Several studies have shown that deep learning models can provide more accurate volatility forecasts than the traditional methods used within this domain. This paper presents a composite model that merges a deep learning approach with sentiment analysis for predicting market volatility. To classify public sentiment, we use a Convolutional Neural Network, which obtained data from Reddit global news headlines. We then describe a composite forecasting model, a Long-Short-Term-Memory Neural Network method, to use historical sentiment and the previous day's volatility to make forecasts. We employed this method on the past volatility of the S&P500 and the major BRICS indices to corroborate its effectiveness. Our results demonstrate that including sentiment can improve Deep Learning volatility forecasting models. However, in contrast to return forecasting, the performance benefits of including sentiment appear for volatility forecasting appears to be market specific.
翻译:一些研究显示,深层次的学习模型可以比该领域使用的传统方法提供更准确的波动预测,本文件展示了一个综合模型,将深层次的学习方法与情绪分析相结合,以预测市场波动。为了对公众情绪进行分类,我们使用了革命神经网络,该网络从Reddit全球新闻头条新闻中获取数据。然后我们描述了一个综合预测模型,一个长期短期神经网络方法,以利用历史情绪和前一天的波动性作出预测。我们用这一方法来证实过去S&P500和主要金砖国家指数的波动性。我们的结果表明,包括情感可以改善深层学习波动预测模型。然而,与回溯预测相反,将情绪纳入波动预测的绩效似乎是市场特有的。