Go to:
Logótipo
Comuta visibilidade da coluna esquerda
Você está em: Start > Publications > View > Online tree-based ensembles and option trees for regression on evolving data streams
Publication

Online tree-based ensembles and option trees for regression on evolving data streams

Title
Online tree-based ensembles and option trees for regression on evolving data streams
Type
Article in International Scientific Journal
Year
2015
Authors
Ikonomovska, E
(Author)
Other
The person does not belong to the institution. The person does not belong to the institution. The person does not belong to the institution. Without AUTHENTICUS Without ORCID
João Gama
(Author)
FEP
View Personal Page You do not have permissions to view the institutional email. Search for Participant Publications View Authenticus page View ORCID page
Dzeroski, S
(Author)
Other
The person does not belong to the institution. The person does not belong to the institution. The person does not belong to the institution. Without AUTHENTICUS Without ORCID
Journal
Title: NeurocomputingImported from Authenticus Search for Journal Publications
Vol. 150 No. Part B
Pages: 458-470
ISSN: 0925-2312
Publisher: Elsevier
Other information
Authenticus ID: P-00A-3NC
Abstract (EN): The emergence of ubiquitous sources of streaming data has given rise to the popularity of algorithms for online machine learning. In that context, Hoeffding trees represent the state-of-the-art algorithms for online classification. Their popularity stems in large part from their ability to process large quantities of data with a speed that goes beyond the processing power of any other streaming or batch learning algorithm. As a consequence, Hoeffding trees have often been used as base models of many ensemble learning algorithms for online classification. However, despite the existence of many algorithms for online classification, ensemble learning algorithms for online regression do not exist. In particular, the field of online any-time regression analysis seems to have experienced a serious lack of attention. In this paper, we address this issue through a study and an empirical evaluation of a set of online algorithms for regression, which includes the baseline Hoeffding-based regression trees, online option trees, and an online least mean squares filter. We also design, implement and evaluate two novel ensemble learning methods for online regression: online bagging with Hoeffding-based model trees, and an online RandomForest method in which we have used a randomized version of the online model tree learning algorithm as a basic building block. Within the study presented in this paper, we evaluate the proposed algorithms along several dimensions: predictive accuracy and quality of models, time and memory requirements, bias-variance and bias-variance-covariance decomposition of the error, and responsiveness to concept drift.
Language: English
Type (Professor's evaluation): Scientific
No. of pages: 13
Documents
We could not find any documents associated to the publication.
Related Publications

Of the same authors

Speeding up hoeffding-based regression trees with options (2011)
Article in International Conference Proceedings Book
Ikonomovska, E; João Gama; Zenko, B; Dzeroski, S
Incremental multi-target model trees for data streams (2011)
Article in International Conference Proceedings Book
Ikonomovska, E; João Gama; Dzeroski, S
Adaptive windowing for online learning from multiple inter-related data streams (2011)
Article in International Conference Proceedings Book
Ikonomovska, E; Driessensy, K; Dzeroski, S; João Gama

Of the same journal

The vitality of pattern recognition and image analysis (2015)
Another Publication in an International Scientific Journal
Luisa Mico; Joao M Sanches; Jaime S Cardoso
The vitality of pattern recognition and image analysis (2015)
Article in International Scientific Journal
Micó, L; Sanches, JM; Jaime S Cardoso
Pre-processing approaches for imbalanced distributions in regression (2019)
Article in International Scientific Journal
Branco, P; Torgo, L; Rita Ribeiro
Predicting satisfaction: perceived decision quality by decision-makers in Web-based group decision support systems (2019)
Article in International Scientific Journal
João Carneiro; Pedro Saraiva; Luís Conceição; Ricardo Santos; Goreti Marreiros; Paulo Novais

See all (17)

Recommend this page Top
Copyright 1996-2024 © Faculdade de Economia da Universidade do Porto  I Terms and Conditions  I Acessibility  I Index A-Z  I Guest Book
Page created on: 2024-08-22 at 16:16:21 | Acceptable Use Policy | Data Protection Policy | Complaint Portal
SAMA2