311 reputation
1212
bio website
location
age
visits member for 3 years
seen Jun 6 '13 at 9:37

Jul
2
awarded  Curious
May
19
awarded  Popular Question
Apr
9
awarded  Popular Question
Feb
26
awarded  Famous Question
Jan
17
awarded  Yearling
Dec
18
awarded  Nice Question
Nov
15
awarded  Popular Question
Jun
5
asked Difference between non-stationary and random process.
Apr
3
awarded  Popular Question
Feb
2
awarded  Notable Question
Dec
3
comment Multi-Criteria Optimization with Reinforcement Learning
Thanks for your suggestions. But the recommended papers/methods with multi-agent RL are for off-policy learning or episodic tasks. In my case, I have an online learning problem.
Dec
3
accepted Multi-Criteria Optimization with Reinforcement Learning
Nov
12
asked Multi-Criteria Optimization with Reinforcement Learning
Oct
5
awarded  Popular Question
Aug
17
comment Q-learning value update
BTW, I am now using Q(lambda) learning with eligibility traces as described in Sutton's book. I do see some improvements. The learning now goes from higher power consumption (low latency) to low power consumption (high latency) as I vary lambda in the above cost function. The problem is that the learning achieves this by just increasing the time-out values in sleep state, while keeping the time-out values in idle state to minimum. What I expect is that it should increase time-out in sleep while decrease the time-out values in idle (from largest to smallest) as I vary lambda from 0 to 1.
Aug
17
comment Q-learning value update
For example, if I choose 100 steps randomly as an episode. After 100 steps, which state-action should be assigned cost? All the state-action pair? Does it mean I will have to keep track of the accumulated power+latency for all the state-action pairs and then assign the reward to all of them after the episode, right?
Aug
15
comment Boltzman exploration with more than two actions in Q-learning
But perhaps this technique is suitable for positive rewards. Because I get wrong (maximum) probabilities in some state-action pairs. Could you please help?
Aug
15
comment Boltzman exploration with more than two actions in Q-learning
Thanks for your help. I have negative rewards in Q-matrix. I use the Boltzman formula in the same way to calculate the probabilities and to pick the greedy action (minimum value with minus sign) with the maximum probability. The problem is that when the value of T (temperature coefficient) becomes too small, I get infinite values as probabilities. To avoid this, I used the technique as described in igitur-archive.library.uu.nl/dissertations/2011-0120-200243/… (page 53).
Aug
14
comment Q-learning value update
Thanks. In my case, could you suggest a better cost function to deal with the power consumption and per request latency with respect to a selected power-performance parameter?
Aug
13
comment Q-learning value update
Thanks Trowback1986. Your hints are very useful. There is one more question. If the next state and the current state by action are same, shall I assign cost to this state, or shall I wait till the state changes and assign the cost in terms of total energy consumption and latency? For example, if the algorithm executes a time-out period in sleep state and no requests come by the end of time-out period, the system finds itself in the same state.