AI Product Value Assessment Model: An Interdisciplinary Integration Based on Information Theory, Economics, and Psychology
By: Yu yang
Potential Business Impact:
Helps companies pick good AI, not bad.
In recent years, breakthroughs in artificial intelligence (AI) technology have triggered global industrial transformations, with applications permeating various fields such as finance, healthcare, education, and manufacturing. However, this rapid iteration is accompanied by irrational development, where enterprises blindly invest due to technology hype, often overlooking systematic value assessments. This paper develops a multi-dimensional evaluation model that integrates information theory's entropy reduction principle, economics' bounded rationality framework, and psychology's irrational decision theories to quantify AI product value. Key factors include positive dimensions (e.g., uncertainty elimination, efficiency gains, cost savings, decision quality improvement) and negative risks (e.g., error probability, impact, and correction costs). A non-linear formula captures factor couplings, and validation through 10 commercial cases demonstrates the model's effectiveness in distinguishing successful and failed products, supporting hypotheses on synergistic positive effects, non-linear negative impacts, and interactive regulations. Results reveal value generation logic, offering enterprises tools to avoid blind investments and promote rational AI industry development. Future directions include adaptive weights, dynamic mechanisms, and extensions to emerging AI technologies like generative models.
Similar Papers
AI Flow: Perspectives, Scenarios, and Approaches
Artificial Intelligence
AI works better everywhere, using less power.
An Artificial Intelligence Value at Risk Approach: Metrics and Models
Computers and Society
Helps companies manage AI dangers better.
The Risk-Adjusted Intelligence Dividend: A Quantitative Framework for Measuring AI Return on Investment Integrating ISO 42001 and Regulatory Exposure
Computers and Society
Helps companies know if AI is worth the money.