Sentiment Analysis for Product Reviews Based on Weakly-Supervised Deep Embedding

S. Sindhura, S. Praveen, M. Safali, NidamanuruSrinivasa Rao
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引用次数: 17

Abstract

Buyers to whom a product would be introduced should check it to make better choices about the item. To arrive at a specific finding, various viewpoint mining methods have been suggested. Several recent developments in machine learning, especially deep learning, have led to considerable progress in solving sentiment classification problems. To achieve valuable scores as poor supervision indicators, this research work suggests an innovative deep learning system for performing product review based emotion classification. To achieve a high-level representation, one needs to learn the embedding before applying a classification layer on top of the embedding.
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基于弱监督深度嵌入的产品评论情感分析
购买商品的人应该检查商品,以便对商品做出更好的选择。为了得到一个具体的发现,已经提出了各种观点挖掘方法。最近机器学习的一些发展,特别是深度学习,在解决情感分类问题方面取得了相当大的进展。为了实现有价值的分数作为不良监督指标,本研究工作提出了一种创新的深度学习系统,用于执行基于产品评论的情感分类。为了获得高级的表示,需要在对嵌入应用分类层之前学习嵌入。
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