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Enhancing profit from stock transactions using neural networks

机译:使用神经网络加强股票交易的利润

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摘要

Financial time-series forecasting, and profit maximization is a challenging task, which has attracted the interest of several researchers and is immensely important for investors. In this paper, we present a deep learning system, which uses a variety of data for a subset of the stocks on the NASDAQ exchange to forecast the stock price. Our framework allows the use of a variational autoencoder (VAE) to remove noise and time-series data engineering to extract higher-level features. A Stacked LSTM Autoencoder is used to perform multi-step-ahead prediction of the stock closing price. This prediction is used by two profit-maximization strategies that include greedy approach and short selling. Besides, we use reinforcement learning as a third profit-enhancement strategy and compare these three strategies to offline strategies that use the actual future prices. Results show that the proposed methods outperform the state-of-the-art time-series forecasting approaches in terms of predictive accuracy and profitability.
机译:财务时间系列预测和利润最大化是一项挑战的任务,吸引了几个研究人员的利益,对投资者来说非常重要。在本文中,我们提出了一个深入的学习系统,它使用各种数据用于纳斯达克交换机上的股票的子集,以预测股价。我们的框架允许使用变形AutoEncoder(VAE)来消除噪声和时间序列数据工程以提取更高级别的功能。堆叠的LSTM AutoEncoder用于执行股票收盘价的多级预测。这种预测由两个利润最大化策略使用,包括贪婪的方法和卖空。此外,我们使用强化学习作为第三次利润 - 增强策略,并比较这三种策略到使用实际未来价格的离线策略。结果表明,该方法在预测准确性和盈利能力方面优于最先进的时序预测方法。

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