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Mining Multiple Time Series Co-movements

机译:采矿多时序列共同运动

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In this paper, we propose a new model, called co-movement model, for constructing financial portfolios by analyzing and mining the co-movement patterns among multiple time series. Unlike the existing approaches where the portfolios' expected risks are computed based on the co-variances among the assets in the portfolios, we model their risks by considering the co-movement patterns of the time series. For example, given two financial assets, A and B, where we know that whenever the price of A drops, the price of B will drop, and vice versa. Intuitively, it may not be appropriate to construct a portfolio by including both A and B concurrently, as the exposure of loss will be increased. Yet, such kind of relationship can not always be captured by co-variance (i.e. traditional statistics). Apart from manipulating the risk, our proposed co-movement model also alters the computation of the portfolio's expected return out of the traditional perspective. Existing approaches for computing the portfolio's expected return are to combine the expected return of each individual asset and its contribution in the portfolio linearly. This formulation ignores the dependence relationship among assets. In contrast, our co-movement model would capture all dependence relationships. This can mimic the real life situation much better than the traditional approach. Extensive experiments are conducted to evaluate the effectiveness of our proposed model. The favorable experimental results indicate that the co-movement model is highly effective and feasible.
机译:在本文中,我们提出了一种新的模型,称为合作模型,用于通过分析和挖掘多时序列之间的合作模式来构建金融组合。与投资组合的预期风险基于投资组合中资产之间的共同差异计算的现有方法不同,我们通过考虑时间序列的合作模式来模拟其风险。例如,考虑到两种金融资产,A和B,我们知道每当跌落的价格时,B的价格会下降,反之亦然。直观地,通过将​​A和B同时构建一种和B同时构建投资组合可能不合适,因为损失的暴露将增加。然而,同事(即传统统计数据)并不总是捕获这种关系。除了操纵风险外,我们所提出的合作模式还改变了传统观点的投资组合的预期回报的计算。计算投资组合的预期返回的现有方法是将每个个人资产的预期回报与投资组合线性的预期返回结合在一起。该配方忽略了资产之间的依赖关系。相比之下,我们的合作模型将捕捉所有依赖关系。这可以模仿真实的生活情况比传统方法要好得多。进行了广泛的实验,以评估我们提出的模型的有效性。有利的实验结果表明,合作模型非常有效可行。

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