Research on the Influence Mechanism of Network Information Driving Abnormal Asset Prices
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Research on the Influence Mechanism of Network Information Driving Abnormal Asset Prices

Hanyu Hu 1*
1 Shijiazhuang Tiedao University
*Corresponding author: H3370597497@outlook.com
Published on 11 November 2025
Volume Cover
AEMPS Vol.240
ISSN (Print): 2754-1177
ISSN (Online): 2754-1169
ISBN (Print): 978-1-80590-527-1
ISBN (Online): 978-1-80590-528-8
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Abstract

Under the background of the deep integration of the digital economy and capital markets, based on this article focuses on a very urgent phenomenon is the Internet Information caused by abnormal asset prices, in order to clarify the inherent effect of the Internet Information caused by abnormal asset price: through combining a mix of domestic and overseas studies by means of a mixed method and thorough investigation by mixing thorough investigation and case study by a mixture of case study and quantitative methods. First, the credibility and authority of the source of online information is the initial point from which we can assess how intensely and in which direction market participants will react to the information; Second, the emotional tendencies in the information get blown out of proportion through the collective spreading of information across all social media platforms; It will further exacerbate the volatility of assets; And Third Some practical restraints such as transaction costs and short-selling prohibitions reduce how much rational actors can take advantage of arbitrage opportunities and make it difficult for price distortions to be corrected promptly; The degree of market liquidity determines the duration of abnormal prices. These 4 act mutually supportive to disrupt the balance among intrinsic value of assets and current market transaction price. This research work will provide more specific theoretical guidance and references for various investors who make more rational investment choices.

Keywords:

Internet information, Abnormal asset prices, Emotional mobilization, Arbitrage constraints

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Hu,H. (2025). Research on the Influence Mechanism of Network Information Driving Abnormal Asset Prices. Advances in Economics, Management and Political Sciences,240,58-62.

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Cite this article

Hu,H. (2025). Research on the Influence Mechanism of Network Information Driving Abnormal Asset Prices. Advances in Economics, Management and Political Sciences,240,58-62.

Data availability

The datasets used and/or analyzed during the current study will be available from the authors upon reasonable request.

About volume

Volume title: Proceedings of ICFTBA 2025 Symposium: Data-Driven Decision Making in Business and Economics

ISBN: 978-1-80590-527-1(Print) / 978-1-80590-528-8(Online)
Editor: Lukášak Varti
Conference date: 12 December 2025
Series: Advances in Economics, Management and Political Sciences
Volume number: Vol.240
ISSN: 2754-1169(Print) / 2754-1177(Online)