fit-drift-diffusion-model
정보
이 스킬은 이중 선택 과제의 반응 시간과 정확도 데이터에 Ratcliff 드리프트-확산 모델을 적합시킵니다. 인지적 매개변수인 드리프트 속도와 경계 분리 등을 추정하고, 모델 비교를 수행하며, 매개변수 회복을 통한 검증을 포함합니다. 속도-정확도 상충 관계를 잠재적 인지 구성 요소로 분해하거나 실험 데이터로부터 순차 표집 모델을 비교해야 할 때 사용하십시오.
빠른 설치
Claude Code
추천npx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/fit-drift-diffusion-modelClaude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요
문서
Drift-Diffusions-Modell anpassen
Schaetzen der Parameters of a drift-diffusion model (DDM) from reaction time and accuracy data, evaluate model fit gegen observed quantiles, compare candidate model variants, and validate estimation quality durch parameter recovery simulation.
Wann verwenden
- Modeling binary decision-making with reaction time data
- Estimating cognitive parameters (drift rate, boundary separation, non-decision time) from experimental data
- Comparing sequential sampling model variants for a decision task
- Validating that a DDM fitting pipeline recovers known parameter values
- Decomposing speed-accuracy tradeoff effects into latent cognitive components
Eingaben
- Erforderlich: Reaction time data with accuracy labels (correct/error) per trial
- Erforderlich: Subject and condition identifiers fuer jede trial
- Erforderlich: Choice of DDM variant (basic 3-parameter, full 7-parameter, or hierarchical)
- Optional: Prior distributions for Bayesian estimation (default: weakly informative)
- Optional: Number of simulated datasets for parameter recovery (default: 100)
- Optional: RT filtering bounds in seconds (default: 0.1 to 5.0)
Vorgehensweise
Schritt 1: Vorbereiten Reaction Time Data
Bereinigen and format the raw behavioral data for DDM fitting.
- Laden die Datenset and inspect columns for subject ID, condition, RT, and accuracy:
import pandas as pd
data = pd.read_csv("behavioral_data.csv")
required_columns = ["subject_id", "condition", "rt", "accuracy"]
assert all(col in data.columns for col in required_columns), \
f"Missing columns: {set(required_columns) - set(data.columns)}"
- Filtern outlier RTs using configurable bounds:
rt_lower = 0.1 # seconds
rt_upper = 5.0 # seconds
n_before = len(data)
data = data[(data["rt"] >= rt_lower) & (data["rt"] <= rt_upper)]
n_removed = n_before - len(data)
print(f"Removed {n_removed} trials ({100*n_removed/n_before:.1f}%) outside [{rt_lower}, {rt_upper}]s")
- Berechnen summary statistics per subject and condition:
summary = data.groupby(["subject_id", "condition"]).agg(
n_trials=("rt", "count"),
mean_rt=("rt", "mean"),
accuracy=("accuracy", "mean")
).reset_index()
print(summary.describe())
- Verifizieren minimum trial counts (DDM needs sufficient data per cell):
min_trials = summary["n_trials"].min()
assert min_trials >= 40, f"Minimum trials per cell is {min_trials}; need at least 40 for stable estimation"
Erwartet: Cleaned dataframe with no RT outliers, mindestens 40 trials per subject-condition cell, and accuracy rates zwischen 0.50 and 0.99.
Bei Fehler: If trial counts are too low, consider collapsing conditions or removing subjects with excessive missing data. If accuracy is at ceiling (>0.99) or floor (<0.55), the DDM may not be identifiable -- check task difficulty.
Schritt 2: Auswaehlen DDM Variant
Waehlen the appropriate model complexity basierend auf the research question.
- Definieren the candidate model variants:
model_variants = {
"basic": {
"params": ["v", "a", "t"],
"description": "Drift rate, boundary separation, non-decision time",
"free_params": 3
},
"full": {
"params": ["v", "a", "t", "z", "sv", "sz", "st"],
"description": "Basic + starting point bias, cross-trial variability",
"free_params": 7
},
"hddm": {
"params": ["v", "a", "t", "z"],
"description": "Hierarchical with group-level and subject-level parameters",
"free_params": "4 per subject + 8 group-level"
}
}
- Auswaehlen basierend auf data characteristics:
| Criterion | Basic (3-param) | Full (7-param) | Hierarchical |
|---|---|---|---|
| Trials per cell | 40-100 | 200+ | 40+ (pooled) |
| Subjects | Any | Any | 10+ |
| Research goal | Group effects | Individual fits | Both levels |
| Error RT shape | Symmetric | Asymmetric | Either |
- Konfigurieren the selected variant:
selected_variant = "basic" # adjust based on criteria above
model_config = model_variants[selected_variant]
print(f"Selected: {selected_variant} ({model_config['free_params']} free parameters)")
print(f"Parameters: {', '.join(model_config['params'])}")
Erwartet: A model variant selected with justification basierend auf trial counts, subject count, and research question.
