机器学习
计算机科学
人工智能
Python(编程语言)
可解释性
Boosting(机器学习)
学习分类器系统
梯度升压
算法
计算学习理论
随机森林
主动学习(机器学习)
强化学习
操作系统
作者
Zeravan Arif Ali,Ziyad H. Abduljabbar,Hanan A. Tahir,Amira Bibo Sallow,Saman M. Almufti
出处
期刊:Academic journal of Nawroz University
[Nawroz University]
日期:2023-05-31
卷期号:12 (2): 320-334
被引量:75
标识
DOI:10.25007/ajnu.v12n2a1612
摘要
The primary task of machine learning is to extract valuable information from the data that is generated every day, process it to learn from it, and take useful actions. Original language process, pattern detection, search engines, medical diagnostics, bioinformatics, and chemical informatics are all examples of application areas for machine learning. XGBoost is a recently released machine learning algorithm that has shown exceptional capability for modeling complex systems and is the most superior machine learning algorithm in terms of prediction accuracy and interpretability and classification versatility. XGBoost is an enhanced distributed scaling enhancement library that is built to be extremely powerful, adaptable, and portable. It uses augmented scaling to incorporate machine learning algorithms. it is a parallel tree boost that addresses a variety of data science problems quickly and accurately. Python remains the language of choice for scientific computing, data science, and machine learning, which boosts performance and productivity by enabling the use of clean low-level libraries and high-level APIs. This paper presents one of the most prominent supervised and semi-supervised learning (SSL) machine learning algorithms in a Python environment.
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