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simulate-stochastic-process

pjt222
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Über

Diese Fähigkeit simuliert stochastische Prozesse wie Markov-Ketten, stochastische Differentialgleichungen und MCMC-Sampler und liefert Pfadbeispiele für Schätzung und Vorhersage. Sie umfasst wichtige Funktionen wie Konvergenzdiagnostik, Varianzreduktion und Visualisierungswerkzeuge. Nutzen Sie sie, wenn analytische Lösungen nicht handhabbar sind, Sie Monte-Carlo-Methoden mit Konvergenzgarantien benötigen oder komplexe Posterior-Verteilungen sampeln müssen.

Schnellinstallation

Claude Code

Empfohlen
Primär
npx skills add pjt222/agent-almanac -a claude-code
Plugin-BefehlAlternativ
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternativ
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/simulate-stochastic-process

Kopieren Sie diesen Befehl und fügen Sie ihn in Claude Code ein, um diese Fähigkeit zu installieren

Dokumentation

Simulate Stochastic Process

Sample paths from stochastic processes — discrete Markov, continuous-time, SDEs, MCMC samplers — w/ convergence diagnostics, variance reduction, trajectory viz.

Use When

  • Generate sample paths for est/predict/viz
  • Analytical intractable, sim only feasible
  • MC est needing convergence guarantees + uncertainty quant
  • Validate analytical (stationary, hitting times) vs empirical
  • Sample complex posterior via MCMC
  • Prototype stochastic model before full analytical

In

Required

InputTypeDescription
process_typestring"dtmc", "ctmc", "random_walk", "brownian_motion", "sde", "mcmc"
parametersdictProcess-specific (transition matrix, drift/diffusion, target density)
n_pathsintegerIndependent paths to sim
n_stepsintegerTime steps per path (or total MCMC iters)

Optional

InputTypeDefaultDescription
initial_statescalar/vectorprocess-specificStart state
dtfloat0.01Time step → continuous discretization
seedintegerrandomReproducibility
burn_inintegern_steps / 10Initial discard (MCMC)
thinninginteger1Keep every k-th → reduce autocorr
variance_reductionstring"none""none", "antithetic", "stratified", "control_variate"
target_functioncallablenoneEval along paths → MC est

Do

Step 1: Define Process + Params

1.1. ID process type + gather params:

  • DTMC: Transition matrix P + state space. Validate row-stochastic.
  • CTMC: Rate matrix Q. Rows sum 0, off-diag non-neg.
  • Random walk: Step distrib (e.g. {-1, +1} equal prob), boundaries.
  • Brownian: Drift mu, vol sigma, dim d.
  • SDE (Ito): Drift a(x,t), diffusion b(x,t).
  • MCMC: Target log-density, proposal (RW Metropolis, HMC, Gibbs).

1.2. Validate consistency:

  • Matrix dims match state space size
  • SDE coefs satisfy growth + Lipschitz (informal min) for solver
  • MCMC proposal well-defined for target support

1.3. Set seed → reproducibility.

Got: Fully spec'd model w/ validated params + reproducible RNG state.

If err: Inconsistent params (e.g. non-stochastic matrix) → correct first. Pathological SDE coefs → diff discretization scheme.

Step 2: Select Sim Method

2.1. Choose algo per type:

ProcessMethodKey Property
DTMCDirect sampling from transition rowExact
CTMCGillespie algorithm (SSA)Exact, event-driven
CTMC (approx.)Tau-leapingApproximate, faster for high rates
Random walkDirect sampling of incrementsExact
Brownian motionCumulative sum of Gaussian incrementsExact for fixed dt
SDE (general)Euler-MaruyamaOrder 0.5 strong, order 1.0 weak
SDE (higher order)MilsteinOrder 1.0 strong (scalar noise)
SDE (stiff)Implicit Euler-MaruyamaStable for stiff drift
MCMC (general)Metropolis-HastingsAsymptotically exact
MCMC (gradient)Hamiltonian Monte Carlo (HMC)Better mixing for high dimensions
MCMC (conditional)Gibbs samplerExact conditionals when available

2.2. SDE → dt small enough for stability. Heuristic: start dt = 0.01, halve until results stabilize.

2.3. MCMC → tune proposal scale → acceptance ~:

  • 23.4% → high-dim RW Metropolis
  • 57.4% → 1D targets
  • 65-90% → HMC (depends on trajectory length)

2.4. Variance reduction config:

  • Antithetic: Each path w/ Z → also sim w/ -Z
  • Stratified: Partition prob space, sample within strata
  • Control variates: Correlated quantity w/ known E → reduces var

Got: Algo matched to type w/ tuning params.

If err: Unstable (Euler-Maruyama diverging) → implicit method | reduce dt.

Step 3: Implement + Run

3.1. Allocate storage n_paths × n_steps (or dynamic for event-driven Gillespie).

3.2. Per path i = 1, ..., n_paths:

DTMC / Random Walk:

  • x[0] = initial_state
  • For t = 1..n_steps: sample x[t] from transition given x[t-1]

CTMC (Gillespie):

  • x[0] = initial_state, time = 0
  • While time < T_max:
    • Total rate lambda = -Q[x, x]
    • Holding time tau ~ Exp(lambda)
    • Next state from probs Q[x, j] / lambda for j != x
    • time += tau, record

SDE (Euler-Maruyama):

  • x[0] = initial_state
  • For t = 1..n_steps:
    • dW = sqrt(dt) * N(0, I) (Wiener)
    • x[t] = x[t-1] + a(x[t-1], t*dt) * dt + b(x[t-1], t*dt) * dW

MCMC (Metropolis-Hastings):

  • x[0] = initial_state
  • For t = 1..n_steps:
    • Propose x' ~ q(x' | x[t-1])
    • alpha = min(1, p(x') * q(x[t-1]|x') / (p(x[t-1]) * q(x'|x[t-1])))
    • Accept w/ prob alpha: x[t] = x' if accepted, else x[t-1]
    • Record decision

3.3. target_function provided → eval at each state, store.

