Determine the optimal š number of bins for histogram creation and optimal bin width š using various statistical methods. Its unified interface includes implementations of well-known binning rules such as:
- Square Root Rule (1892)
- Sturgesā Rule (1926)
- Doaneās Rule (1976)
- Scottās Rule (1979)
- Freedman-Diaconis Rule (1981)
- Terrell-Scottās Rule (1985)
- Rice University Rule
This library requires PHP 8.3 or newer. Support of older versions like markrogoyski/math-php provides for PHP 7.2+ is not planned.
composer require tomkyle/binning
The BinSelection class provides several methods for determining the optimal number of bins for histogram creation and optimal bin width. You can either use specific methods directly or the general suggestBins()
and suggestBinWidth()
methods with different strategies.
Use the suggestBinWidth method to get the optimal bin width based on the selected method. The method returns the bin width, often referred to as š, as a float value.
<?php
use tomkyle\Binning\BinSelection;
$data = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15];
// Default method: Freedman-Diaconis Rule (1981)
$h = BinSelection::suggestBinWidth($data);
$h = BinSelection::suggestBinWidth($data, BinSelection::DEFAULT);
// Explicitly set method
$h = BinSelection::suggestBinWidth($data, BinSelection::FREEDMAN_DIACONIS);
$h = BinSelection::suggestBinWidth($data, BinSelection::SCOTT);
Use the suggestBins method to get the optimal number of bins based on the selected method. The method returns the number of bins, often referred to as š, as an integer value.
<?php
use tomkyle\Binning\BinSelection;
$data = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15];
// Defaults to Freedman-Diaconis Rule
$k = BinSelection::suggestBins($data);
$k = BinSelection::suggestBins($data, BinSelection::DEFAULT);
// Square Root Rule (Pearson, 1892)
$k = BinSelection::suggestBins($data, BinSelection::SQUARE_ROOT);
$k = BinSelection::suggestBins($data, BinSelection::PEARSON);
// Sturges' Rule (1926)
$k = BinSelection::suggestBins($data, BinSelection::STURGES);
// Doane's Rule (1976) in 2 variants for samples (default) or populations
$k = BinSelection::suggestBins($data, BinSelection::DOANE);
$k = BinSelection::suggestBins($data, BinSelection::DOANE, population: true);
// Scott's Rule (1979)
$k = BinSelection::suggestBins($data, BinSelection::SCOTT);
// Freedman-Diaconis Rule (1981)
$k = BinSelection::suggestBins($data, BinSelection::FREEDMAN_DIACONIS);
// Terrell-Scottās Rule (1985)
$k = BinSelection::suggestBins($data, BinSelection::TERRELL_SCOTT);
// Rice University Rule
$k = BinSelection::suggestBins($data, BinSelection::RICE);
You can also call the specific methods directly to get the bin width š or number of bins š.
- Most of the methods return the bin number š as an integer value.
- Two methods, Scottsā Rule and Freedman-Diaconis Rule, provide both š and š as an array.
The result array contains additional information like the data range š¹, the inter-quartile range IQR, or standard deviation stddev, which can be useful for further analysis.
Simple rule using the square root of the sample size.
$k = BinSelection::squareRoot($data);
Based on the logarithm of the sample size. Good for normal distributions.
$k = BinSelection::sturges($data);
Improvement of Sturgesā rule that accounts for data skewness.
// Using sample-based calculation (default)
$k = BinSelection::doane($data);
// Using population-based calculation
$k = BinSelection::doane($data, population: true);
Based on the standard deviation and sample size. Good for continuous data.
The result is an array with keys width
, bins
, range
, and stddev
. Map them to variables like so:
list($h, $k, $R, stddev) = BinSelection::scott($data);
Based on the interquartile range (IQR). Robust against outliers.
The result is an array with keys width
, bins
, range
, and IQR
. Map them to variables like so:
list($h, $k, $R, $IQR) = BinSelection::freedmanDiaconis($data);
Uses the cube root of the sample size, generally provides more bins than Sturges. This is the original Rice Rule:
$k = BinSelection::terrellScott($data);
Uses the cube root of the sample size, generally provides more bins than Sturges. Formula as taught by David M. Lane at Rice University. ā N.B. This Rice Rule seems to be not the original. In fact, Terrell-Scottās (1985) seems to be. Also note that both variants can yield different results under certain circumstances. This Laneās variant from the early 2000s is however more commonly cited:
$k = BinSelection::rice($data);
Rule | Strengths & Weaknesses |
---|---|
FreedmanāDiaconis | Uses the IQR to set š, so it is robust against outliers and adapts to data spread. |
Sturgesā Rule | Very simple, works well for roughly normal, moderate-sized datasets. |
Rice Rule | Independent of data shape and easy to compute. |
TerrellāScott | Similar approach as Rice Rule but with asymptotically optimal MISE properties; gives more bins than Sturges and adapts better at large š. |
Square Root Rule | Simply the square root, so it requires no distributional estimates. |
Doaneās Rule | Extends Sturgesā Rule by adding a skewness correction. Improving performance on asymmetric data. |
Scottās Rule | Uses standard deviation to minimize MISE, providing good balance for unimodal, symmetric data. |
Rubia, J.M.D.L. (2024): Rice University Rule to Determine the Number of Bins. Open Journal of Statistics, 14, 119-149. DOI: 10.4236/ojs.2024.141006
Wikipedia: Histogram / Number of bins and width https://en.wikipedia.org/wiki/Histogram#Number_of_bins_and_width
<?php
use tomkyle\Binning\BinSelection;
// Generate sample data (e.g., from measurements)
$measurements = [
12.3, 14.1, 13.8, 15.2, 12.9, 14.7, 13.1, 15.8, 12.5, 14.3,
13.6, 15.1, 12.8, 14.9, 13.4, 15.5, 12.7, 14.2, 13.9, 15.0
];
echo "Data points: " . count($measurements) . "\n\n";
// Compare different methods
$methods = [
'Sturgesās Rule' => BinSelection::STURGES,
'Rice University Rule' => BinSelection::RICE,
'Terrell-Scottās Rule' => BinSelection::TERRELL_SCOTT,
'Square Root Rule' => BinSelection::SQUARE_ROOT,
'Doaneās Rule' => BinSelection::DOANE,
'Scottās Rule' => BinSelection::SCOTT,
'Freedman-Diaconis Rule' => BinSelection::FREEDMAN_DIACONIS,
];
foreach ($methods as $name => $method) {
$bins = BinSelection::suggestBins($measurements, $method);
echo sprintf("%-18s: %2d bins\n", $name, $bins);
}
All methods will throw InvalidArgumentException
for invalid inputs:
try {
// This will throw an exception
$bins = BinSelection::sturges([]);
} catch (InvalidArgumentException $e) {
echo "Error: " . $e->getMessage();
// Output: "Dataset cannot be empty to apply the Sturges' Rule."
}
try {
// This will throw an exception
$bins = BinSelection::suggestBins($data, 'invalid-method');
} catch (InvalidArgumentException $e) {
echo "Error: " . $e->getMessage();
// Output: "Unknown binning method: invalid-method"
}
$ git clone [email protected]:tomkyle/binning.git
$ composer install
$ pnpm install
This will watch changes inside the src/ and tests/ directories and run a series of tests:
- Find and run the according unit test with PHPUnit.
- Find possible bugs and documentation isses using phpstan.
- Analyse code style and give hints on newer syntax using Rector.
$ npm run watch
Run PhpUnit
$ npm run phpunit