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Identifying Political Sentiments on YouTube: A Systematic Comparison Regarding the Accuracy of Recurrent Neural Network and Machine Learning Models

机译:识别YouTube的政治情绪:关于经常性神经网络和机器学习模型的准确性的系统比较

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Since social media have increasingly become forums to exchange personal opinions, more and more approaches have been suggested to analyze those sentiments automatically. Neural networks and traditional machine learning methods allow individual adaption by training the data, tailoring the algorithm to the particular topic that is discussed. Still, a great number of methodological combinations involving algorithms (e.g., recurrent neural networks (RNN)), techniques (e.g., word2vec), and methods (e.g., Skip-Gram) are possible. This work offers a systematic comparison of sentiment analytical approaches using different word embeddings with RNN architectures and traditional machine learning techniques. Using German comments of controversial political discussions on YouTube, this study uses metrics such as F1-score, precision and recall to compare the quality of performance of different approaches. First results show that deep neural networks outperform multiclass prediction with small datasets in contrast to traditional machine learning models with word embeddings.
机译:由于社交媒体越来越成为交换个人观点的论坛,因此建议自动分析这些情绪的越来越多的方法。神经网络和传统机器学习方法允许通过培训数据,使算法定制到所讨论的特定主题。仍然,涉及算法的大量方法组合(例如,经常性神经网络(RNN)),技术(例如,Word2VEC)和方法(例如,跳过克)是可能的。这项工作提供了使用与RNN架构和传统机器学习技术的不同词嵌入式的情感分析方法进行了系统的比较。本研究采用德国对YouTube进行了争议的政治讨论,使用了F1分数,精度和召回等度量来比较不同方法的性能质量。第一个结果表明,与单词嵌入词的传统机器学习模型相比,深神经网络与小型数据集相比,深度神经网络与小型机器学习模型相比。

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