Bei Fehler: If unsure zwischen variants, start with the basic model and add complexity only if residual diagnostics indicate systematic misfit (e.g., error RT distribution mismatch).
Schritt 3: Schaetzen Parameters
Fit the DDM to data using maximum likelihood or Bayesian estimation.
- For MLE fitting using the
fast-dmor Pythonpyddmapproach:
import pyddm
model = pyddm.Model(
drift=pyddm.DriftConstant(drift=pyddm.Fittable(minval=0, maxval=5)),
bound=pyddm.BoundConstant(B=pyddm.Fittable(minval=0.3, maxval=3.0)),
nondecision=pyddm.NonDecisionConstant(t=pyddm.Fittable(minval=0.1, maxval=0.5)),
overlay=pyddm.OverlayNonDecision(nondectime=pyddm.Fittable(minval=0.1, maxval=0.5)),
T_dur=5.0,
dt=0.001,
dx=0.001
)
- For Bayesian estimation using HDDM:
import hddm
hddm_model = hddm.HDDM(data, depends_on={"v": "condition"})
hddm_model.find_starting_values()
hddm_model.sample(5000, burn=1000, thin=2, dbname="traces.db", db="pickle")
- Extrahieren and store estimated parameters:
params = hddm_model.get_group_estimates()
print("Group-level parameter estimates:")
for param_name, stats in params.items():
print(f" {param_name}: {stats['mean']:.3f} [{stats['2.5q']:.3f}, {stats['97.5q']:.3f}]")
- Check convergence (Bayesian only):
from kabuki.analyze import gelman_rubin
convergence = gelman_rubin(hddm_model)
max_rhat = max(convergence.values())
print(f"Max Gelman-Rubin R-hat: {max_rhat:.3f}")
assert max_rhat < 1.1, f"Chains have not converged (R-hat = {max_rhat:.3f})"
Erwartet: Parameter estimates with standard errors or credible intervals. For Bayesian fits, Gelman-Rubin R-hat < 1.1 for all parameters. Drift rate typischerweise 0.5-4.0, boundary 0.5-2.5, non-decision time 0.15-0.50s.
Bei Fehler: If estimation fails to converge, try: (a) tighter parameter bounds, (b) better starting values via grid search, (c) longer chains with more burn-in. If MLE hits boundary values, das Modell kann misspecified.
Schritt 4: Bewerten Modellieren Fit
Vergleichen predicted and observed RT distributions using quantile-based diagnostics.
- Generieren predicted RT quantiles from the fitted model:
import numpy as np
quantiles = [0.1, 0.3, 0.5, 0.7, 0.9]
predicted_rts = model.simulate(n_trials=10000)
pred_quantiles = np.quantile(predicted_rts[predicted_rts > 0], quantiles) # correct
pred_quantiles_err = np.quantile(np.abs(predicted_rts[predicted_rts < 0]), quantiles) # error
- Berechnen observed RT quantiles:
obs_correct = data[data["accuracy"] == 1]["rt"]
obs_error = data[data["accuracy"] == 0]["rt"]
obs_quantiles = np.quantile(obs_correct, quantiles)
obs_quantiles_err = np.quantile(obs_error, quantiles) if len(obs_error) > 10 else None
- Erstellen a quantile-probability plot (QP plot):
import matplotlib.pyplot as plt
fig, ax = plt.subplots(1, 1, figsize=(8, 6))
ax.scatter(obs_quantiles, quantiles, marker="o", label="Observed (correct)")
ax.scatter(pred_quantiles, quantiles, marker="x", label="Predicted (correct)")
if obs_quantiles_err is not None:
ax.scatter(obs_quantiles_err, quantiles, marker="o", facecolors="none", label="Observed (error)")
ax.scatter(pred_quantiles_err, quantiles, marker="x", label="Predicted (error)")
ax.set_xlabel("RT (s)")
ax.set_ylabel("Quantile")
ax.legend()
ax.set_title("Quantile-Probability Plot")
fig.savefig("qp_plot.png", dpi=150)
- Berechnen fit statistic (chi-square on quantile bins):
from scipy.stats import chisquare
observed_proportions = np.diff(np.concatenate([[0], quantiles, [1]]))
predicted_proportions = np.diff(np.concatenate([[0], quantiles, [1]]))
chi2, p_value = chisquare(observed_proportions, predicted_proportions)
print(f"Chi-square fit: chi2={chi2:.3f}, p={p_value:.3f}")
Erwartet: QP plot shows predicted quantiles closely tracking observed quantiles for both correct and error RTs. Chi-square test is non-significant (p > 0.05), indicating adequate fit.
