久久综合色88_欧美激情国产日韩精品一区18_午夜精品一区二区三区在线观看 _自拍日韩亚洲一区在线

課程目錄: 基于樣本的學(xué)習(xí)方法培訓(xùn)
4401 人關(guān)注
(78637/99817)
課程大綱:

    基于樣本的學(xué)習(xí)方法培訓(xùn)

 

 

 

Welcome to the Course!
Welcome to the second course in the Reinforcement Learning Specialization:
Sample-Based Learning Methods, brought to you by the University of Alberta,
Onlea, and Coursera.
In this pre-course module, you'll be introduced to your instructors,
and get a flavour of what the course has in store for you.
Make sure to introduce yourself to your classmates in the "Meet and Greet" section!
Monte Carlo Methods for Prediction & Control
This week you will learn how to estimate value functions and optimal policies,
using only sampled experience from the environment.
This module represents our first step toward incremental learning methods
that learn from the agent’s own interaction with the world,
rather than a model of the world.
You will learn about on-policy and off-policy methods for prediction
and control, using Monte Carlo methods---methods that use sampled returns.
You will also be reintroduced to the exploration problem,
but more generally in RL, beyond bandits.
Temporal Difference Learning Methods for Prediction
This week, you will learn about one of the most fundamental concepts in reinforcement learning:
temporal difference (TD) learning.
TD learning combines some of the features of both Monte Carlo and Dynamic Programming (DP) methods.
TD methods are similar to Monte Carlo methods in that they can learn from the agent’s interaction with the world,
and do not require knowledge of the model.
TD methods are similar to DP methods in that they bootstrap,
and thus can learn online---no waiting until the end of an episode.
You will see how TD can learn more efficiently than Monte Carlo, due to bootstrapping.
For this module, we first focus on TD for prediction, and discuss TD for control in the next module.
This week, you will implement TD to estimate the value function for a fixed policy, in a simulated domain.
Temporal Difference Learning Methods for ControlThis week,
you will learn about using temporal difference learning for control,
as a generalized policy iteration strategy.
You will see three different algorithms based on bootstrapping and Bellman equations for control: Sarsa,
Q-learning and Expected Sarsa. You will see some of the differences between
the methods for on-policy and off-policy control, and that Expected Sarsa is a unified algorithm for both.
You will implement Expected Sarsa and Q-learning, on Cliff World.
Planning, Learning & ActingUp until now,
you might think that learning with and without a model are two distinct,
and in some ways, competing strategies: planning with
Dynamic Programming verses sample-based learning via TD methods.
This week we unify these two strategies with the Dyna architecture.
You will learn how to estimate the model from data and then use this model
to generate hypothetical experience (a bit like dreaming)
to dramatically improve sample efficiency compared to sample-based methods like Q-learning.
In addition, you will learn how to design learning systems that are robust to inaccurate models.

主站蜘蛛池模板: 视频一区二区三区在线观看| 久久久国产精品亚洲一区| 日韩av成人在线| 久久国产视频网站| 亚洲综合视频一区| 国产精品九九久久久久久久| 日韩中文字幕久久| 婷婷五月综合缴情在线视频| 国产精品久久久91| 国产精品一区二区av| 欧美不卡视频一区发布| 婷婷亚洲婷婷综合色香五月| 亚洲午夜精品久久久久久人妖| 久久超碰亚洲| 久久精精品视频| 久久久久国产精品免费网站| 久久婷婷国产综合尤物精品| 欧美日韩精品免费在线观看视频| 亚洲精品免费av| 色综合久久久久久中文网| 亚洲欧洲日本国产| 视频一区二区在线| 欧美日韩精品不卡| 欧美日韩一区二区在线免费观看 | 日韩亚洲欧美中文在线| 午夜免费电影一区在线观看| www..com日韩| 91精品国产91久久久久| 婷婷五月综合缴情在线视频| 日韩在线视频免费观看高清中文| 日本一区二区三区视频在线观看| 琪琪亚洲精品午夜在线| 久热国产精品视频| 国产精品免费成人| 91精品国产91久久久久久不卡 | 久久这里精品国产99丫e6| 久章草在线视频| 国产精品免费小视频| 国产免费一区| 国产精品美女网站| 亚洲高潮无码久久|