Deep Learning Applied on Rened Opinion Review Datasets

Ingo Jost, J. Valiati
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引用次数: 2

Abstract

Deep Learning has been successfully applied in hard to solve areas, such as image recognition and audioclassification. However, Deep Learning has not yet reached the same performance when employed in textual data,including Opinion Mining. In models that implement a deep architecture, Deep Learning is characterized by theautomatic feature selection step. The impact of previous data refinement in the pre-processing step before theapplication of Deep Learning is investigated to identify opinion polarity. This refinement includes the use of aclassical procedure of textual content and a popular feature selection technique. The results of the experimentsovercome the results of the current literature with the Deep Belief Network application in opinion classification.In addition to overcoming the results, their presentation is broader than the related works, considering the changeof parameter variables. We prove that combining feature selection with a basic preprocessing step, aiming toincrease data quality, might achieve promising results with Deep Belief Network implementation.
深度学习在更新意见评论数据集上的应用
深度学习已成功应用于图像识别和音频分类等难解领域。然而,深度学习在文本数据(包括意见挖掘)中还没有达到相同的性能。在实现深度架构的模型中,深度学习的特点是自动特征选择步骤。在应用深度学习识别意见极性之前,研究了在预处理步骤中先前的数据细化的影响。这种改进包括使用经典的文本内容过程和一种流行的特征选择技术。实验结果克服了现有文献对深度信念网络在意见分类中的应用结果。除了克服结果之外,考虑到参数变量的变化,他们的表达比相关作品更广泛。我们证明将特征选择与基本预处理步骤相结合,旨在提高数据质量,可以在深度信念网络实现中取得令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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