time-to-botec/js/node_modules/@stdlib/stats/lowess/lib/lowest.js
NunoSempere b6addc7f05 feat: add the node modules
Necessary in order to clearly see the squiggle hotwiring.
2022-12-03 12:44:49 +00:00

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/**
* @license Apache-2.0
*
* Copyright (c) 2018 The Stdlib Authors.
*
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*/
'use strict';
// MODULES //
var sqrt = require( '@stdlib/math/base/special/sqrt' );
var abs = require( '@stdlib/math/base/special/abs' );
var max = require( '@stdlib/math/base/special/max' );
var pow = require( '@stdlib/math/base/special/pow' );
// MAIN //
/**
* Calculates the fitted value `ys` for a value `xs` on the horizontal axis.
*
* ## Method
*
* - The smoothed value for the x-axis value at the current index is computed using a (robust) locally weighted regression of degree one. The tricube weight function is used with `h` equal to the maximum of `xs - x[ nleft ]` and `x[ nright ] - xs`.
*
* ## References
*
* - Cleveland, William S. 1979. "Robust Locally and Smoothing Weighted Regression Scatterplots." _Journal of the American Statistical Association_ 74 (368): 82936. doi:[10.1080/01621459.1979.10481038](https://doi.org/10.1080/01621459.1979.10481038).
* - Cleveland, William S. 1981. "Lowess: A program for smoothing scatterplots by robust locally weighted regression." _American Statistician_ 35 (1): 5455. doi:[10.2307/2683591](https://doi.org/10.2307/2683591).
*
* @private
* @param {NumericArray} x - ordered x-axis values (abscissa values)
* @param {NumericArray} y - corresponding y-axis values (ordinate values)
* @param {PositiveInteger} n - number of observations
* @param {NonNegativeInteger} i - current index
* @param {NonNegativeInteger} nleft - index of the first point used in computing the fitted value
* @param {NonNegativeInteger} nright - index of the last point used in computing the fitted value
* @param {ProbabilityArray} w - weights at indices from `nleft` to `nright` to be used in the calculation of the fitted value
* @param {boolean} userw - boolean indicating whether a robust fit is carried out using the weights in `rw`
* @param {ProbabilityArray} rw - robustness weights
* @returns {number} fitted value
*/
function lowest( x, y, n, i, nleft, nright, w, userw, rw ) {
var range;
var nrt;
var h1;
var h9;
var xs;
var ys;
var h;
var a;
var b;
var c;
var r;
var j;
xs = x[ i ];
range = x[ n - 1 ] - x[ 0 ];
h = max( xs - x[ nleft ], x[ nright ] - xs );
h9 = 0.999 * h;
h1 = 0.001 * h;
// Compute weights (pick up all ties on right):
a = 0.0; // sum of weights
for ( j = nleft; j < n; j++ ) {
w[ j ] = 0.0;
r = abs( x[ j ] - xs );
if ( r <= h9 ) { // small enough for non-zero weight
if ( r > h1 ) {
w[ j ] = pow( 1.0-pow( r/h, 3.0 ), 3.0 );
} else {
w[ j ] = 1.0;
}
if ( userw ) {
w[ j ] *= rw[ j ];
}
a += w[ j ];
}
else if ( x[ j ] > xs ) {
break; // get out at first zero weight on right
}
}
nrt = j - 1; // rightmost point (may be greater than `nright` because of ties)
if ( a <= 0.0 ) {
return y[ i ];
}
// Make sum of weights equal to one:
for ( j = nleft; j <= nrt; j++ ) {
w[ j ] /= a;
}
if ( h > 0.0 ) { // use linear fit
// Find weighted center of x values:
a = 0.0;
for ( j = nleft; j <= nrt; j++ ) {
a += w[ j ] * x[ j ];
}
b = xs - a;
c = 0.0;
for ( j = nleft; j <= nrt; j++ ) {
c += w[ j ] * pow( x[ j ] - a, 2.0 );
}
if ( sqrt( c ) > 0.001 * range ) {
// Points are spread out enough to compute slope:
b /= c;
for ( j = nleft; j <= nrt; j++ ) {
w[ j ] *= ( 1.0 + ( b*(x[j]-a) ) );
}
}
}
ys = 0.0;
for ( j = nleft; j <= nrt; j++ ) {
ys += w[ j ] * y[ j ];
}
return ys;
}
// EXPORTS //
module.exports = lowest;