The paper studies intraday price movement of stocks that is considered as an image classification problem. Using a CNN-based model we make a compelling case for the high-level relationship between the first hour of trading and the close. The algorithm managed to adequately separate between the two opposing classes and investing according to the algorithm's predictions outperformed all alternative constructs but the theoretical maximum. To support the thesis, we ran several additional tests. The findings in the paper highlight the suitability of computer vision techniques for studying financial markets and in particular prediction of stock price movements.
翻译:文件研究了被视为图像分类问题的股本日内价格变动问题。使用CNN模型,我们为交易头一小时与交易结束之间的高层关系提供了令人信服的理由。算法成功地将两个对立类别充分区分开来,根据算法的预测,投资业绩优于所有替代结构,但理论上限除外。为支持论文,我们进行了一些额外的测试。文件中的结论强调了计算机远景技术对于研究金融市场,特别是股票价格波动预测的适宜性。</s>