162 lines
4.7 KiB
JavaScript
162 lines
4.7 KiB
JavaScript
/**
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* @license Apache-2.0
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*
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* Copyright (c) 2018 The Stdlib Authors.
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*
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* Licensed under the Apache License, Version 2.0 (the "License");
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* you may not use this file except in compliance with the License.
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* You may obtain a copy of the License at
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*
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* http://www.apache.org/licenses/LICENSE-2.0
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*
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* Unless required by applicable law or agreed to in writing, software
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* distributed under the License is distributed on an "AS IS" BASIS,
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* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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* See the License for the specific language governing permissions and
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* limitations under the License.
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*/
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'use strict';
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// MODULES //
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var isNumberArray = require( '@stdlib/assert/is-number-array' ).primitives;
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var isTypedArrayLike = require( '@stdlib/assert/is-typed-array-like' );
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var isArray = require( '@stdlib/assert/is-array' );
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var setReadOnly = require( '@stdlib/utils/define-read-only-property' );
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var hasOwnProp = require( '@stdlib/assert/has-own-property' );
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var cdf = require( './../../base/dists/f/cdf' );
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var copy = require( '@stdlib/utils/copy' );
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var defaults = require( './defaults.json' );
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var validate = require( './validate.js' );
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var unique = require( './unique.js' );
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var meanTable = require( './mean_table.js' );
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var mean = require( './mean.js' );
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var prettyPrint = require( './print.js' );
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// MAIN //
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/**
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* Perform a one-way analysis of variance (ANOVA).
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*
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* @param {NumericArray} x - measured values
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* @param {Array} factor - array of treatments
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* @param {Options} [options] - function options
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* @param {number} [options.alpha=0.05] - significance level
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* @throws {TypeError} options argument must be an object
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* @throws {TypeError} must provide valid options
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* @throws {TypeError} `x` must be a numeric array
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* @throws {TypeError} `factor` must be an array
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* @throws {RangeError} `factor` must have at least two unique elements
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* @throws {RangeError} length of `x` must be greater than or equal to two
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* @throws {RangeError} `x` and `factor` must have the same length
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* @returns {Object} test results
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*/
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function anova1( x, factor, options ) {
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var meanSumSqTreat; // Mean sum of squares
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var meanSumSqError;
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var ssTreatment;
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var sumSqTotal;
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var sumSqError;
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var treatment; // Index variable
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var grandMean;
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var nGroups;
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var fScore;
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var treats;
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var means;
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var numDf;
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var denDf;
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var nobs;
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var pVal;
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var opts;
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var err;
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var out;
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var sq;
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var i;
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if ( !isTypedArrayLike( x ) && !isNumberArray( x ) ) {
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throw new TypeError( 'invalid argument. First argument must be a numeric array. Value: `' + x + '`.' );
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}
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opts = copy( defaults );
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if ( arguments.length > 2 ) {
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err = validate( opts, options );
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if ( err ) {
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throw err;
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}
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}
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nobs = x.length;
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if ( nobs <= 1 ) {
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throw new RangeError( 'invalid argument. First argument must have at least two elements. Value: `' + x + '`.' );
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}
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if ( !isArray( factor ) ) {
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throw new TypeError( 'invalid argument. Second argument must be an array. Value: `' + treats + '`.' );
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}
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treats = unique( factor );
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nGroups = treats.length;
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if ( nGroups <= 1 ) {
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throw new RangeError( 'invalid argument. Second argument must contain at least two unique elements. Value: `' + treats + '`.' );
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}
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if ( nobs !== factor.length ) {
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throw new RangeError( 'invalid arguments. Arguments `x` and `factor` must be arrays of the same length.' );
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}
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sumSqTotal = 0.0;
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ssTreatment = 0.0;
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means = meanTable( x, factor, treats );
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grandMean = mean( x );
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// Now get total ss:
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for ( i = 0; i < nobs; i++ ) {
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sq = ( x[i] - grandMean ) * ( x[i] - grandMean );
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sumSqTotal += sq;
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}
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sq = 0.0;
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for ( treatment in means ) {
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if ( hasOwnProp( means, treatment ) ) {
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// Already have sq defined
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sq = ( means[treatment].mean - grandMean ) *
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( means[treatment].mean - grandMean );
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ssTreatment += means[treatment].sampleSize * sq;
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}
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}
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numDf = nGroups - 1;
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denDf = nobs - nGroups;
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sumSqError = sumSqTotal - ssTreatment;
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meanSumSqTreat = ssTreatment / numDf;
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meanSumSqError = sumSqError / denDf;
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fScore = meanSumSqTreat / meanSumSqError;
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pVal = 1.0 - cdf( fScore, numDf, denDf );
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out = {};
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treatment = {};
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setReadOnly( treatment, 'df', numDf );
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setReadOnly( treatment, 'ss', ssTreatment );
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setReadOnly( treatment, 'ms', meanSumSqTreat );
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setReadOnly( out, 'treatment', treatment );
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err = {};
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setReadOnly( err, 'df', denDf );
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setReadOnly( err, 'ss', sumSqError );
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setReadOnly( err, 'ms', meanSumSqError );
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setReadOnly( out, 'error', err );
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setReadOnly( out, 'statistic', fScore );
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setReadOnly( out, 'pValue', pVal );
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setReadOnly( out, 'means', means );
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setReadOnly( out, 'method', 'One-Way ANOVA' );
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setReadOnly( out, 'alpha', opts.alpha );
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setReadOnly( out, 'rejected', pVal <= opts.alpha );
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setReadOnly( out, 'print', prettyPrint( out ) );
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return out;
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}
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// EXPORTS //
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module.exports = anova1;
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