Patterns and Parsimony - High-Level Representations in Scientific Modeling
Offered By: Santa Fe Institute via YouTube
Course Description
Overview
Explore the concept of high-level representations in scientific modeling through this lecture by Tyler Millhouse from The University of Arizona. Delve into the importance of developing effective representations for understanding complex systems, from psychological phenomena to physical environments. Examine the role of compression in creating informative yet simple abstractions, and critically analyze its limitations. Investigate how model-relevant patterns contribute to the quality of high-level representations. Gain insights into the intersection of philosophy, cognitive science, and data science in the pursuit of better scientific modeling techniques.
Syllabus
Patterns and Parsimony
Taught by
Santa Fe Institute
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