Statistical validation for synthetic financial time series
Project description
financial-data-validation
Statistical validation for synthetic financial time series.
Installation
pip install finanial-data-validation
Quick Start
from financial_data_validation import validate_paths
import numpy as np
# Your synthetic price paths (n_paths, n_timesteps)
paths = np.random.lognormal(0, 0.02, size=(1000, 252))
# Validate
report = validate_paths(paths)
print(f"Quality Score: {report.quality_score:.1f}/100")
print(f"Passed: {'✓' if report.passed else '✗'}")
What It Tests
| Test | Validates | Pass Criteria |
|---|---|---|
| Ljung-Box | No spurious autocorrelation in returns | p > 0.05 |
| ARCH | Volatility clustering present | p < 0.05 |
| Jarque-Bera | Returns approximately normal | p > 0.01 |
| Kolmogorov-Smirnov | Distribution shape matches expectation | D < 0.05 |
Quality Scores
- 90-100: Excellent — indistinguishable from real markets
- 80-89: Good — suitable for most applications
- 70-79: Acceptable — passes minimum requirements
- < 70: Poor — may produce unreliable results
Why This Exists
Synthetic market data is only useful if it's statistically realistic. This package validates whether generated price paths exhibit the properties of real financial markets: volatility clustering, fat tails, and proper correlation structure.
Built by QPaths — we use this to validate every dataset we generate.
Example Output
ValidationReport(
ljung_box_score=0.87,
arch_score=0.92,
jarque_bera_score=0.81,
ks_score=0.85,
quality_score=86.4,
passed=True
)
Use Cases
- Validate synthetic data before backtesting trading strategies
- Quality-check Monte Carlo simulations
- Verify stochastic model implementations
- Test financial data generation pipelines
Documentation
Full documentation: github.com/qpaths/financial-data-validation
License
MIT
Part of the QPaths ecosystem — Generate validated synthetic market data at qpaths.io
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