eXtreme gradient boosting algorithm with machine learning: A review

ZA Ali, ZH Abduljabbar, HA Tahir, AB Sallow… - Academic Journal of …, 2023 - cir.nii.ac.jp
< jats: p> 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 …

[HTML][HTML] A survey on machine learning for recurring concept drifting data streams

AL Suárez-Cetrulo, D Quintana, A Cervantes - Expert Systems with …, 2023 - Elsevier
The problem of concept drift has gained a lot of attention in recent years. This aspect is key
in many domains exhibiting non-stationary as well as cyclic patterns and structural breaks …

New York City taxi trip duration prediction using MLP and XGBoost

M Poongodi, M Malviya, C Kumar, M Hamdi… - International Journal of …, 2022 - Springer
Abstract New York City taxi rides form the core of the traffic in the city of New York. The many
rides taken every day by New Yorkers in the busy city can give us a great idea of traffic …

[HTML][HTML] Evolving waste management: The impact of environmental technology, taxes, and carbon emissions on incineration in EU countries

M Imran, Z Jijian, A Sharif, C Magazzino - Journal of Environmental …, 2024 - Elsevier
Amid the urgent global imperatives concerning climate change and resource preservation,
our research delves into the critical domains of waste management and environmental …

Application of gradient boosting algorithms for anti-money laundering in cryptocurrencies

D Vassallo, V Vella, J Ellul - SN Computer Science, 2021 - Springer
The recent emergence of cryptocurrencies has added another layer of complexity in the fight
towards financial crime. Cryptocurrencies require no central authority and offer pseudo …

A survey of active and passive concept drift handling methods

M Han, Z Chen, M Li, H Wu… - Computational …, 2022 - Wiley Online Library
At present, concept drift in the nonstationary data stream is showing trends with different
speeds and different degrees of severity, which has brought great challenges to many fields …

Gradient boosted trees for evolving data streams

N Gunasekara, B Pfahringer, H Gomes, A Bifet - Machine Learning, 2024 - Springer
Gradient Boosting is a widely-used machine learning technique that has proven highly
effective in batch learning. However, its effectiveness in stream learning contexts lags …

Are concept drift detectors reliable alarming systems?-a comparative study

L Poenaru-Olaru, L Cruz, A van Deursen… - … Conference on Big …, 2022 - ieeexplore.ieee.org
As machine learning models increasingly replace traditional business logic in the production
system, their lifecycle management is becoming a significant concern. Once deployed into …

Research on rockburst prediction classification based on GA-XGB model

X **e, W Jiang, J Guo - IEEE Access, 2021 - ieeexplore.ieee.org
Rockburst is a typical engineering geological disaster under the condition of high geostress.
The rockburst classification and prediction are of great significance for the prevention and …

Classification of the drifting data streams using heterogeneous diversified dynamic class-weighted ensemble

M Sarnovsky, M Kolarik - PeerJ Computer Science, 2021 - peerj.com
Data streams can be defined as the continuous stream of data coming from different sources
and in different forms. Streams are often very dynamic, and its underlying structure usually …