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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 | ||||||||||||||||
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| wiki-2026-0508-free-energy-principle | Free Energy Principle (FEP) | 10_Wiki/Topics | verified | self |
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none | A | 0.88 | applied |
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2026-05-10 | pending |
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Free Energy Principle (FEP)
매 한 줄
"매 self-organizing system 의 의 의 surprise (variational free energy) 의 minimize". Karl Friston (UCL). 매 perception (predictive coding) + 매 action (active inference) 의 unify. 매 neuroscience theory of everything (controversial). 매 modern: 매 RL / world model 의 connection.
매 핵심
매 statement
- 매 brain (and body) 의 의 의 statistical model.
- 매 free energy ≈ 매 prediction error.
- 매 minimize via:
- Update belief (perception).
- Act (active inference).
매 vs RL
- RL: 매 reward 의 maximize.
- FEP: 매 surprise 의 minimize.
- Equivalence (debated): 매 reward = -surprise.
매 component
- Generative model: 매 internal world model.
- Prior: 매 expectation.
- Likelihood: 매 sense → state.
- Posterior: 매 belief update.
- Action: 매 sense 의 expected 의 의 의 의 align.
매 응용
- Neuroscience: 매 perception, attention, learning.
- Psychiatry: 매 schizophrenia, autism (precision-weighting).
- Active inference RL.
- Robotics (curiosity, exploration).
- Computational psychiatry.
매 critique
- 매 too general 의 의 의 unfalsifiable.
- 매 Lakatos progressive vs degenerate program.
- 매 implementation 의 specific 의 X.
💻 패턴
Predictive coding (perception)
import numpy as np
def predictive_coding_step(prior_mu, prior_var, observation, obs_var):
"""매 Kalman-like update."""
posterior_var = 1 / (1 / prior_var + 1 / obs_var)
posterior_mu = posterior_var * (prior_mu / prior_var + observation / obs_var)
prediction_error = observation - prior_mu
return posterior_mu, posterior_var, prediction_error
Variational free energy
def variational_free_energy(q_mu, q_var, p_mu, p_var, obs, obs_var):
"""매 F = KL[q||p] - log p(obs|s)."""
kl = 0.5 * (np.log(p_var / q_var) + (q_var + (q_mu - p_mu)**2) / p_var - 1)
log_likelihood = -0.5 * (np.log(2 * np.pi * obs_var) + (obs - q_mu)**2 / obs_var)
return kl - log_likelihood
Active inference (pymdp)
import pymdp
from pymdp.agent import Agent
# 매 simple 1-state, 1-modality agent
A = np.eye(3) # 매 likelihood (state → obs)
B = np.array([[[0.9, 0.1, 0], [0.1, 0.8, 0.1], [0, 0.1, 0.9]]]) # 매 transition (state, action)
C = np.array([0, 0, 1]) # 매 prior preference (high obs 3)
agent = Agent(A=A, B=B, C=C)
agent.infer_states(observation=[0])
action = agent.sample_action()
Expected free energy (planning)
def expected_free_energy(state_belief, action, A, B, C):
"""매 EFE = epistemic value + pragmatic value."""
next_state = B[action] @ state_belief
expected_obs = A @ next_state
# 매 pragmatic (utility)
pragmatic = (expected_obs * C).sum()
# 매 epistemic (info gain)
epistemic = -np.sum(expected_obs * np.log(expected_obs + 1e-9))
return -pragmatic + epistemic # 매 minimize
Predictive coding network (PyTorch)
import torch
import torch.nn as nn
class PCLayer(nn.Module):
def __init__(self, n):
super().__init__()
self.W = nn.Parameter(torch.randn(n, n) * 0.01)
self.x = nn.Parameter(torch.zeros(n)) # 매 latent state
def forward(self, top_down, bottom_up):
prediction = self.W @ self.x
error_top = top_down - prediction
error_bottom = bottom_up - self.x
free_energy = (error_top ** 2).sum() + (error_bottom ** 2).sum()
return free_energy
Curiosity (intrinsic reward = -surprise)
class IntrinsicCuriosity:
def __init__(self, model):
self.model = model
def reward(self, state, action, next_state):
predicted = self.model.predict(state, action)
prediction_error = (predicted - next_state).abs().mean()
return prediction_error # 매 high error = surprise = curiosity
Precision (attention)
def precision_weighted_update(prediction_error, precision):
"""매 attention = 매 high precision 의 weight."""
return precision * prediction_error
# 매 Friston: 매 schizophrenia = 매 precision 의 wrong
World model (similar to FEP)
class WorldModel(nn.Module):
"""매 Ha & Schmidhuber 2018."""
def __init__(self, state_dim, action_dim):
super().__init__()
self.encoder = Encoder() # 매 obs → latent
self.dynamics = nn.LSTM(latent_dim + action_dim, latent_dim)
self.decoder = Decoder() # 매 latent → obs
def step(self, obs, action):
latent = self.encoder(obs)
next_latent, h = self.dynamics(torch.cat([latent, action]))
predicted_obs = self.decoder(next_latent)
return predicted_obs, next_latent
Hierarchical model
class HierarchicalGenerativeModel:
def __init__(self, levels):
self.levels = levels # 매 each = (mu, var, dynamics)
def predict(self):
# 매 top-down predictions
for i in range(len(self.levels) - 1, 0, -1):
self.levels[i-1].mu = self.levels[i].dynamics(self.levels[i].mu)
def update(self, obs):
# 매 bottom-up errors
for i in range(len(self.levels)):
error = obs - self.levels[i].mu if i == 0 else self.levels[i-1].mu - self.levels[i].mu
self.levels[i].mu += LR * error
Schizophrenia model (precision dysregulation)
def schizophrenia_simulation(true_state, sensory_precision_low):
"""매 low sensory precision → 매 prior 의 dominate → 매 hallucination."""
sensory_precision = sensory_precision_low # 매 abnormally low
prior_strength = 1.0
posterior = (sensory_precision * sensory_input + prior_strength * prior) / (sensory_precision + prior_strength)
return posterior # 매 dominated by prior
매 결정 기준
| 상황 | Approach |
|---|---|
| Theoretical neuro | FEP framework |
| Computational model | pymdp |
| RL exploration | Curiosity (FEP-inspired) |
| World model | Schmidhuber-style |
| Psychiatry | Precision-weighting |
기본값: 매 FEP 의 high-level theory + 매 specific implementation = pymdp (active inference) or world model (RL).
🔗 Graph
- 부모: Computational-Neuroscience-RL · Predictive-Processing
- 변형: Active-Inference · Predictive-Coding
- 응용: World-Model
- Adjacent: Bayesian-Brain · Default Mode Network (DMN) · Reinforcement-Learning
🤖 LLM 활용
언제: 매 neuroscience research. 매 active inference RL. 언제 X: 매 production engineering.
❌ 안티패턴
- Theory of everything claim: 매 unfalsifiable.
- FEP 의 RL 의 isomorphic 의 trust: 매 detail 의 differ.
- Skip implementation: 매 vague.
🧪 검증 / 중복
- Verified (Friston papers, pymdp docs, Hohwy Predictive Mind).
- 신뢰도 B+.
🕓 Changelog
| 날짜 | 변경 |
|---|---|
| 2026-04-20 | Auto-reinforced |
| 2026-05-08 | Phase 1 |
| 2026-05-10 | Manual cleanup — FEP + 매 predictive coding / pymdp / EFE / world model code |