compute-betaln v0.0.0
betaln
Evaluates the natural logarithm of the Beta function.
This function evaluates the natural logarithm of the Beta function which can be defined as follows:
Installation
$ npm install compute-betalnFor use in the browser, use browserify.
Usage
var betaln = require( 'compute-betaln' );betaln( x, y, options )
Evaluates the natural logarithm of the Beta function (element-wise). . x may be either a number, an array, a typed array, or a matrix. y has to be either an array or matrix of equal dimensions as x or a single number. Correspondingly, the function returns either an array with the same length as the input array(s), a matrix with the same dimensions as the input matrix/matrices or a single number.
var matrix = require( 'dstructs-matrix' ),
	data,
	mat,
	out,
	i;
out = betaln( 0, 0 );
// returns +Infinity
out = betaln( 0.001, 0.001 );
// returns ~7.601
out = betaln( -1, 2 );
// return NaN
out = betaln( [1,2,3,4], 1 );
// returns [ ~0, ~-0.693, ~-1.099, ~-1.386 ]
out = betaln( 1, [1,2,3,4] );
// returns [ ~0, ~-0.693, ~-1.099, ~-1.386 ]
out = betaln( [ -10, -1, 0, 1, 10 ] );
// returns [ -1, -0.8427, 0, 0.8427, 1 ]
data = [ 0, 0.5, 1, 1.5, 2 ];
out = betaln( data, 100 );
// returns [ +Infintiy, ~-1.729, ~-4.605, ~-7.032, ~-9.22 ]
data = new Int8Array( data );
out = betaln( data, 100 );
// returns Float64Array( [ +Infintiy, +Infinity, ~-4.605, ~-4.605, ~-9.22 ] )
data = new Float64Array( 6 );
for ( i = 0; i < 6; i++ ) {
	data[ i ] = i / 2;
}
mat = matrix( data, [3,2], 'float64' );
/*
	[ 0  0.5
	  1  1.5
	  2  2.5 ]
*/
out = betaln( mat, 0.5  );
/*
	[ +Inf   ~1.145
	  ~0.693 ~0.452
	  ~0.288 ~0.164 ]
*/The function accepts the following options:
- __accessor__: accessor `function` for accessing `array` values.
- __dtype__: output [`typed array`](https://developer.mozilla.org/en-US/docs/Web/JavaScript/Typed_arrays) or [`matrix`](https://github.com/dstructs/matrix) data type. Default: `float64`.
- copy: booleanindicating if thefunctionshould return a new data structure. Default:true.
- path: deepget/deepset key path.
- sep: deepget/deepset key path separator. Default: '.'.
For non-numeric arrays, provide an accessor function for accessing array values.
var data = [
	['beep', 0],
	['boop', 0.5],
	['bip', 1],
	['bap', 1.5],
	['baz', 2]
];
function getValue( d, i ) {
	return d[ 1 ];
}
var out = betaln( data, 100, {
	'accessor': getValue
});
// returns [ +Infintiy, ~-1.729, ~-4.605, ~-7.032, ~-9.22 ]When evaluating the betaln function for values of two object arrays, provide an accessor function which accepts 3 arguments.
var data = [
	['beep', 2],
	['boop', 3],
	['bip', 4],
	['bap', 5],
	['baz', 6]
];
var arr = [
	{'x': 2},
	{'x': 3},
	{'x': 4},
	{'x': 5},
	{'x': 6}
];
function getValue( d, i, j ) {
	if ( j === 0 ) {
		return d[ 1 ];
	}
	return d.x;
}
var out = beta( data, arr, {
	'accessor': getValue
});
// returns [ ~-1.792, ~-3.402, ~-4.942, ~-6.446, ~-7.927 ]Note: j corresponds to the input array index, where j=0 is the index for the first input array and j=1 is the index for the second input array.
