What Is Federated Learning?

Advertisement

BEGIN ARTICLE PREVIEW:

Along with unsupervised machine learning and supervised learning, another common form of AI creation is reinforcement learning. Beyond regular reinforcement learning, deep reinforcement learning can lead to astonishingly impressive results, thanks to the fact that it combines the best aspects of both deep learning and reinforcement learning. Let’s take a look at precisely how deep reinforcement learning operates. Note that this article won’t delve too deeply into the formulas used in deep reinforcement learning, rather it aims to give the reader a high level intution for how the process works.Before we dive into deep reinforcement learning, it might be a good idea to refresh ourselves on how regular reinforcement learning works. In reinforcement learning, goal-oriented algorithms are designed through a process of trial and error, optimizing for the action that leads to the best result/the action that gains the most “reward”. When reinforcement learning algorithms are trained, they are given “rewards” or “punishments” that influence which actions they will take in the future. Algorithms try to find a set of actions that will provide the system with the most reward, balancing both immediate and future rewards.Reinforcement learning algorithms are very powerful because they can be …

END ARTICLE PREVIEW

READ MORE FROM SOURCE ARTICLE