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CNN with Limit Order Book Data for Stock Price Prediction

机译:CNN具有限制订单册数据的股票价格预测

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This work presents a remarkable and innovative shortterm forecasting method for Financial Time Series (FTS). Most of the approaches for FTS modeling work directly with prices, given the fact that transaction data is more reachable and more widely available. For this particular work, we will be using the Limit Order Book (LOB) data, which registers all trade intentions from market participants. As a result, there is more enriched data to make better predictions. We will be using Deep Convolutional Neural Networks (CNN), which are good at pattern recognition on images. In order to accomplish the proposed task we will make an image-like representation of LOB and transaction data, which will feed up into the CNN, therefore it can recognize hidden patterns to classify FTS in short-term periods. We will present step by step methodology to encode financial time series into an image-like representation. Results present an impressive performance, ranging between 63% and 66% in Directional Accuracy (DA), having advantages in reducing model parameters as well as to make inputs time invariant.
机译:这项工作提出了一种卓越而创新的金融时间序列(FTS)的短期预测方法。鉴于交易数据更具可达和更广泛的可用性的事实,FTS建模的大部分方法都直接使用价格。对于这项特殊的工作,我们将使用限制订单(LOB)数据,该数据注册来自市场参与者的所有贸易意图。结果,有更丰富的数据来提高预测。我们将使用深度卷积神经网络(CNN),它擅长图像上的图案识别。为了完成所提出的任务,我们将制作类似LOB和事务数据的图像和交易数据,这将进入CNN,因此它可以识别隐藏模式以在短期句点中对FTS进行分类。我们将逐步逐步处理,以将财务时间序列编码为类似图像的表示。结果呈现出令人印象深刻的性能,在方向精度(DA)之间的63%和66%之间,具有减少模型参数的优势,以及使输入时间不变。

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