To deepset an object array, provide a key path and, optionally, a key path separator.
var data = [
	{'x':[0,10]},
	{'x':[1,100]},
	{'x':[2,1000]},
	{'x':[3,10000]},
	{'x':[4,100000]}
];
var out = betaln( data, 0.1, 'x|1', '|' );
/*
	[
		{'x':[0,~2.0.27]},
		{'x':[1,~1.793]},
		{'x':[2,~1.562]},
		{'x':[3,~1.332]},
		{'x':[4,~1.101]}
	]
*/
var bool = ( data === out );
// returns trueBy default, when provided a typed array or matrix, the output data structure is float64 in order to preserve precision. To specify a different data type, set the dtype option (see matrix for a list of acceptable data types).
var data, out;
data = new Int8Array( [1,2,3,4] );
out = betaln( data, 8, {
	'dtype': 'int32'
});
// returns Int32Array( [-2,-4,-5,-7] )
// Works for plain arrays, as well...
out = betaln( [ 1, 2, 3, 4 ], 8, {
	'dtype': 'int8'
});
// returns Int8Array( [-2,-4,-5,-7] )By default, the function returns a new data structure. To mutate the input data structure (e.g., when input values can be discarded or when optimizing memory usage), set the copy option to false.
var data,
	bool,
	mat,
	out,
	i;
var data = [ 1, 2, 3, 4 ];
var out = betaln( data, 100, {
	'copy': false
});
// returns [ ~0, ~-0.693, ~-1.099, ~-1.386 ]
bool = ( data === out );
// returns true
data = new Float64Array( 6 );
for ( i = 0; i < 6; i++ ) {
	data[ i ] = i / 2;
}
mat = matrix( data, [3,2], 'float64' );
/*
	[ 0  0.5
	  1  1.5
	  2  2.5 ]
*/
out = betaln( mat, 0.5, {
	'copy': false
});
/*
	[ +Inf   ~1.145
	  ~0.693 ~0.452
	  ~0.288 ~0.164 ]
*/
bool = ( mat === out );
// returns trueNotes
- If an element is not a numeric value, the evaluated error function is - NaN.- var data, out; out = betaln( null, 1 ); // returns NaN out = betaln( true, 1 ); // returns NaN out = betaln( {'a':'b'}, 1 ); // returns NaN out = betaln( [ true, null, [] ], 1 ); // returns [ NaN, NaN, NaN ] function getValue( d, i ) { return d.x; } data = [ {'x':true}, {'x':[]}, {'x':{}}, {'x':null} ]; out = betaln( data, 1, { 'accessor': getValue }); // returns [ NaN, NaN, NaN, NaN ] out = betaln( data, 1, { 'path': 'x' }); /* [ {'x':NaN}, {'x':NaN}, {'x':NaN, {'x':NaN} ] */
- Be careful when providing a data structure which contains non-numeric elements and specifying an - integeroutput data type, as- NaNvalues are cast to- 0.- var out = betaln( [ true, null, [] ], 1, { 'dtype': 'int8' }); // returns Int8Array( [0,0,0] );
Examples
var matrix = require( 'dstructs-matrix' ),
	betaln = require( 'compute-betaln' );
var data,
	mat,
	out,
	tmp,
	i;
// Plain arrays...
data = new Array( 10 );
for ( i = 0; i < data.length; i++ ) {
	data[ i ] = Math.random();
}
out = betaln( data, 0.5 );
// Object arrays (accessors)...
function getValue( d ) {
	return d.x;
}
for ( i = 0; i < data.length; i++ ) {
	data[ i ] = {
		'x': data[ i ]
	};
}
out = betaln( data, 0.5, {
	'accessor': getValue
});
// Deep set arrays...
for ( i = 0; i < data.length; i++ ) {
	data[ i ] = {
		'x': [ i, data[ i ].x ]
	};
}
out = betaln( data, 0.5, {
	'path': 'x/1',
	'sep': '/'
});
// Typed arrays...
data = new Float32Array( 10 );
for ( i = 0; i < data.length; i++ ) {
	data[ i ] = Math.random();
}
tmp = betaln( data, 0.5 );
out = '';
for ( i = 0; i < data.length; i++ ) {
	out += tmp[ i ];
	if ( i < data.length-1 ) {
		out += ',';
	}
}
// Matrices...
mat = matrix( data, [5,2], 'float32' );
out = betaln( mat, 0.5 );
// Matrices (custom output data type)...
out = betaln( mat, 0.5, {
	'dtype': 'uint8'
});To run the example code from the top-level application directory,
$ node ./examples/index.jsTests
Unit
Unit tests use the Mocha test framework with Chai assertions. To run the tests, execute the following command in the top-level application directory:
$ make testAll new feature development should have corresponding unit tests to validate correct functionality.
Test Coverage
This repository uses Istanbul as its code coverage tool. To generate a test coverage report, execute the following command in the top-level application directory:
$ make test-covIstanbul creates a ./reports/coverage directory. To access an HTML version of the report,
$ make view-covLicense
Copyright
Copyright © 2015. The Compute.io Authors.
9 years ago