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Stock Prices Prediction using the Title of Newspaper Articles with Korean Natural Language Processing

机译:使用带有韩国自然语言处理功能的报纸文章标题进行的股价预测

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Non-quantitative data have a significant impact on the financial market as well as quantitative data. In this paper, we propose CNN model of stock price prediction using Korean natural language processing. In the case of Korean natural language processing research was not actively performed compared to English language. We converted Korean sentences into nouns and vectorized them using skip-grams to extract the characteristics of the words. Then, the vectorized word sentence was used as input data of the CNN model to predict the stock price after 5 days of trading day. Most models have more than 50% prediction accuracy for stock price up and down. The highest accuracy of the model was about 53%. Since the result is not considerable but meaningful, it shows the possibility of developing the stock price prediction model through Korean natural language processing in the future.
机译:非量化数据以及定量数据对金融市场都有重要影响。在本文中,我们提出了使用韩国自然语言处理的CNN股票价格预测模型。就韩国自然语言而言,与英语相比,没有积极进行处理研究。我们将韩文句子转换为名词,并使用跳过语法将其矢量化,以提取单词的特征。然后,将矢量化的单词句子用作CNN模型的输入数据,以预测交易日5天后的股价。大多数模型对股票价格的涨跌具有超过50%的预测准确性。该模型的最高准确性约为53%。由于结果并不重要但有意义,因此表明将来有可能通过韩国自然语言处理来开发股票价格预测模型。

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