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distributions-laplace-cdf
Advanced tools
Laplace distribution cumulative distribution function (CDF).
Laplace distribution cumulative distribution function.
The cumulative distribution function for a Laplace random variable is
where mu is the location parameter and b > 0 is the scale parameter.
$ npm install distributions-laplace-cdf
For use in the browser, use browserify.
var cdf = require( 'distributions-laplace-cdf' );
Evaluates the cumulative distribution function for the Laplace distribution. x may be either a number, an array, a typed array, or a matrix.
var matrix = require( 'dstructs-matrix' ),
mat,
out,
x,
i;
out = cdf( 1 );
// returns ~0.816
x = [ -4, -2, 0, 2, 4 ];
out = cdf( x );
// returns [ ~0.001, ~0.068, ~0.5, ~0.932, ~0.991 ]
x = new Float32Array( x );
out = cdf( x );
// returns Float64Array( [~0.001,~0.068,~0.5,~0.932,~0.991] )
x = new Float32Array( 6 );
for ( i = 0; i < 6; i++ ) {
x[ i ] = i - 3;
}
mat = matrix( x, [3,2], 'float32' );
/*
[ -3 -2
-1 0
1 2 ]
*/
out = cdf( mat );
/*
[ ~0.025 ~0.068
~0.184 ~0.5
~0.816 ~0.932 ]
*/
The function accepts the following options:
0.1.function for accessing array values.typed array or matrix data type. Default: float64.boolean indicating if the function should return a new data structure. Default: true.'.'.A Laplace distribution is a function of two parameters: mu(location parameter) and b > 0(scale parameter). By default, mu is equal to 0 and b is equal to 1. To adjust either parameter, set the corresponding option.
var x = [ -4, -2, 0, 2, 4 ];
var out = cdf( x, {
'mu': 7,
'b': 6
});
// returns [ ~0.094, ~0.112, ~0.132, ~0.156, ~0.184, ~0.217 ]
For non-numeric arrays, provide an accessor function for accessing array values.
var data = [
[0,-4],
[1,-2],
[2,0],
[3,2],
[4,4],
];
function getValue( d, i ) {
return d[ 1 ];
}
var out = cdf( data, {
'accessor': getValue
});
// returns [ ~0.001, ~0.068, ~0.5, ~0.932, ~0.991 ]
To deepset an object array, provide a key path and, optionally, a key path separator.
var data = [
{'x':[0,-4]},
{'x':[1,-2]},
{'x':[2,0]},
{'x':[3,2]},
{'x':[4,4]},
];
var out = cdf( data, {
'path': 'x/1',
'sep': '/'
});
/*
[
{'x':[0,~0.001]},
{'x':[1,~0.068]},
{'x':[2,~0.5]},
{'x':[3,~0.932]},
{'x':[4,~0.991]},
]
*/
var bool = ( data === out );
// returns true
By 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 x, out;
x = new Float64Array( [-4,-2,0,2,4] );
out = cdf( x, {
'dtype': 'float32'
});
// returns Float32Array( [~0.001,~0.068,~0.5,~0.932,~0.991] )
// Works for plain arrays, as well...
out = cdf( [-4,-2,0,2,4], {
'dtype': 'float32'
});
// returns Float32Array( [~0.001,~0.068,~0.5,~0.932,~0.991] )
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 bool,
mat,
out,
x,
i;
x = [ -4, -2, 0, 2, 4 ];
out = cdf( x, {
'copy': false
});
// returns [ ~0.001, ~0.068, ~0.5, ~0.932, ~0.991 ]
bool = ( x === out );
// returns true
x = new Float32Array( 6 );
for ( i = 0; i < 6; i++ ) {
x[ i ] = i - 3 ;
}
mat = matrix( x, [3,2], 'float32' );
/*
[ -3 -2
-1 0
1 2 ]
*/
out = cdf( mat, {
'copy': false
});
/*
[ ~0.025 ~0.068
~0.184 ~0.5
~0.816 ~0.932 ]
*/
bool = ( mat === out );
// returns true
If an element is not a numeric value, the evaluated cumulative distribution function is NaN.
var data, out;
out = cdf( null );
// returns NaN
out = cdf( true );
// returns NaN
out = cdf( {'a':'b'} );
// returns NaN
out = cdf( [ true, null, [] ] );
// returns [ NaN, NaN, NaN ]
function getValue( d, i ) {
return d.x;
}
data = [
{'x':true},
{'x':[]},
{'x':{}},
{'x':null}
];
out = cdf( data, {
'accessor': getValue
});
// returns [ NaN, NaN, NaN, NaN ]
out = cdf( data, {
'path': 'x'
});
/*
[
{'x':NaN},
{'x':NaN},
{'x':NaN,
{'x':NaN}
]
*/
var cdf = require( 'distributions-laplace-cdf' ),
matrix = require( 'dstructs-matrix' );
var data,
mat,
out,
tmp,
i;
// Plain arrays...
data = new Array( 10 );
for ( i = 0; i < data.length; i++ ) {
data[ i ] = i - 5;
}
out = cdf( data );
// Object arrays (accessors)...
function getValue( d ) {
return d.x;
}
for ( i = 0; i < data.length; i++ ) {
data[ i ] = {
'x': data[ i ]
};
}
out = cdf( data, {
'accessor': getValue
});
// Deep set arrays...
for ( i = 0; i < data.length; i++ ) {
data[ i ] = {
'x': [ i, data[ i ].x ]
};
}
out = cdf( data, {
'path': 'x/1',
'sep': '/'
});
// Typed arrays...
data = new Float32Array( 10 );
for ( i = 0; i < data.length; i++ ) {
data[ i ] = i - 5;
}
out = cdf( data );
// Matrices...
mat = matrix( data, [5,2], 'float32' );
out = cdf( mat );
// Matrices (custom output data type)...
out = cdf( mat, {
'dtype': 'uint8'
});
To run the example code from the top-level application directory,
$ node ./examples/index.js
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 test
All new feature development should have corresponding unit tests to validate correct functionality.
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-cov
Istanbul creates a ./reports/coverage directory. To access an HTML version of the report,
$ make view-cov
Copyright © 2015. The Compute.io Authors.
FAQs
Laplace distribution cumulative distribution function (CDF).
We found that distributions-laplace-cdf demonstrated a not healthy version release cadence and project activity because the last version was released a year ago. It has 1 open source maintainer collaborating on the project.
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Security News
Multiple high-impact npm maintainers confirm they have been targeted in the same social engineering campaign that compromised Axios.

Security News
Axios compromise traced to social engineering, showing how attacks on maintainers can bypass controls and expose the broader software supply chain.

Security News
Node.js has paused its bug bounty program after funding ended, removing payouts for vulnerability reports but keeping its security process unchanged.