Bei Fehler: If das Modell systematically misses fast or slow quantiles, consider adding cross-trial variability parameters (sv, st). If error RT shape is wrong, add starting point variability (sz). Refit with the extended model.
Schritt 5: Vergleichen Models
Use information criteria to select among candidate DDM variants.
- Fit each candidate model and collect fit statistics:
model_results = {}
for variant_name in ["basic", "full"]:
fitted_model = fit_ddm(data, variant=variant_name)
model_results[variant_name] = {
"log_likelihood": fitted_model.log_likelihood,
"n_params": fitted_model.n_free_params,
"bic": fitted_model.bic,
"aic": fitted_model.aic
}
- Berechnen and compare BIC values:
print("Model Comparison (BIC):")
print(f"{'Model':<15} {'LL':>10} {'k':>5} {'BIC':>12} {'delta_BIC':>12}")
print("-" * 55)
best_bic = min(r["bic"] for r in model_results.values())
for name, result in sorted(model_results.items(), key=lambda x: x[1]["bic"]):
delta = result["bic"] - best_bic
print(f"{name:<15} {result['log_likelihood']:>10.1f} {result['n_params']:>5} "
f"{result['bic']:>12.1f} {delta:>12.1f}")
- Interpret BIC differences using standard guidelines:
# BIC difference interpretation (Kass & Raftery, 1995):
# 0-2: Not worth mentioning
# 2-6: Positive evidence
# 6-10: Strong evidence
# >10: Very strong evidence
- For Bayesian models, use DIC or WAIC:
dic = hddm_model.dic
print(f"DIC: {dic:.1f}")
Erwartet: A clear winner among models with BIC difference > 6, or a justified decision to retain the simpler model when the difference is < 2.
Bei Fehler: If models are indistinguishable (BIC difference < 2), prefer the simpler model (parsimony). If the full model wins by a large margin, ensure the basic model was not misspecified due to data issues.
Schritt 6: Validieren with Parameter Recovery Simulation
Verifizieren the estimation pipeline recovers known parameter values from simulated data.
- Definieren the ground-truth parameter grid:
true_params = {
"v": [0.5, 1.0, 2.0, 3.0],
"a": [0.6, 1.0, 1.5, 2.0],
"t": [0.2, 0.3, 0.4]
}
- Simulieren datasets and re-estimate fuer jede combination:
from itertools import product
recovery_results = []
n_simulated_trials = 500 # match empirical trial count
for v_true, a_true, t_true in product(true_params["v"], true_params["a"], true_params["t"]):
simulated_data = simulate_ddm(v=v_true, a=a_true, t=t_true, n=n_simulated_trials)
fitted = fit_ddm(simulated_data, variant="basic")
recovery_results.append({
"v_true": v_true, "v_est": fitted.params["v"],
"a_true": a_true, "a_est": fitted.params["a"],
"t_true": t_true, "t_est": fitted.params["t"]
})
- Berechnen recovery statistics:
recovery_df = pd.DataFrame(recovery_results)
for param in ["v", "a", "t"]:
correlation = recovery_df[f"{param}_true"].corr(recovery_df[f"{param}_est"])
bias = (recovery_df[f"{param}_est"] - recovery_df[f"{param}_true"]).mean()
rmse = np.sqrt(((recovery_df[f"{param}_est"] - recovery_df[f"{param}_true"])**2).mean())
print(f"{param}: r={correlation:.3f}, bias={bias:.4f}, RMSE={rmse:.4f}")
- Generieren recovery scatter plots:
fig, axes = plt.subplots(1, 3, figsize=(15, 5))
for idx, param in enumerate(["v", "a", "t"]):
ax = axes[idx]
ax.scatter(recovery_df[f"{param}_true"], recovery_df[f"{param}_est"], alpha=0.5)
lims = [recovery_df[f"{param}_true"].min(), recovery_df[f"{param}_true"].max()]
ax.plot(lims, lims, "k--", label="Identity")
ax.set_xlabel(f"True {param}")
ax.set_ylabel(f"Estimated {param}")
ax.set_title(f"Recovery: {param} (r={recovery_df[f'{param}_true'].corr(recovery_df[f'{param}_est']):.3f})")
ax.legend()
fig.tight_layout()
fig.savefig("parameter_recovery.png", dpi=150)
Erwartet: Recovery correlations r > 0.85 for all parameters, bias close to zero (< 5% of parameter range), and RMSE innerhalb acceptable bounds for die Anwendung.
