d8a80f6272
이름만 다른(표기 변형) [[위키링크]]를 대상 문서의 canonical 제목으로 치환해 끊겼던 1,200개 링크를 연결. 제목/파일명 정규화 일치만 적용하고 별칭 매칭은 과병합 위험으로 제외(애매성 가드). 원본은 _link_reconcile_backup/ 에 백업. 도구: Datacollect/scripts/link_reconcile_apply.mjs Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
6.3 KiB
6.3 KiB
id, title, category, status, canonical_id, aliases, duplicate_of, source_trust_level, confidence_score, verification_status, tags, raw_sources, last_reinforced, github_commit, tech_stack
| id | title | category | status | canonical_id | aliases | duplicate_of | source_trust_level | confidence_score | verification_status | tags | raw_sources | last_reinforced | github_commit | tech_stack | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| wiki-2026-0508-pomdp | POMDP | 10_Wiki/Topics | verified | self |
|
none | A | 0.95 | applied |
|
2026-05-10 | pending |
|
POMDP
매 한 줄
"매 MDP + observation noise". POMDP 는 agent 가 state 를 직접 관측하지 못하고 noisy observation 만 받는 경우의 decision-making 수학 framework — tuple
<S, A, T, R, Ω, O, γ>. 매 belief state (state 위 distribution) 를 유지하며 행동, dialogue / robotics / medical / game-AI 의 standard model.
매 핵심
매 정의
- S: state space (hidden).
- A: action space.
- T(s'|s,a): transition.
- R(s,a): reward.
- Ω: observation space.
- O(o|s',a): observation model.
- γ ∈ [0,1): discount.
매 belief state
b(s) = P(s | history), sufficient statistic of history.- update:
b'(s') ∝ O(o|s',a) Σ_s T(s'|s,a) b(s). - POMDP = MDP on belief space (continuous, high-dim).
매 solver family
- Exact: value iteration on belief (PWLC), tractable only for tiny S.
- Point-based (PBVI, SARSOP, Perseus): sample beliefs, backup.
- Online MCTS: POMCP (Silver 2010), DESPOT — 매 large state, online planning.
- Deep RL: DRQN, R2D2, Dreamer (latent belief = RNN state) — 매 modern default.
- Bayes-Adaptive: BAMCP, learn dynamics in addition.
매 vs MDP
- MDP: full observability, policy
π(s) → a. - POMDP: policy
π(b) → aorπ(history) → a. - 매 함정: training MDP policy on observations directly = wrong (Markov violation).
매 응용
- dialogue system — user goal hidden.
- robotics — sensor noise, occlusion.
- medical treatment — patient state from labs/symptoms.
- game AI — fog-of-war (StarCraft, Poker, Operation- Western Sun).
- autonomous driving — pedestrian intent.
💻 패턴
Tiger problem (canonical POMDP)
# States: tiger_left, tiger_right
# Actions: open_left, open_right, listen
# Obs: hear_left, hear_right (85% accurate after listen)
import numpy as np
S = ["TL", "TR"]
A = ["OL", "OR", "LISTEN"]
O = ["HL", "HR"]
def T(s, a):
if a in ("OL", "OR"):
return {"TL": 0.5, "TR": 0.5} # reset
return {s: 1.0}
def R(s, a):
return {"LISTEN": -1,
"OL": -100 if s == "TL" else 10,
"OR": -100 if s == "TR" else 10}[a]
def O_model(o, s, a):
if a != "LISTEN":
return 0.5
correct = (o == "HL" and s == "TL") or (o == "HR" and s == "TR")
return 0.85 if correct else 0.15
Belief update (Bayes filter)
def update_belief(b, a, o, S, T, O_model):
b_new = {}
for sp in S:
prior = sum(T(s, a).get(sp, 0) * b[s] for s in S)
b_new[sp] = O_model(o, sp, a) * prior
Z = sum(b_new.values())
return {s: p / Z for s, p in b_new.items()}
Particle filter (continuous / large S)
import numpy as np
class ParticleBelief:
def __init__(self, particles): self.p = list(particles)
def update(self, a, o, sample_T, O_model):
new = []
for s in self.p:
sp = sample_T(s, a)
w = O_model(o, sp, a)
new.append((sp, w))
# resample
ws = np.array([w for _, w in new])
ws = ws / ws.sum()
idx = np.random.choice(len(new), len(new), p=ws)
self.p = [new[i][0] for i in idx]
POMCP (online MCTS on history)
import math, random
from collections import defaultdict
class POMCP:
def __init__(self, gen, c=1.0, gamma=0.95):
self.gen = gen # generator: (s, a) -> (s', o, r)
self.c, self.gamma = c, gamma
self.N = defaultdict(int); self.V = defaultdict(float)
def search(self, belief, depth=20, sims=500):
for _ in range(sims):
s = random.choice(belief)
self._sim(s, (), depth)
return max(actions, key=lambda a: self.V[((), a)])
def _sim(self, s, h, d):
if d == 0: return 0
a = self._ucb(h)
sp, o, r = self.gen(s, a)
R = r + self.gamma * self._sim(sp, h + (a, o), d - 1)
self.N[(h, a)] += 1
self.V[(h, a)] += (R - self.V[(h, a)]) / self.N[(h, a)]
return R
DRQN (Deep RL with recurrent belief)
import torch, torch.nn as nn
class DRQN(nn.Module):
def __init__(self, obs_dim, n_act, hidden=128):
super().__init__()
self.enc = nn.Linear(obs_dim, hidden)
self.gru = nn.GRU(hidden, hidden, batch_first=True)
self.q = nn.Linear(hidden, n_act)
def forward(self, obs_seq, h0=None):
x = self.enc(obs_seq).relu()
h, hN = self.gru(x, h0)
return self.q(h), hN
pomdp_py (library)
import pomdp_py
# Define PomdpProblem, then:
planner = pomdp_py.POMCP(max_depth=20, num_sims=1000,
discount_factor=0.95, exploration_const=50)
action = planner.plan(agent)
매 결정 기준
| 문제 크기 | Solver |
|---|---|
| 매 | S |
| 매 | S |
| 매 large S, online | POMCP / DESPOT |
| 매 raw obs (image) | DRQN / Dreamer |
| 매 unknown dynamics | Bayes-Adaptive / model-based RL |
기본값: SARSOP for tabular, Dreamer-V3 for pixel.
🔗 Graph
- 부모: MDP · Reinforcement-Learning · Decision Theory
- 응용: Robotics · Operation- Western Sun
- Adjacent: MCTS
🤖 LLM 활용
언제: 매 partial observability 문제 framing, belief-state design, solver 추천. 언제 X: 매 fully-observable env — MDP 면 충분.
❌ 안티패턴
- Treat obs as state: Markov violation, policy 가 frame stacking 으로 hack 만 가능.
- Forget belief in test: training 시 belief, deployment 시 raw obs 전달.
- Exact solver on large S: PWLC explosion — point-based 로.
- No exploration in POMCP: c=0 → greedy, belief 가 collapse.
🧪 검증 / 중복
- Verified (Kaelbling 1998, Silver 2010 POMCP, Hafner 2023 Dreamer-V3).
- 신뢰도 A.
🕓 Changelog
| 날짜 | 변경 |
|---|---|
| 2026-05-08 | Phase 1 |
| 2026-05-10 | Manual cleanup — definition + solver family + Tiger/POMCP/DRQN |