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A data-driven neural network architecture for sentiment analysis

机译:数据驱动的神经网络架构情绪分析

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Purpose The fabulous results of convolution neural networks in image-related tasks attracted attention of text mining, sentiment analysis and other text analysis researchers. It is, however, difficult to find enough data for feeding such networks, optimize their parameters, and make the right design choices when constructing network architectures. The purpose of this paper is to present the creation steps of two big data sets of song emotions. The authors also explore usage of convolution and max-pooling neural layers on song lyrics, product and movie review text data sets. Three variants of a simple and flexible neural network architecture are also compared. Design/methodology/approach The intention was to spot any important patterns that can serve as guidelines for parameter optimization of similar models. The authors also wanted to identify architecture design choices which lead to high performing sentiment analysis models. To this end, the authors conducted a series of experiments with neural architectures of various configurations. Findings The results indicate that parallel convolutions of filter lengths up to 3 are usually enough for capturing relevant text features. Also, max-pooling region size should be adapted to the length of text documents for producing the best feature maps. Originality/value Top results the authors got are obtained with feature maps of lengths 6-18. An improvement on future neural network models for sentiment analysis could be generating sentiment polarity prediction of documents using aggregation of predictions on smaller excerpt of the entire text.
机译:目的卷积神经的令人难以置信的结果网络吸引与图像相关的任务分析和文本挖掘的注意,情绪其他文本分析的研究人员。很难找到足够的数据等喂养网络,优化参数,使正确的设计选择在构建网络架构。目前两大数据集的创建步骤歌曲的情绪。卷积和max-pooling神经层歌词、产品和电影评论文本数据集。神经网络架构也比较。设计/方法/方法的目的是发现任何可以作为的重要模式类似的参数优化指南模型。建筑设计选择导致高进行情感分析模型。最后,作者进行了一系列的实验神经结构的不同配置。并行运算的滤波器长度3通常足够捕捉相关的文本特征。应该适应文本文档的长度生产最好的特征图谱。创意/值结果作者了获得特征图的长度6 - 18。改善未来的神经网络模型情绪分析可能产生情绪极性的预测使用的文档聚合的预测在较小的摘录整个文本。

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