# SARSA algorithm

I am having trouble understanding the SARSA algorithm: http://en.wikipedia.org/wiki/SARSA

In particular, when updating the Q value what is gamma? and what values are used for s(t+1) and a(t+1)?

Can someone explain this algorithm to me?

Thanks.

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Check out the Q-Learning article that's linked. It goes over what the parameters are. –  jonsca May 22 '11 at 2:47

Gamma determines how much memory your algorithm has. If you set it to 0.0, then your algorithm will not update the value function Q at all. If you set it to 1.0, then the new experience will be given as much weight as all the previous experiences combined. The best values lie inbetween and have to be determined experimentally.

Here is how it works:

• In your first step, you just get a state. Simply store it away as st. Also, look up your value function for the best action to make in this state and store it as at.
• In each subsequent step, you get rt+1 and st+1. Again, use your value function to find the best action — at+1. The value of the transition from your previous action to the new one is equal to rt+1+Q(st+1,at+1)-Q(st,at). Use this to update your long-term estimate of the previous action's value Q(st,att). Finally, store st+1 and at+1 as st and at for the next step.

In effect, the value function is just a running average of these update values for each action and every state.

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I can see how the reward will update the Q value, but what 'value' can I get from the s(t+1) and the a(t+1) they are just a new state and a new action to take, how can I get a 'value' from this to update Q? –  Neutralise May 22 '11 at 4:39
At every step after the first one you get a state and a reward. The value of the previous action, the value of the current action, and the current reward give SARSA the information to improve its estimate of the long-term value of the previous action. –  Don Reba May 22 '11 at 4:47
Oh, ok. One last problem, when I update the Q value, I update the value for the first (st,at) pair and not the (s(t+1),a(t+1)) - right? –  Neutralise May 22 '11 at 4:50
Exactly, it is Q(s(t),a(t)) that you update. From the point of view of this value, you just went one step into the future and learned the outcome of your action. –  Don Reba May 22 '11 at 5:06
Ohh, that makes sense. But you still take the action. It will just know from experience next time and can choose a better action? –  Neutralise May 22 '11 at 5:13