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1
Introduction
2
Machine Learning
3
Background
4
The Goal
5
Linear Oscillator Example
6
Partial Information
7
Limiting Sense
8
First Example
9
Memoryless Closure
10
Error Epsilon
11
Hybrid Modeling
12
Additive Residuals
13
Discrete vs Continuous
14
Notation
15
Conclusion
16
Thanks
Description:
Explore a comprehensive framework for machine learning of model error in dynamical systems in this 54-minute lecture from the Santa Fe Institute. Delve into key concepts including linear oscillator examples, partial information, memoryless closure, and hybrid modeling. Examine the differences between discrete and continuous approaches, and gain insights into additive residuals and error epsilon. Discover how this framework can be applied to improve modeling accuracy and predictive capabilities in complex dynamical systems.

A Framework for Machine Learning of Model Error in Dynamical Systems

Santa Fe Institute
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