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Cross-influence of information and risk effects on the IPO market: exploring risk disclosure with a machine learning approach

Author

Listed:
  • Huosong Xia

    (Wuhan Textile University
    Key Research Institute of Humanities and Social Sciences)

  • Juan Weng

    (Wuhan Textile University)

  • Sabri Boubaker

    (EM Normandie Business School
    Vietnam National University
    Swansea University)

  • Zuopeng Zhang

    (University of North Florida)

  • Sajjad M. Jasimuddin

    (Kedge Business School)

Abstract

The paper examines whether the structure of the risk factor disclosure in an IPO prospectus helps explain the cross-section of first-day returns in a sample of Chinese initial public offerings. This paper analyzes the semantics and content of risk disclosure based on an unsupervised machine learning algorithm. From both long-term and short-term perspectives, this paper explores how the information effect and risk effect of risk disclosure play their respective roles. The results show that risk disclosure has a stronger risk effect at the semantic novelty level and a more substantial information effect at the risk content level. A novel aspect of the paper lies in the use of text analysis (semantic novelty and content richness) to characterize the structure of the risk factor disclosure. The study shows that initial IPO returns negatively correlate with semantic novelty and content richness. We show the interaction between risk effect and information effect on risk disclosure under the nature of the same stock plate. When enterprise information transparency is low, the impact of semantic novelty and content richness on the IPO market is respectively enhanced.

Suggested Citation

  • Huosong Xia & Juan Weng & Sabri Boubaker & Zuopeng Zhang & Sajjad M. Jasimuddin, 2024. "Cross-influence of information and risk effects on the IPO market: exploring risk disclosure with a machine learning approach," Annals of Operations Research, Springer, vol. 334(1), pages 761-797, March.
  • Handle: RePEc:spr:annopr:v:334:y:2024:i:1:d:10.1007_s10479-022-05012-8
    DOI: 10.1007/s10479-022-05012-8
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