金融市场预测的动态横截面制度识别

Rongbo Chen, Kunpeng Xun, Jean-Marc Patenaude, Shengrui Wang
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引用次数: 0

摘要

我们研究了与金融市场预测的动态横截面制度识别相关的问题。金融市场可以被视为一个生态系统,由可能在不同时间点发生变化的制度所监管。在现有的大多数基于状态的预测模型中,由于缺乏在测试数据上识别新状态的机制,状态只能根据静态转移概率矩阵在训练数据上识别的一组固定状态之间切换。这阻碍了它们的有效性,因为金融市场是随时间变化的,可能在未来的任何时候陷入新的体制。而且,它们大多只能处理单个时间序列,而不能处理多个时间序列。这些缺点促使我们设计一个动态横截面状态识别模型用于时间序列预测。该模型定义在具有时变过渡概率的多时间序列系统上,能够从时变金融市场中动态识别新的横截面制度。在真实金融数据集上的实验结果表明,我们的模型具有良好的性能和适用性。
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Dynamic Cross-sectional Regime Identification for Financial Market Prediction
We investigate issues related to dynamic cross-sectional regime identification for financial market prediction. A financial market can be viewed as an ecosystem regulated by regimes that may switch at different time points. In most existing regime-based prediction models, regimes can only switch, according to a static transition probability matrix, among a fixed set of regimes identified on training data due to the fact that they lack in mechanism of identifying new regimes on test data. This prevents them from being effective as the financial markets are time-evolving and may fall into a new regime at any future time. Moreover, most of them only handle single time series, and are not capable of dealing with multiple time series. These shortcomings prompted us to devise a dynamic cross-sectional regime identification model for time series prediction. The new model is defined on a multi-time-series system, with time-varying transition probabilities, and can identify new cross-sectional regimes dynamically from the time-evolving financial market. Experimental results on real-world financial datasets illustrate the promising performance and suitability of our model.
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