音的敏感性提高了增加的风险。 堆叠的去噪AutoEncoders(SDAS)提供了解决这些问题的基础架构。 在文本内容的情感识别领域中,SDA已被广泛使用(特别是对于域适应),并且通过定义新的替代拓扑以及不同的学习算法,一直被精制和改进。 在本文中审查并比较了各种这些方法。 来自审查的作品的结果表明,SDAS对众多域和语言进行情感的有前景能力。 (c)2017 John Wiley&Sons,Ltd

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