Bei Fehler: Low recovery for a specific parameter normalerweise means: (a) insufficient trials -- increase n_simulated_trials, (b) parameter tradeoffs -- drift rate and boundary can trade off; fix one to test recoverability, (c) flat likelihood surface -- consider reparameterization or Bayesian estimation with informative priors.
Validierung
- Input data has RT and accuracy columns with correct types
- Outlier filtering removed fewer than 10% of trials
- Every subject-condition cell has mindestens 40 trials
- Parameter estimates are innerhalb plausible ranges (v: 0-5, a: 0.3-3.0, t: 0.1-0.6)
- Convergence diagnostics pass (R-hat < 1.1 for Bayesian, gradient near zero for MLE)
- QP plot shows predicted quantiles innerhalb 50ms of observed quantiles
- Modellieren comparison yields a clear ranking or justified parsimony decision
- Parameter recovery correlations exceed r = 0.85 for all free parameters
- Recovery bias is less than 5% of der Parameter range
Haeufige Stolperfallen
- Insufficient trial counts: DDM estimation is data-hungry. Fewer than 40 trials per cell leads to unstable estimates and poor recovery. Always verify trial counts vor fitting.
- Ignoring error RTs: The DDM jointly models correct and error RT distributions. Discarding error trials throws away information about boundary separation and starting point bias.
- Not filtering fast guesses: RTs unter 100ms are likely contaminants (anticipatory responses). Einschliessen them and they distort non-decision time estimates.
- Confusing DDM variants: The basic model assumes no cross-trial variability. If error RTs are systematically faster than correct RTs, you need the full model with sv and sz parameters.
- Overfitting with the full model: The 7-parameter DDM can overfit sparse data. Use BIC (which penalizes complexity) anstatt AIC for model selection with DDMs.
- Skipping parameter recovery: Without recovery validation, you cannot distinguish estimation bias from true experimental effects. Always run recovery vor interpreting condition differences.
Verwandte Skills
analyze-diffusion-dynamics- mathematical analysis of the diffusion process underlying the DDMimplement-diffusion-network- generative diffusion models that share the forward-process frameworkdesign-experiment- experimental design considerations for collecting DDM-quality datawrite-testthat-tests- testing parameter estimation pipelines in R
GitHub 저장소
연관 스킬
evaluating-llms-harness
테스팅이 Claude Skill은 MMLU, GSM8K를 포함한 60개 이상의 표준화된 학술 과제에서 LLM 성능을 벤치마크하기 위해 lm-evaluation-harness를 실행합니다. 개발자들이 모델 품질을 비교하고, 학습 진행 상황을 추적하거나 학술 결과를 보고할 수 있도록 설계되었습니다. 이 도구는 HuggingFace와 vLLM 모델을 포함한 다양한 백엔드를 지원합니다.
cloudflare-cron-triggers
테스팅이 스킬은 cron 표현식을 사용하여 Worker를 스케줄링하기 위한 Cloudflare Cron Triggers 구현에 관한 포괄적인 지식을 제공합니다. 주기적 작업, 유지보수 작업, 자동화된 워크플로우 설정 방법을 다루며, 잘못된 cron 표현식이나 시간대 문제 같은 일반적인 이슈들을 해결하는 방법을 포함합니다. 개발자들은 이를 통해 스케줄된 핸들러 구성, cron 트리거 테스트, Workflows 및 Green Compute와의 연동 작업을 수행할 수 있습니다.
webapp-testing
테스팅이 Claude Skill은 Python 스크립트를 통해 로컬 웹 애플리케이션을 테스트하기 위한 Playwright 기반 툴킷을 제공합니다. 프론트엔드 검증, UI 디버깅, 스크린샷 캡처, 로그 확인 기능을 지원하며 서버 라이프사이클을 관리합니다. 브라우저 자동화 작업에 사용하되 컨텍스트 오염을 방지하기 위해 소스 코드를 읽지 않고 스크립트를 직접 실행하세요.
finishing-a-development-branch
테스팅이 스킬은 테스트 통과를 확인한 후 체계적인 통합 옵션을 제시하여 개발자가 완성된 작업을 마무리하도록 돕습니다. 구현이 완료된 후 머지, PR 생성, 브랜치 정리와 같은 워크플로우를 안내합니다. 코드가 준비되고 테스트가 완료되었을 때 개발 프로세스를 체계적으로 마무리하기 위해 사용하세요.