3.4. Apply thinning: keep every thinning-th.

3.5. Discard burn_in from start (MCMC).

Got: n_paths complete trajectories in mem, optional fn evals. MCMC acceptance in target range.

If err: NaN/Inf → reduce dt (SDE) | check params. MCMC accept ~0% | ~100% → adjust proposal scale.

Step 4: Convergence Diagnostics

4.1. Trace plots: per-component over time, subset paths. Visual check stationarity (no trends, stable var).

4.2. Gelman-Rubin (R-hat) for multi-chain MCMC:

  • Within-chain W, between-chain B
  • R_hat = sqrt((n-1)/n + B/(n*W))
  • R_hat < 1.01 (strict) | < 1.1 (lenient) → convergence

4.3. Effective sample size (ESS):

  • Estimate autocorr at increasing lags
  • ESS = n_samples / (1 + 2 * sum(autocorr))
  • Rule: ESS > 400 for reliable posterior summaries

4.4. Geweke: cmp mean first 10% vs last 50%. Z-score in [-2, 2] → convergence.

4.5. Non-MCMC: time-avg stats (mean, var) stabilize as path length ↑. Plot running averages.

4.6. Summary table:

DiagnosticValueThresholdStatus
R-hat (max)...< 1.01...
ESS (min)...> 400...
Geweke z (max abs)...< 2.0...
Acceptance rate...0.15-0.50...

Got: All diagnostics pass thresholds. Trace shows stable, well-mixing chains.

If err: R-hat > 1.1 → run longer | improve proposal. ESS very low → ↑ thinning | better sampler (HMC). Geweke fails → extend burn-in.

Step 5: Summary Stats + CIs

5.1. Per quantity (state occupancy, fn E, hitting times):

  • Point est = sample mean across paths (post burn-in + thin)
  • SE via ESS: SE = SD / sqrt(ESS)

5.2. Build CIs:

  • Normal approx: est +/- z_{alpha/2} * SE
  • Skewed → percentile bootstrap | batch means

5.3. Variance reduction → VRF:

  • VRF = Var(naive) / Var(reduced)
  • Report effective speedup

5.4. MC integration: report est, SE, 95% CI, ESS, # fn evals.

5.5. Distribution est:

  • Empirical quantiles (median, 2.5th, 97.5th)
  • KDE for continuous

5.6. Tabulate all w/ uncertainties.

Got: Point ests + SEs + CIs. Variance reduction (if applied) → VRF > 1.

If err: CIs too wide → ↑ n_paths | n_steps. Var reduction worsens (VRF < 1) → disable; control variate | antithetic mismatched.

Step 6: Visualize

6.1. Trajectory plots: 5-20 paths over time. Use transparency for overlap.

6.2. Ensemble stats: overlay mean + pointwise 95% CI bands across paths.

6.3. Marginal distributions: at selected times, hist | density estimates of state across paths.

6.4. Stationary cmp: analytical avail → overlay on empirical hist (final time slice).

6.5. Autocorr plots (MCMC): ACF per component, reasonable lag.

6.6. Diagnostic dashboard: trace + ACF + running mean + marginal density → multi-panel.

6.7. Save figures vector (PDF/SVG) + raster (PNG) → docs.

Got: Pub-quality figures showing trajectory, distributional convergence, diagnostics. Analytical (where avail) matches empirical.

If err: Viz reveals non-stationarity | unexpected multimodality → revisit Steps 1-2 (param/method err). Cluttered plots → reduce paths shown | bigger figure.

Check

  • All trajectories in valid state space (no out-of-bounds, no NaN/Inf)
  • DTMC/CTMC: empirical stationary → analytical (within MC err)
  • SDE: halving dt doesn't qualitatively change → convergence order
  • MCMC: R-hat < 1.01, ESS > 400, Geweke z in [-2, 2]
  • CI widths shrink ∝ 1/sqrt(n_paths) (CLT)
  • Variance reduction → VRF > 1 (improves not worsens)
  • Reproducibility: same seed → identical results

Traps

  • Insufficient burn-in (MCMC): Poor initial state → long burn-in before samples represent target. Inspect trace + diagnostics, don't guess.
  • Euler-Maruyama instability (stiff SDE): Large drift gradients → explicit can diverge. Implicit | adaptive step.
  • Strong vs weak convergence (SDE): Strong = pathwise err (individual trajectories); weak = distributional (expectations). Euler-Maruyama: weak 1.0, strong 0.5.
  • PRNG quality: Long sims → low-quality RNGs → correlated samples. Mersenne Twister | PCG | Xoshiro. Verify independence.
  • Ignore autocorr (MCMC): Treating autocorr samples as independent underestimates uncertainty. Use ESS, not raw count.
  • Antithetic for non-monotone fns: Reduces var only for monotone fn of underlying uniforms. Non-monotone → can ↑ var.
  • Mem for large sims: All time steps of many long paths → mem exhaust. Online stats (running mean, var) when full trajectories not needed for viz.

GitHub Repository

pjt222/agent-almanac
Pfad: i18n/caveman-ultra/skills/simulate-stochastic-process
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