4.7 Article

A network perspective of comovement and structural change: Evidence from the Chinese stock market

期刊

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.irfa.2021.101782

关键词

Chinese stock market; Comovement; Complex network; Engle-Granger test; Weighted LeaderRank algorithm

资金

  1. National Natural Science Foundation of China [71850008, 71471020]
  2. Natural Science Foundation of Hunan Province, China [2019JJ50650]
  3. Scientific Research Foundation of Hunan Provincial Education Department, China [18C0221]

向作者/读者索取更多资源

This paper uses a complex network approach to study the interrelationships between individual stocks in the Chinese stock market, revealing the long-term investment value of stocks, driving factors, and the impact factors of the comovement structure. It is worth noting that the relationships between these influencing factors may change during crisis periods.
How to appropriately characterize the comovement between any pair of individual stocks and describe the market comovement structure is a great challenge and plays a key role in understanding emerging markets. This paper applies the complex network approach to deal with this issue for the Chinese stock market. Firstly, in view of the topological properties, we investigate the time-varying comovement between individual stocks by constructing 14 directed weighted stock networks. Furthermore, the weighted LeaderRank algorithm is employed to describe the comovement structure of the entire market. Most importantly, from the perspective of fundamental factors and industry factors, we reveal the driving factors of the comovement and structural change of the entire market. The empirical results suggest that: (i) Stocks with higher weighted LeaderRank algorithm scores generally have more long-term investment value; and the so-called views, too big to failand too connected to fail, are further confirmed. (ii) ROE, BMratio and Growth are significantly positively correlated with the comovement between individual stocks, and Mvalue is significantly negatively correlated during normal periods. However, during the crisis, the signs of regression coefficients of above four explanatory variables are reversed. (iii) In normal periods, we only find that the agriculture, forestry, animal husbandry & fishery and composite have significant influence on the comovement structure of the entire market. Besides, public utilities and medias also have a significant impact during the crisis. In addition, a very interesting fact in point is that network density, average clustering coefficient, and global efficiency can provide an early warningfor possible upcoming crises.

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