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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
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| wiki-2026-0508-understanding-complex-systems | Understanding Complex Systems | 10_Wiki/Topics | verified | self |
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2026-05-10 | pending |
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Understanding Complex Systems
매 한 줄
"매 부분의 합 그 이상 — 매 emergence". Santa Fe Institute 1984 founding 이후 complexity science 는 economics, biology, AI safety 까지 확장됐고, 2026 현재 ABM + GNN + dynamical systems 의 hybrid analysis 가 standard toolkit이다.
매 핵심
매 정의 axes
- Many components: 매 대량의 interacting agent.
- Nonlinearity: small cause → large effect (butterfly).
- Emergence: macro pattern not reducible to micro rules.
- Adaptation: agent rule 의 evolution (CAS).
- Self-organization: external designer 없이 ordered structure.
매 phenomena
- Phase transitions (percolation, Ising).
- Power laws / scale-free networks (Barabási 1999).
- Chaos & strange attractors (Lorenz 1963).
- Synchronization (Kuramoto oscillators).
- Critical brain hypothesis (Beggs & Plenz 2003).
매 응용
- Epidemic modeling (COVID-19, agent-based + network).
- Financial market (heavy tails, flash crashes).
- AI safety: emergent behaviors in LLM scaling, multi-agent.
- Climate tipping points.
- Urban / supply chain resilience.
💻 패턴
Game of Life — emergence demo
import numpy as np
def step(grid):
n = sum(np.roll(np.roll(grid, i, 0), j, 1)
for i in (-1, 0, 1) for j in (-1, 0, 1)
if (i, j) != (0, 0))
return ((n == 3) | ((grid == 1) & (n == 2))).astype(int)
g = np.random.binomial(1, 0.3, (200, 200))
for _ in range(500):
g = step(g)
Scale-free network (Barabási–Albert)
import networkx as nx
G = nx.barabasi_albert_graph(n=10_000, m=3, seed=42)
degrees = [d for _, d in G.degree()]
# verify power-law
import powerlaw
fit = powerlaw.Fit(degrees, discrete=True)
print(fit.alpha, fit.xmin, fit.distribution_compare("power_law", "lognormal"))
Kuramoto synchronization
import numpy as np
from scipy.integrate import odeint
def kuramoto(theta, t, omega, K, N):
dtheta = omega.copy()
for i in range(N):
dtheta[i] += (K/N) * np.sum(np.sin(theta - theta[i]))
return dtheta
N, K = 100, 1.5
omega = np.random.normal(0, 1, N)
theta0 = np.random.uniform(0, 2*np.pi, N)
t = np.linspace(0, 50, 1000)
sol = odeint(kuramoto, theta0, t, args=(omega, K, N))
# order parameter r(t)
r = np.abs(np.exp(1j * sol).mean(axis=1))
SIR epidemic on network
import networkx as nx, random
def sir(G, beta=0.05, gamma=0.01, init=5, T=200):
state = {n: "S" for n in G}
for n in random.sample(list(G), init): state[n] = "I"
history = []
for _ in range(T):
new = state.copy()
for n, s in state.items():
if s == "I":
if random.random() < gamma: new[n] = "R"
for nb in G.neighbors(n):
if state[nb] == "S" and random.random() < beta:
new[nb] = "I"
state = new
history.append((sum(v=="S" for v in state.values()),
sum(v=="I" for v in state.values()),
sum(v=="R" for v in state.values())))
return history
Lyapunov exponent (logistic map)
import numpy as np
def lyapunov(r, x0=0.5, n=10_000, burn=1000):
x = x0
for _ in range(burn): x = r*x*(1-x)
s = 0.0
for _ in range(n):
x = r*x*(1-x)
s += np.log(abs(r - 2*r*x) + 1e-12)
return s / n
for r in np.linspace(2.5, 4.0, 16):
print(f"r={r:.2f} λ={lyapunov(r):+.4f}")
Causal emergence via effective info (PyPhi-lite idea)
# coarse-grain & measure mutual info gain — 매 Hoel 2017
def effective_info(P_micro, grouping):
# P_micro: (S, S) transition matrix
# grouping: list of macro-state index per micro-state
import numpy as np
macro = max(grouping) + 1
P_macro = np.zeros((macro, macro))
for i, gi in enumerate(grouping):
for j, gj in enumerate(grouping):
P_macro[gi, gj] += P_micro[i, j]
P_macro /= P_macro.sum(axis=1, keepdims=True) + 1e-12
return P_macro
매 결정 기준
| 상황 | Approach |
|---|---|
| Local rules, emergent macro | Agent-based (Mesa, NetLogo) |
| Network structure matters | NetworkX / igraph + null models |
| Continuous coupled oscillators | Kuramoto / ODE |
| Discrete-time chaos | Iterated maps + Lyapunov |
| Real data, latent dynamics | SINDy / Koopman / NeuralODE |
기본값: NetworkX + Mesa for structure+dynamics, SciPy for ODE, powerlaw for tail fit.
🔗 Graph
- 부모: Systems Theory · Nonlinear Dynamics
- 응용: Pedestrian-Modeling
- Adjacent: Entropy in Information Theory · AI_Safety_and_Alignment
🤖 LLM 활용
언제: model scaffolding, parameter sweep, hypothesis enumeration, literature 정리. 언제 X: long-horizon stability claim — 매 numerical proof / theorem 직접 검증.
❌ 안티패턴
- Power-law claim 의 over-fit: 매 lognormal vs power-law 비교 검증 필수 (Clauset 2009).
- Emergence as magic: 매 정의 명확화 — weak (epistemic) vs strong (ontological).
- Single ABM run: Monte Carlo ensemble 필수 (≥100 runs).
- Network metric without null: 매 configuration model baseline 비교.
🧪 검증 / 중복
- Verified (Mitchell "Complexity: A Guided Tour", SFI lectures, Strogatz "Nonlinear Dynamics and Chaos", Newman "Networks" 2nd ed).
- 신뢰도 A.
🕓 Changelog
| 날짜 | 변경 |
|---|---|
| 2026-05-08 | Phase 1 |
| 2026-05-10 | Manual cleanup — emergence + networks + chaos pattern set |