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Unveiling time-varying asymmetries in the stock market returns through energy prices, green innovation, and market risk factors: wavelet-based evidence from China

Author

Listed:
  • Muhammad Ramzan

    (University of Sialkot
    Lebanese American University)

  • Mohammad Razib Hossain

    (The University of Adelaide
    Bangabandhu Sheikh Mujibur Rahman Agricultural University)

  • Kashif Raza Abbasi

    (Nisantasi University
    ILMA University)

  • Tomiwa Sunday Adebayo

    (Lebanese American University
    Cyprus International University)

  • Rafael Alvarado

    (Universidad Espíritu Santo)

Abstract

The study explores the nexus between crude oil prices (COP), financial risk index (FRI), political risk index (PRI), green innovation (GIN) and information globalization index (ING) for Shanghai stock exchange (SSE) in China from 1997/M9 to 2021/M12 by utilizes novel wavelet methodologies to handle co-movement dynamics of multivariate time series via moving weighted regression also wavelet-based causality employed to identify the causality. The finding of Wavelet regression indicates the highest multiple correlation from a linear combination of the and ING at each scale, which indicates these variables are impacted by the stock market index. While FRI relates investor confidence declining stock prices may be detrimental to the SSE. However, any changes in PRI government rules or regulations could influence SSE-listed enterprises. GIN develops and employs eco-friendly technologies and procedures. As global awareness of sustainability grows, pioneering green entrepreneurs may attract investors and increase corporate valuations. Investors may find green innovation-driven companies less enticing, resulting in lower stock prices. Yet, ING may propose improved access to global markets and information, hence increasing the value of SSE's shares. According to the findings of wavelet-based Granger Causality, COP, FRI, GIN, ING, PRI, and SSE show significant causal interconnections at several scales. The study offers policy insights based on these findings.

Suggested Citation

  • Muhammad Ramzan & Mohammad Razib Hossain & Kashif Raza Abbasi & Tomiwa Sunday Adebayo & Rafael Alvarado, 2024. "Unveiling time-varying asymmetries in the stock market returns through energy prices, green innovation, and market risk factors: wavelet-based evidence from China," Economic Change and Restructuring, Springer, vol. 57(3), pages 1-36, June.
  • Handle: RePEc:kap:ecopln:v:57:y:2024:i:3:d:10.1007_s10644-024-09684-z
    DOI: 10.1007/s10644-024-09684-z
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