4.8  40 reviews on Coursera

Prediction and Control with Function Approximation

In this course, you will learn how to solve problems with large, high-dimensional, and potentially infinite state spaces.
Course from Coursera
 4027 students enrolled
 en
Welcome to the Course!
On-policy Prediction with Approximation
Constructing Features for Prediction
Control with Approximation
Policy Gradient

In this course, you will learn how to solve problems with large, high-dimensional, and potentially infinite state spaces. You will see that estimating value functions can be cast as a supervised learning problem---function approximation---allowing you to build agents that carefully balance generalization and discrimination in order to maximize reward. We will begin this journey by investigating how our policy evaluation or prediction methods like Monte Carlo and TD can be extended to the function approximation setting. You will learn about feature construction techniques for RL, and representation learning via neural networks and backprop. We conclude this course with a deep-dive into policy gradient methods; a way to learn policies directly without learning a value function. In this course you will solve two continuous-state control tasks and investigate the benefits of policy gradient methods in a continuous-action environment.

Prediction and Control with Function Approximation
Free
per course
Incentives
100% online
Course 3 of 4 in the
Flexible deadlines
Intermediate Level
Approx. 18 hours to complete
English
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