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Extraction of Focused Topic and Sentiment of Financial Market by using Supervised Topic Model for Price Movement Prediction

机译:基于监督话题模型的价格变动预测中的焦点话题和金融市场情绪的提取

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For financial market participants, the current focused topic (Brexit, Federal Reserve Interest-Rate, U.S. and China trade war, etc.) and its sentiments (whether it is Risk-On or Risk-Off) is very important to decide investment strategies. In this study, we proposed extended topic model called supervised Joint Sentiment-Topic model (sJST) which using not only text data but also numeric data as a supervised signal to extract current focused topic and it's sentiment of market. By using the topic and sentiment weight of the market as a features, we apply several machine learning models to predict foreign exchange market price movement. Comparing the average accuracy over 32 currency pairs and prediction models, the result using sJST weight as features achieved 1.52% better performance than the results which use only historical prices as features. Furthermore, comparing the results limited to specific currency pairs which is difficult to predict when using only historical prices as features, the result using sJST weight as features achieved 3.64% better accuracy than the result which use only historical prices as features.
机译:对于金融市场参与者来说,当前重点关注的话题(英国脱欧,美联储利率,美国和中国的贸易战等)及其情绪(无论是“冒险”还是“冒险”)对于决定投资策略非常重要。在这项研究中,我们提出了扩展的主题模型,称为监督联合情绪主题模型(sJST),该模型不仅使用文本数据,而且还使用数字数据作为监督信号来提取当前关注的主题及其市场情绪。通过使用主题和市场情绪权重作为特征,我们应用了几种机器学习模型来预测外汇市场价格走势。通过比较32种货币对和预测模型的平均准确性,使用sJST权重作为特征的结果比仅使用历史价格作为特征的结果提高了1.52%的性能。此外,通过比较限于特定货币对的结果(当仅使用历史价格作为特征时很难预测),使用sJST权重作为结果的结果比仅使用历史价格作为特征的结果提高了3.64%的准确性。

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