Home > Backend Development > PHP Tutorial > Implementing machine learning (ML) algorithms using PHP

Implementing machine learning (ML) algorithms using PHP

王林
Release: 2023-05-11 17:42:01
Original
2081 people have browsed it

As artificial intelligence and machine learning gradually mature, more and more enterprises and developers are beginning to pay attention to the implementation of machine learning algorithms in the hope of obtaining more business value from them. As a programming language widely used in Web and enterprise application development, can PHP implement machine learning algorithms? The answer is yes.

Introduction to Machine Learning Algorithms

Before introducing how to use PHP to implement machine learning algorithms, let’s first understand the machine learning algorithms. Machine Learning (ML) is a branch of artificial intelligence and a discipline that studies how to make computer systems automatically improve using experience. Simply put, machine learning is to analyze and process large amounts of data to discover patterns between data, so as to predict and classify operations.

Machine learning algorithms are mainly divided into three types: supervised learning, unsupervised learning and semi-supervised learning. Supervised learning refers to a learning method that continuously adjusts algorithm parameters through the input and output samples of the training set so that it can accurately predict the output results; unsupervised learning refers to dividing the data set into several clusters and discovering differences between the data. Associations and patterns; semi-supervised learning is a learning method between supervised and unsupervised. It usually improves the accuracy of the model through a large amount of unlabeled data under a limited labeled data set.

PHP implements machine learning algorithms

PHP is an open source scripting language. Due to its easy-to-learn and easy-to-use characteristics, it is widely used in fields such as Web development, enterprise application development, and data analysis. Although PHP is not as widely used in the field of machine learning as Python and R languages, there are many third-party libraries and frameworks that can help PHP developers implement machine learning algorithms.

  1. PHP-ML library

PHP-ML is a PHP-based machine learning library that provides multiple algorithms such as supervised learning, unsupervised learning and semi-supervised learning. , such as decision trees, K-Means, SVM, naive Bayes, neural networks, etc., and also provides multiple functions such as feature extraction, data processing, and model evaluation. Using the PHP-ML library, you can quickly and easily implement machine learning algorithms. The following is a sample code for a decision tree classifier implemented using the PHP-ML library:

use PhpmlClassificationDecisionTree;
use PhpmlDatasetCsvDataset;
use PhpmlFeatureExtractionStopWordsEnglish;
use PhpmlTokenizationWhitespaceTokenizer;
use PhpmlPreprocessingNormalizerMinMaxScaler;

require_once __DIR__ . '/vendor/autoload.php';

$dataset = new CsvDataset('spam.csv', 1, true);
$samples = $dataset->getSamples();
$labels = $dataset->getTargets();

$vectorizer = new PhpmlFeatureExtractionTfIdfTransformer();
$vectorizer->fit($samples);
$vectorizer->transform($samples);

$sampler = new PhpmlSamplingStratifiedRandomSplit($labels, 0.3);

$classifier = new DecisionTree();
$classifier->train($sampler->getTrainSamples(), $sampler->getTrainLabels());

$predictedLabels = $classifier->predict($sampler->getTestSamples());
Copy after login

In the above example, we pass CsvDataset Read the data set from the CSV file, use feature extraction and transformation methods to convert the text into vectors, then use DecisionTree for model training and prediction, and finally output the predicted labels.

  1. PHPSandbox

PHPSandbox is a PHP sandbox. For security reasons, some PHP functions may be disabled, which is not suitable for some applications. But you can also use the machine learning capabilities within it. PHPSandbox also provides a programmable model and two available PHP extension plug-ins, SIG_ALARM (safe) and SYSCALL (can be called). The following is a sample code that uses PHPSandbox to implement a machine learning algorithm:

require_once __DIR__.'/vendor/autoload.php';

$sandbox = new PHPSandboxPHPSandbox;
$sandbox->setOptions(array(
    'disable_functions' => array(),
));

$train_data = array(array(1.0, 1.0), array(-1.0, -1.0), array(1.0, -1.0), array(-1.0, 1.0));
$train_label = array(1, -1, -1, 1);
$svm = $sandbox->svm_train($train_data, $train_label);
$result = $sandbox->svm_predict(array(1.5, -1.5), $svm);
Copy after login

In this example, we train an SVM classifier through the svm_train function of PHPSandbox, and predict the sample to be tested through the svm_predict function.

Implementing machine learning algorithms in PHP also requires consideration of some issues encountered in the algorithm, such as data quality, parameter selection, and model evaluation. In addition, you also need to master some basic mathematics, statistics and machine learning theory to better understand the principles and usage of algorithms.

Conclusion

Machine learning is a technology with broad development prospects. As its application fields continue to expand, it also provides more opportunities for developers. Although PHP is also regarded as the second choice language for machine learning, it can use third-party libraries and frameworks to quickly implement basic machine learning algorithms, providing enterprises and developers with more application options. If you want to learn machine learning, you might as well try implementing machine learning algorithms in PHP and discover the fun!

The above is the detailed content of Implementing machine learning (ML) algorithms using PHP. For more information, please follow other related articles on the PHP Chinese website!

Related labels:
source:php.cn
Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn
Popular Tutorials
More>
Latest Downloads
More>
Web Effects
Website Source Code
Website Materials
Front End Template