首页> 外文会议>2015 International Symposium on Mathematical Sciences and Computing Research >Model performance between linear vector autoregressive and Markov switching vector autoregressive models on modelling structural change in time series data
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Model performance between linear vector autoregressive and Markov switching vector autoregressive models on modelling structural change in time series data

机译:线性向量自回归模型与马尔可夫切换向量自回归模型之间的模型性能,对时间序列数据的结构变化建模

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摘要

Real financial time series data always exhibit structural change, jumps or breaks. Thus, in this paper, the performance of the linear vector autoregressive model (VAR), mean adjusted Markov switching vector autoregressive model (MSM-VAR) and mean adjusted heteroskedasticity Markov switching vector autoregressive model (MSMH-VAR) are applied in order to examine the oil price return and the gold price return effect on stock market returns. The two break point tests indicate the existence of break dates in the data. In addition, a comparison among the three model's performance show that the two Markov switching vector autoregressive models with first autoregressive order able to provide the most significance, reliable and valid results as compared to linear vector autoregressive.
机译:实际财务时间序列数据始终会显示出结构变化,跳跃或断裂。因此,本文采用线性向量自回归模型(VAR),均值调整的马尔可夫切换向量自回归模型(MSM-VAR)和均值调整的异方差马尔可夫切换向量自回归模型(MSMH-VAR)的性能进行检验石油价格收益率和黄金价格收益率对股市收益的影响。两个中断点测试表明数据中存在中断日期。此外,对这三个模型的性能进行比较表明,与线性向量自回归相比,具有第一自回归阶数的两个马尔可夫切换向量自回归模型能够提供最有意义,最可靠和有效的结果。

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