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N-step Off-policy Sarsa.kt
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N-step Off-policy Sarsa.kt
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@file:Suppress("NAME_SHADOWING")
package lab.mars.rl.algo.ntd
import lab.mars.rl.algo.V_from_Q
import lab.mars.rl.algo.`ε-greedy`
import lab.mars.rl.model.impl.mdp.IndexedAction
import lab.mars.rl.model.impl.mdp.IndexedMDP
import lab.mars.rl.model.impl.mdp.IndexedState
import lab.mars.rl.model.impl.mdp.OptimalSolution
import lab.mars.rl.model.isTerminal
import lab.mars.rl.model.log
import lab.mars.rl.util.buf.newBuf
import lab.mars.rl.util.log.debug
import lab.mars.rl.util.math.Π
import lab.mars.rl.util.math.Σ
import lab.mars.rl.util.tuples.tuple3
import org.apache.commons.math3.util.FastMath.min
import org.apache.commons.math3.util.FastMath.pow
fun IndexedMDP.`N-step off-policy sarsa`(
n: Int,
ε: Double,
α: (IndexedState, IndexedAction) -> Double,
episodes: Int): OptimalSolution {
val b = equiprobablePolicy()
val π = equiprobablePolicy()
val Q = QFunc { 0.0 }
val _R = newBuf<Double>(min(n, MAX_N))
val _S = newBuf<IndexedState>(min(n, MAX_N))
val _A = newBuf<IndexedAction>(min(n, MAX_N))
for (episode in 1..episodes) {
log.debug { "$episode/$episodes" }
var n = n
var T = Int.MAX_VALUE
var t = 0
var s = started()
var a = b(s)
_R.clear();_R.append(0.0)
_S.clear();_S.append(s)
_A.clear();_A.append(a)
do {
if (t >= n) {
_R.removeFirst()
_S.removeFirst()
_A.removeFirst()
}
if (t < T) {
val (s_next, reward) = a.sample()
_R.append(reward)
_S.append(s_next)
s = s_next
if (s.isTerminal) {
T = t + 1
val τ = t - n + 1
if (τ < 0) n = T
} else {
a = b(s)
_A.append(a)
}
}
val τ = t - n + 1
if (τ >= 0) {
val ρ = Π(1..min(n - 1, T - 1 - τ)) { π[_S[it], _A[it]] / b[_S[it], _A[it]] }
var G = Σ(1..min(n, T - τ)) { pow(γ, it - 1) * _R[it] }
if (τ + n < T) G += pow(γ, n) * Q[_S[n], _A[n]]
Q[_S[0], _A[0]] += α(_S[0], _A[0]) * ρ * (G - Q[_S[0], _A[0]])
`ε-greedy`(_S[0], Q, π, ε)
}
t++
} while (τ < T - 1)
log.debug { "n=$n,T=$T" }
}
val V = VFunc { 0.0 }
val result = tuple3(π, V, Q)
V_from_Q(states, result)
return result
}