Research of methods based on neural networks for the analysis of the tonality of the corps of the texts

Ostrovska Kateryna, Stovpchenko Ivan, Pechenyi Denys
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Abstract

The object of the study is methods based on neural networks for analyzing the tonality of a corpus of texts. To achieve the goal set in the work, it is necessary to solve the following tasks: study the theoretical material for learning deep neural networks and their features in relation to natural language processing; study the documentation of the Tensorflow library; develop models of convolutional and recurrent neural networks; to develop the implementation of linear and non-linear classification methods on bag of words and Word2Vec models; to compare the accuracy and other quality indicators of implemented neural network models with classical methods. Tensorboard is used for learning visualization. The work shows the superiority of classifiers based on deep neural networks over classical classification methods, even if the Word2Vec model is used for vector representations of words. The model of recurrent neural network with LSTM blocks has the highest accuracy for this corpus of texts.
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基于神经网络的文本群调性分析方法研究
本文的研究对象是基于神经网络的语料库调性分析方法。为了实现工作中设定的目标,需要解决以下任务:研究学习深度神经网络的理论材料及其与自然语言处理相关的特征;学习Tensorflow库的文档;开发卷积和循环神经网络模型;开发基于词袋和Word2Vec模型的线性和非线性分类方法的实现;将实现的神经网络模型与经典方法的准确率和其他质量指标进行比较。张sorboard用于学习可视化。这项工作显示了基于深度神经网络的分类器优于经典分类方法,即使Word2Vec模型用于单词的向量表示。基于LSTM块的递归神经网络模型对该文本语料库具有最高的准确率。
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