Unlocking the Potential of Global Human Expertise
Elliot Meyerson, Olivier Francon, Darren Sargent, Babak Hodjat, and, Risto Miikkulainen

TL;DR
This paper presents RHEA, an evolutionary AI framework that synthesizes and refines diverse human expert models to discover more effective global solutions, demonstrated through COVID-19 policy predictions.
Contribution
It introduces RHEA, a novel AI approach that distills expert models into neural networks and recombines them to enhance global problem-solving capabilities.
Findings
RHEA outperformed individual AI and human models in COVID-19 policy effectiveness.
The framework successfully integrated diverse expert knowledge into improved solutions.
Demonstrated transparency and systematic operation in synthetic and real-world domains.
Abstract
Solving societal problems on a global scale requires the collection and processing of ideas and methods from diverse sets of international experts. As the number and diversity of human experts increase, so does the likelihood that elements in this collective knowledge can be combined and refined to discover novel and better solutions. However, it is difficult to identify, combine, and refine complementary information in an increasingly large and diverse knowledge base. This paper argues that artificial intelligence (AI) can play a crucial role in this process. An evolutionary AI framework, termed RHEA, fills this role by distilling knowledge from diverse models created by human experts into equivalent neural networks, which are then recombined and refined in a population-based search. The framework was implemented in a formal synthetic domain, demonstrating that it is transparent and…
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Code & Models
Videos
Taxonomy
TopicsInterdisciplinary Research and Collaboration
MethodsSparse Evolutionary Training
