A Behavioral Finance-Based Model for Pricing Digital Assets (Decentralized Assets)
Keywords:
Digital asset pricing, behavioral finance, grounded theory, decentralized assets, investor decision makingAbstract
This study aimed to develop a conceptual model for pricing digital assets by integrating behavioral finance perspectives and identifying psychological and social factors influencing investors’ decision-making in decentralized markets. A qualitative grounded theory approach was adopted. The study involved 15 experts in digital currencies, blockchain, and behavioral finance selected through purposive sampling until theoretical saturation was achieved. Data were collected via semi-structured interviews and textual content analysis. Open, axial, and selective coding were applied to build the theoretical framework. Reliability was confirmed using quality control indices such as Krippendorff’s alpha, Holsti coefficient, Scott’s Pi, and Cohen’s Kappa, all indicating high inter-coder agreement. The resulting model captured multiple determinants of digital asset pricing. Causal factors included emotional and psychological behaviors (e.g., fear of missing out, fear and greed), the influence of news and media, and social association effects. Contextual factors encompassed uncertainty, ambiguity, and market volatility. Strategic factors such as market trust and credibility, investors’ knowledge and awareness, and reference points were identified. Core conditions included regulatory and legal environments, technological infrastructure, and macroeconomic conditions. Consequences involved enhanced market transparency, analysts’ and advisors’ influence, institutional and retail investor interactions, and the impact of past experiences on risk-taking. The proposed behavioral finance-driven model demonstrates that digital asset pricing extends beyond classical economic frameworks, heavily shaped by investor psychology and external information dynamics. The findings can guide investors toward more rational strategies and support policymakers in creating effective regulations and safer decentralized financial ecosystems.
Downloads
References
Adisa, O., Ilugbusi, B. S., Obi, O. C., Awonuga, K. F., Adelekan, O. A., Asuzu, O. F., & Ndubuisi, N. L. (2024). Decentralized Finance (DEFI) in the US economy: A review: Assessing the rise, challenges, and implications of blockchain-driven financial systems. World Journal of Advanced Research and Reviews, 21(1), 2313-2328. https://doi.org/https://doi.org/10.30574/wjarr.2024.21.1.0321
Ai, Y., Sun, G., & Kong, T. (2023). Digital finance and stock price crash risk. International Review of Economics & Finance, 88, 607-619. https://doi.org/10.1016/j.iref.2023.07.003
Asiab Aghdam, L., Rahimzadeh, A., & Rajaei, Y. (2022). The Effect of Economic Variables on the Stock Price Behavior of Companies Listed on the Stock Exchange. Financial Economics Quarterly, 16(59), 105-126. https://www.sid.ir/paper/1035800/fa
Azadi, K., Hamid, A., Mohammadjavad, T., & Hamid, K. (2022). The Effect of Financial Statement Readability on Stock Price Crash Risk and Shareholder Behavior. Financial Accounting Knowledge, 8(1), 121-144.
Bashiri Manesh, N., & Shahnazi, H. (2022). The impact of investor and managerial behavioral biases on stock price bubbles in Iran's capital market. Financial Knowledge Securities Analysis, 15(53), 15-32. https://www.sid.ir/paper/1063333/fa
Bennett, D. (2023). BeFi meets DeFi: A behavioral finance approach to decentralized finance asset pricing. Research in International Business and Finance, 65.
