This paper presents a method of constructing a mixed graph which can be used to analyze the causality for multivariate time series.We construct a partial correlation graph at first which is an undirected graph.For eve...This paper presents a method of constructing a mixed graph which can be used to analyze the causality for multivariate time series.We construct a partial correlation graph at first which is an undirected graph.For every undirected edge in the partial correlation graph,the measures of linear feedback between two time series can help us decide its direction,then we obtain the mixed graph.Using this method,we construct a mixed graph for futures sugar prices in Zhengzhou(ZF),spot sugar prices in Zhengzhou(ZS) and futures sugar prices in New York(NF).The result shows that there is a bi-directional causality between ZF and ZS,an unidirectional causality from NF to ZF,but no causality between NF and ZS.展开更多
基金supported by Program for Innovative Research Team in UIBE(No.CXTD5-05)UIBE Networking and Collaboration Center for China's Multinational Business(No.201504YY006A)+1 种基金supported by the BCMIS,NSF China Zhongdian Project(No.11131002)NSFC(No.11371062)
文摘This paper presents a method of constructing a mixed graph which can be used to analyze the causality for multivariate time series.We construct a partial correlation graph at first which is an undirected graph.For every undirected edge in the partial correlation graph,the measures of linear feedback between two time series can help us decide its direction,then we obtain the mixed graph.Using this method,we construct a mixed graph for futures sugar prices in Zhengzhou(ZF),spot sugar prices in Zhengzhou(ZS) and futures sugar prices in New York(NF).The result shows that there is a bi-directional causality between ZF and ZS,an unidirectional causality from NF to ZF,but no causality between NF and ZS.