bw_select_cv_trivariate: Cross-validation for trivariate distributions

Description Usage Arguments Details Value References Examples

View source: R/bandwidth_selection.R

Description

Uses cross-validation to find the optimal bandwidth for a trivariate locally Gaussian fit

Usage

1
bw_select_cv_trivariate(x, tol = 10^(-3))

Arguments

x

The matrix of data points.

tol

The absolute tolerance in the optimization, used by the optim-function.

Details

This function provides an implementation for the Cross Validation algorithm for bandwidth selection described in Otneim & Tjøstheim (2017), Section 4, but for trivariate distributions. Let \hat{f}_h(x) be the trivariate locally Gaussian density estimate obtained using the bandwidth h, then this function returns the bandwidth that maximizes

CV(h) = n^{-1} ∑_{i=1}^n \log \hat{f}_h^{(-i)}(x_i),

where \hat{f}_h^{(-i)} is the density estimate calculated without observation x_i.

The recommended use of this function is through the lg_main wrapper function.

Value

The function returns a list with two elements: bw is the selected bandwidths, and convergence is the convergence flag returned by the optim-function.

References

Otneim, Håkon, and Dag Tjøstheim. "The locally gaussian density estimator for multivariate data." Statistics and Computing 27, no. 6 (2017): 1595-1616.

Examples

1
2
3
4
5
  ## Not run: 
    x <- cbind(rnorm(100), rnorm(100), rnorm(100))
    bw <- bw_select_cv_trivariate(x)
  
## End(Not run)

hotneim/lg documentation built on May 9, 2020, 7:35 a.m.