Chen, J., Clos, J., Price, D., & Caleb-Solly, P. (2023). Digital Twins for Human-Assistive Robot Teams in Ambient Assisted Living. https://doi.org/10.1145/3597512.3597520
Chen, S., & Alexiou, C. (2025). Digital Transformation as a Catalyst for Resilience in Stock Price Crisis: Evidence from A 'New Quality Productivity' Perspective. Asia-Pacific Finance Markets. https://doi.org/10.1007/s10690-025-09517-7
Hasanzadeh, I., Sheikh, M. J., Arabzadeh, M., & Farzinfar, A. A. (2023). The Role of Economic Policy Uncertainty in Relation to Financial Market Instability and Stock Liquidity in Tehran Stock Exchange Companies. Dynamic Management and Business Analysis, 2(3), 163-178. https://doi.org/10.22034/dmbaj.2024.2031971.2315
Lai, X. (2023). Anchoring and Adjustment Heuristic in behavioral finance. Advances in Economics and Management Research, 7(1), 646. https://doi.org/10.56028/aemr.7.1.646.2023
Mohammad, E. A. (2023). The Economics of Behavioral Finance and Its Effects on Investment Decisions in Kurdistan Region of Iraq for the Period 2020-2022. Koya University Journal of Humanities and Social Sciences, 6(1), 88-94. https://doi.org/10.14500/kujhss.v6n1y2023.pp88-94
Muhammad, A. (2024). Decentralized Finance (DeFi) and Traditional Banking: A Convergence or Collision. Economics Politics and Regional Development, 5(1), p1. https://doi.org/10.22158/eprd.v5n1p1
Owolabi, O. S. (2024). Integration of Decentralized Finance (DeFi) in the U.S. Supply Chain Finance: Opportunities, Challenges, and Future Prospects. International Journal of Computer Science and Information Technology, 16(3), 121-141. https://doi.org/10.5121/ijcsit.2024.16310
Rahayu, F. S. (2023). The Behavioral Finance of MSME in Indonesia: Financial Literacy, Financial Technology (Fintech), and Financial Attitudes. International Journal of Digital Entrepreneurship and Business, 4(2). https://doi.org/10.52238/ideb.v4i2.127
Salim, E., Ali, H., & Yulasmi, Y. (2023). Visiting Decision Model: Products, Prices, and Digital Marketing Through Consumer Satisfaction Visiting Decision in Tourism in Solok Regency. International Journal of Social Science and Business, 7(2), 313-325. https://doi.org/10.23887/ijssb.v7i2.53320
Sood, K. (2023). Behavioral Finance and Investor Types: Managing Behavior to Make Better Investment Decisions. Qualitative Research in Financial Markets, 15(5), 907-912. https://doi.org/10.1108/qrfm-11-2023-237
Webb, A. (2024). Decentralized Finance (DeFi) and Its Implications on Traditional Network Economics: A Comparative Study on Market Power, Pricing Dynamics, and User Adoption. International Journal of Cryptocurrency Research, 4(1), 40-46. https://doi.org/10.51483/ijccr.4.1.2024.40-46
Yin, H., & Yang, R. (2022). Investor Financial Literacy, Decision-Making Behavior, and Stock Price Volatility—Evidence From Behavioral Experiments. Journal of Neuroscience Psychology and Economics, 15(2), 69-88. https://doi.org/10.1037/npe0000158
Zare Bahnamiri, M. J., & Michaghani, H. (2023). Investigating the effect of environmental uncertainty on the relationship between herd behavior and negative price shock in TSE. Iranian Journal of Finance, 7(1), 66-84. https://doi.org/10.30699/ijf.2022.324531.1305
Zhang, J. Y. (2025). Has the fan economy affected the price of non-fungible tokens in the digital art market? Frontiers in Blockchain, 8, 1588837. https://doi.org/10.3389/fbloc.2025.1588837
Zhou, L., Lin, W., & Yang, C. (2022). Investor Trading Behavior and Asset Prices: Evidence From Quantile Regression Analysis. International Journal of Finance & Economics. https://doi.org/10.1002/ijfe.2754
Zhu, S., Gao, J., & Chen, K. (2023). Digital transformation and risk of share price crash: Evidence from a new digital transformation index. Finance Research Letters, 58. https://doi.org/10.1016/j.frl.2023.104403
Downloads
Published
Submitted
Revised
Accepted
Issue
Section
License
Copyright (c) 2025 Peyman Karimi (Author); Gholamreza Askarzadeh Dareh (Corresponding author); Alireza Rayati Shavazi, Seyed Yahya Abtahi (Author)

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.