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网络联动效应能决定回报吗?来自中国股票市场的证据。

Can Network Linkage Effects Determine Return? Evidence from Chinese Stock Market.

作者信息

Qiao Haishu, Xia Yue, Li Ying

机构信息

College of Finance and Statistics, Hunan University, Changsha, China.

出版信息

PLoS One. 2016 Jun 3;11(6):e0156784. doi: 10.1371/journal.pone.0156784. eCollection 2016.

Abstract

This study used the dynamic conditional correlations (DCC) method to identify the linkage effects of Chinese stock market, and further detected the influence of network linkage effects on magnitude of security returns across different industries. Applying two physics-derived techniques, the minimum spanning tree and the hierarchical tree, we analyzed the stock interdependence within the network of the China Securities Index (CSI) industry index basket. We observed that that obvious linkage effects existed among stock networks. CII and CCE, CAG and ITH as well as COU, CHA and REI were confirmed as the core nodes in the three different networks respectively. We also investigated the stability of linkage effects by estimating the mean correlations and mean distances, as well as the normalized tree length of these indices. In addition, using the GMM model approach, we found inter-node influence within the stock network had a pronounced effect on stock returns. Our results generally suggested that there appeared to be greater clustering effect among the indexes belonging to related industrial sectors than those of diverse sectors, and network comovement was significantly affected by impactive financial events in the reality. Besides, stocks that were more central within the network of stock market usually had higher returns for compensation because they endured greater exposure to correlation risk.

摘要

本研究采用动态条件相关(DCC)方法来识别中国股票市场的联动效应,并进一步检测网络联动效应对不同行业证券回报幅度的影响。应用两种源自物理学的技术,即最小生成树和层次树,我们分析了中证行业指数篮子网络内的股票相互依存关系。我们观察到股票网络之间存在明显的联动效应。CII和CCE、CAG和ITH以及COU、CHA和REI分别被确认为三个不同网络中的核心节点。我们还通过估计这些指数的平均相关性、平均距离以及归一化树长来研究联动效应的稳定性。此外,使用广义矩模型方法,我们发现股票网络内的节点间影响对股票回报有显著影响。我们的结果总体表明,与不同行业的指数相比,相关工业部门的指数之间似乎存在更大的聚类效应,并且在现实中,网络协同变动受到重大金融事件的显著影响。此外,在股票市场网络中处于更核心位置的股票通常因其承受更大的相关性风险而有更高的回报作为补偿。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fd27/4892691/41160600a373/pone.0156784.g001.jpg

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