Supports nonparametric density estimation using B-Spline density estimator from univariate sample.
Estimation methods supported:
- Empirical Characteristic Function (ECF): Cui, Kirkby and Nguyen (2019)
- Galerkin Method: Kirkby, Leitao and Nguyen, (2021)
- "Primal" Basis Estimation: Redner (1999)
Bandwidth Selection methods supported:
- LCV - Likelihood Cross-Validation
- LSCV - Least-Squares Cross-Validation
- Apdaptive Rule of Thumb - Adaptive heuristic rule of thumb, See Cui, Kirkby and Nguyen (2019)
- Plugin - uses plugin method based on estimate of roughness
- Normal Rule - traditional normal rule of thumb
Acknowledgement: These libraries have been built in collaboration with:
Supporting Research Articles:
- Nonparametric Density Estimation by B-spline Duality. Econometric Theory (2019)
- Nonparametric Density Estimation and Bandwidth Selection with B-spline bases: a Novel Galerkin Method. Computational Statistics and Data Analysis (2021)
- A data-driven framework for consistent financial valuation and risk measurement. Eur. J. Operational Research (2020)