Steve Kroon
PLEASED: Planning, Learning, and Search for Decision-making. http://www.cs.sun.ac.za/~kroon/decision.html
Maties Machine Learning: 25 October 2019
Steve Kroon PLEASED: Planning, Learning, and Search for - - PowerPoint PPT Presentation
Steve Kroon PLEASED: Planning, Learning, and Search for Decision-making. http://www.cs.sun.ac.za/~kroon/decision.html Maties Machine Learning: 25 October 2019 This group considers almost any aspect of the general decision-making problem,
PLEASED: Planning, Learning, and Search for Decision-making. http://www.cs.sun.ac.za/~kroon/decision.html
Maties Machine Learning: 25 October 2019
Images: https://mimiandeunice.com/wp-content/uploads/2011/08/ME_447_Decisions-640x199.png
Principled - grounded in:
Typically requires:
Good foundation: Bayesian decision theory
Images:https://www.azimuthproject.org/azimuth/files/BayesianSDT-bigpic.png
○ Search ○ Planning ○ Bayes filter ○ Reinforcement learning
○ Adversarial ○ Collaborative
○ Inference approaches ○ Search techniques ○ Choice of approximations
Images:https://www.azimuthproject.org/azimuth/files/BayesianSDT-bigpic.png
*understanding relationships between and properties of machine learning/statistical models and approaches to fitting them
Images: https://miro.medium.com/max/1002/1*hblsrFOWViHS43l5YpUXeQ.png
Images:https://miro.medium.com/max/800/1*pZo_IcxW1GVuH2vQKdoIMQ.jpeg
Images:https://www.ericsson.com/49d220/assets/global/qbank/2019/06/13/architecture-50-109173resize436234crop00436234autoorientquality90stripbackground23ffffffextensionjpgid8.jpg
Learning Theory* (mostly NNs) Search/Planning (mostly MCTS) Bayesian analysis Latent variable models and variational inference Process monitoring, fault detection and diagnosis
*understanding relationships between and properties of machine learning/statistical models and approaches to fitting them
Common elements:
inference, and optimization