Monday, May 04, 2026

Human & AI thinking: science & engineering

Can we engineer human thought? with Tom Griffiths – David Eagleman

"Can we engineer human thought?" with Tom Griffiths | Inner Cosmos with David Eagleman - YouTube

cognitive scientist Tom Griffiths... whether we're moving towards laws of thought.

Three Mathematical Lenses for Cognition

  • Rules and Symbols: A foundational approach stemming from logic that aims to define the structure of thinking through formal rules, similar to computer programming or arithmetic.
  • Artificial Neural Networks: These represent concepts as points in a multidimensional space, capturing the "fuzziness" and graded nature of human concepts that rigid logic often misses.
  • Probability and Statistics: A framework for reasoning under uncertainty, allowing for the revision of beliefs as new evidence is acquired (Bayesian inference).

The Intersection of Humans and AI

  • Data Efficiency: A primary distinction between humans and machines is the amount of data required to learn. Humans possess strong "inductive biases" that allow for rapid learning from few examples, whereas current AI models typically require massive datasets.
  • Jagged Intelligence: Modern AI often exhibits inconsistent performance—brilliant in some areas and nonsensical in others—which is largely a result of being trained on different data and lacking the same inductive biases shaped by human biology and evolutionary constraints.

The Future of Cognitive Science

  • Hybrid Modeling: The most promising path for understanding the mind lies in integrating these three lenses. Logic and probability help characterize the problems the mind solves, while neural networks provide a system for learning how to approximate those solutions.
  • Engineering Thought: By moving toward a mature "physics of thought," researchers hope to eventually support human decision-making, optimize learning environments, and build more robust, generalizable AI systems that complement rather than just mimic human intelligence.

Key Takeaway Understanding human thought is not about finding a single "silver bullet" theory, but recognizing that different mathematical formalisms illuminate different facets of the mind. Viewing intelligence as an adaptation to computational constraints—rather than a one-dimensional measure—provides a more nuanced perspective on the future of both human and artificial cognition.


Amazon.com: The Laws of Thought: The Quest for a Mathematical Theory of the Mind eBook : Griffiths, Tom: Kindle Store

Everyone has a basic understanding of how the physical world works. We learn about physics and chemistry in school, letting us explain the world around us in terms of concepts like force, acceleration, and gravity—the Laws of Nature. But we don’t have the same fluency with concepts needed to understand the world inside us—the Laws of Thought. While the story of how mathematics has been used to reveal the mysteries of the universe is familiar, the story of how it has been used to study the mind is not.

There is no one better to tell that story than Tom Griffiths, the head of Princeton’s AI Lab and a renowned expert in the field of cognitive science. In this groundbreaking book, he explains the three major approaches to formalizing thought—rules and symbols, neural networks, and probability and statistics—introducing each idea through the stories of the people behind it. As informed conversations about thought, language, and learning become ever more pressing in the age of AI, The Laws of Thought is an essential read for anyone interested in the future of technology.