Difference between revisions of "Deep Reinforcement Learning (DRL)"
| Line 1: | Line 1: | ||
[http://www.youtube.com/results?search_query=deep+reinforcement+learning+ Youtube search...] | [http://www.youtube.com/results?search_query=deep+reinforcement+learning+ Youtube search...] | ||
| − | * [ | + | * [http://deeplearning4j.org/deepreinforcementlearning.html Guide] |
| + | |||
| + | https://cdn-images-1.medium.com/max/640/1*NyWUkwz1QhrVJj9ygCQ5nA.png | ||
Goal-oriented algorithms, which learn how to attain a complex objective (goal) or maximize along a particular dimension over many steps; for example, maximize the points won in a game over many moves. Reinforcement learning solves the difficult problem of correlating immediate actions with the delayed returns they produce. Like humans, reinforcement learning algorithms sometimes have to wait a while to see the fruit of their decisions. They operate in a delayed return environment, where it can be difficult to understand which action leads to which outcome over many time steps. | Goal-oriented algorithms, which learn how to attain a complex objective (goal) or maximize along a particular dimension over many steps; for example, maximize the points won in a game over many moves. Reinforcement learning solves the difficult problem of correlating immediate actions with the delayed returns they produce. Like humans, reinforcement learning algorithms sometimes have to wait a while to see the fruit of their decisions. They operate in a delayed return environment, where it can be difficult to understand which action leads to which outcome over many time steps. | ||
<youtube>Vz5l886eptw</youtube> | <youtube>Vz5l886eptw</youtube> | ||
| + | <youtube>e3Jy2vShroE</youtube> | ||
<youtube>lvoHnicueoE</youtube> | <youtube>lvoHnicueoE</youtube> | ||
<youtube>MQ6pP65o7OM</youtube> | <youtube>MQ6pP65o7OM</youtube> | ||
<youtube>mckulxKWyoc</youtube> | <youtube>mckulxKWyoc</youtube> | ||
| − | |||
<youtube>313kbpBq8Sg</youtube> | <youtube>313kbpBq8Sg</youtube> | ||
| − | |||
| − | |||
| − | |||
| − | |||
| − | |||
| − | |||
| − | |||
| − | |||
| − | |||
| − | |||
Revision as of 05:40, 18 May 2018
Goal-oriented algorithms, which learn how to attain a complex objective (goal) or maximize along a particular dimension over many steps; for example, maximize the points won in a game over many moves. Reinforcement learning solves the difficult problem of correlating immediate actions with the delayed returns they produce. Like humans, reinforcement learning algorithms sometimes have to wait a while to see the fruit of their decisions. They operate in a delayed return environment, where it can be difficult to understand which action leads to which outcome over many time steps.