The Bellman equation of optimality
To explain the Bellman equation, it's better to go a bit abstract. Don't be afraid, I'll provide the concrete examples later to support your intuition! Let's start with a deterministic case, when all our actions have a 100% guaranteed outcome. Imagine that our agent observes state and has N available actions. Every action leads to another state, , with a respective reward, . Also assume that we know the values, , of all states connected to the state . What will be the best course of action that the agent can take in such a state?
If we choose the concrete action , and calculate the value given to this action, then the value will be . So, to choose the best possible action, the agent needs to calculate the resulting values for every action and choose the maximum possible outcome. In other words: . If we're using discount factor , we need to multiply the value of the next state...