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Financial sentiment analysis with Deep Ensemble Models (DEMs) for stock market prediction

机译:用深合奏模型(DEMS)进行财务情感分析,用于股票市场预测

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摘要

The stock market forecasting is popular research topic for analysts. In this study, it is proposed to estimate direction of Bist100 index by financial sentiment analysis. To our knowledge, this is the first study in literature using Twitter for forecasting stock market direction and doing this with deep ensemble models. The contributions of study are fourfold: First, feature set is enriched semantically to eliminate size limitation problem in Twitter. In first stage, meaningful features that express dataset are selected by means of information gain and ant colony optimization. Next, features are enriched in meaning, context, syntax using document representation models such as Avg(Word2vec), Avg(Glove), Avg(Word2vec)+Avg(Glove), TF-IDF+Avg(Word2vec), TF-IDF+Avg(Glove). Secondly, it is proposed to improve system performance performing classification with multiple learning algorithms. Instead of traditional classification algorithms, a deep ensemble model (DTM) is constructed blending deep learning architectures such as Convolutional Neural Networks, Recurrent Neural Networks, Long Short-Term Memory Networks. Third, majority voting and stacking methods are used to obtain final decision of deep ensemble model. Fourthly, Turkish and English Twitter datasets are employed to demonstrate that proposed approach improves classification performance. Consequently, experimental results show that proposed model is significantly superior to previous studies when compared with literature studies.
机译:股市预测是分析师的流行研究课题。在本研究中,建议通过财务情感分析估算BIST100指数的方向。为了我们的知识,这是在使用Twitter预测股票市场方向并用深层集合模型进行的文献中的第一次研究。学习的贡献是四倍:首先,首先要从语义上丰富特征集,以消除Twitter中的大小限制问题。在第一阶段,通过信息增益和蚁群优化选择表达数据集的有意义功能。接下来,使用文档表示模型(如AVG(WORD2VEC),AVG(GLOVE),AVG(WORD2VEC)+ AVG(GLOVE),TF-IDF + AVG(WORD2VEC),TF-IDF + AVG(手套)。其次,建议改善具有多个学习算法的分类的系统性能。而不是传统的分类算法,深度集合模型(DTM)是构建混合深度学习架构,例如卷积神经网络,经常性神经网络,长短期存储网络。第三,大多数投票和堆叠方法用于获得深度集成模型的最终决定。第四,采用土耳其语和英语Twitter数据集来证明所提出的方法提高了分类性能。因此,实验结果表明,与文学研究相比,提出的模型显着优于先前的研究。

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