How Can the Current State of AI Guide Future Conversations of General Intelligence?
Abstract
:1. What Have AI People Been Doing? Machine Learning (ML) and Large Language Models (LLMs)
2. Challenges in Comparing AI and HI
2.1. Benchmarks and Reporting on Intelligence
2.2. Factoring in the Effect of Methodology
2.3. Factoring in the Priors
2.4. Environmental Influences
2.5. Human vs. Artificial Errors
2.6. Goals and Agency
2.7. Accounting for Vastly Different Scopes
3. Discussion and Future Directions
Author Contributions
Funding
Conflicts of Interest
References
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Kanaya, T.; Magine, A. How Can the Current State of AI Guide Future Conversations of General Intelligence? J. Intell. 2024, 12, 36. https://doi.org/10.3390/jintelligence12030036
Kanaya T, Magine A. How Can the Current State of AI Guide Future Conversations of General Intelligence? Journal of Intelligence. 2024; 12(3):36. https://doi.org/10.3390/jintelligence12030036
Chicago/Turabian StyleKanaya, Tomoe, and Ali Magine. 2024. "How Can the Current State of AI Guide Future Conversations of General Intelligence?" Journal of Intelligence 12, no. 3: 36. https://doi.org/10.3390/jintelligence12030036
APA StyleKanaya, T., & Magine, A. (2024). How Can the Current State of AI Guide Future Conversations of General Intelligence? Journal of Intelligence, 12(3), 36. https://doi.org/10.3390/jintelligence12030036