Mathematics for Data-Driven Modeling - The Science of Crystal Balls
Offered By: Isaac Newton Institute for Mathematical Sciences via YouTube
Course Description
Overview
Explore the cutting-edge field of data-driven modeling in this Rothschild Lecture by Professor Yannis Kevrekidis from Princeton University. Discover how modern mathematical techniques are revolutionizing the process of making predictions directly from observational data, bypassing traditional equation-based modeling. Learn about the evolution of mathematical modeling from conventional methods to innovative algorithms that analyze models without closed-form equations. Gain insights into the underlying mathematics and "serious thinking" behind these seemingly magical "crystal ball" prediction methods. Examine real-world examples demonstrating this new approach to deriving predictions from data, and understand how it relates to traditional modeling techniques. Delve into the future of mathematical modeling and its implications for various scientific disciplines.
Syllabus
Date: Tuesday 21st June 2016 - 16:00 to
Taught by
Isaac Newton Institute for Mathematical Sciences
Related Courses
Introduction to Statistics: Descriptive StatisticsUniversity of California, Berkeley via edX Mathematical Methods for Quantitative Finance
University of Washington via Coursera Dynamics
Massachusetts Institute of Technology via edX Practical Numerical Methods with Python
George Washington University via Independent 統計学Ⅰ:データ分析の基礎 (ga014)
University of Tokyo via gacco