基于平均嵌入的最小参数高效情感分类

I. K. Pradeep, K. B. Kiran, B.CH.S.N.L.S. Sai Baba, G. K. M. Devarakonda, M. D. Satish
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引用次数: 0

摘要

情感分析是一种研究领域,用于分析客户对实体提供的服务或产品的意见。随着对深度学习的评价,大多数情感分析研究都选择递归神经网络作为首选方法。本文的目标是构建一个使用最小参数而不会对性能造成太大影响的模型。三个模型建立在公开可用的数据集上。然后对这些模型的性能进行评估。结果表明,使用长短期记忆的模型在所有模型中具有较好的性能,但使用的参数过多。最后一个模型使用了词嵌入的平均值,使用了前一个模型中使用的参数的一半,其性能非常接近前一个模型。
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Efficient Sentiment classification with Minimal parameters using Average Embedding Approach
Sentiment analysis is the area of research for analyzing customer opinions on services or products delivered by an entity. With the evaluation of deep learning, the recurrent neural network is picked as the preferred method for most of the sentiment analysis research. The goal of this paper is to build a model that uses minimum parameters without compromising too much on the performance. Three models are built on the publicly available dataset. The performance of these models is then evaluated. It is observed that the model using long-short term memory gives very good performance among all the models but uses too many parameters. The last model uses average of word embeddings which uses half of the parameters used in the previous model and its performance is very much near to the previous one.
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