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Tensor representation in high-frequency financial data for price change prediction

机译:价格变化预测高频财务数据的张量表示

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Nowadays, with the availability of massive amount of trade data collected, the dynamics of the financial markets pose both a challenge and an opportunity for high frequency traders. In order to take advantage of the rapid, subtle movement of assets in High Frequency Trading (HFT), an automatic algorithm to analyze and detect patterns of price change based on transaction records must be available. The multichannel, time-series representation of financial data naturally suggests tensor-based learning algorithms. In this work, we investigate the effectiveness of two multilinear methods for the mid-price prediction problem against other existing methods. The experiments in a large scale dataset which contains more than 4 millions limit orders show that by utilizing tensor representation, multilinear models outperform vector-based approaches and other competing ones.
机译:如今,随着收集量大量的贸易数据,金融市场的动态构成了高频交易员的挑战和机会。为了利用高频交易(HFT)中资产的快速,微妙的流动,必须可用自动算法来分析和检测基于交易记录的价格变化模式。多声道,金融数据的时间序列表示自然而然地表明了基于张量的学习算法。在这项工作中,我们调查了两种多线性方法对其他现有方法的中价预测问题的有效性。在大规模数据集中包含超过4000升极度订单的实验表明,通过利用张量表示,多线性模型优于基于载体的方法和其他竞争。

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