Elastic gradient boosting decision tree with adaptive iterations for concept drift adaptation

K Wang, J Lu, A Liu, Y Song, L Xiong, G Zhang - Neurocomputing, 2022 - Elsevier
As an excellent ensemble algorithm, Gradient Boosting Decision Tree (GBDT) has been
tested extensively with static data. However, real-world applications often involve dynamic …

Concept drift adaptation methods under the deep learning framework: A literature review

Q Xiang, L Zi, X Cong, Y Wang - Applied Sciences, 2023 - mdpi.com
With the advent of the fourth industrial revolution, data-driven decision making has also
become an integral part of decision making. At the same time, deep learning is one of the …

Diverse instance-weighting ensemble based on region drift disagreement for concept drift adaptation

A Liu, J Lu, G Zhang - … on neural networks and learning systems, 2020 - ieeexplore.ieee.org
Concept drift refers to changes in the distribution of underlying data and is an inherent
property of evolving data streams. Ensemble learning, with dynamic classifiers, has proved …

A segment-based drift adaptation method for data streams

Y Song, J Lu, A Liu, H Lu… - IEEE transactions on …, 2021 - ieeexplore.ieee.org
In concept drift adaptation, we aim to design a blind or an informed strategy to update our
best predictor for future data at each time point. However, existing informed drift adaptation …

Learning data streams with changing distributions and temporal dependency

Y Song, J Lu, H Lu, G Zhang - IEEE Transactions on Neural …, 2021 - ieeexplore.ieee.org
In a data stream, concept drift refers to unpredictable distribution changes over time, which
violates the identical-distribution assumption required by conventional machine learning …

Multi-stream concept drift self-adaptation using graph neural network

M Zhou, J Lu, Y Song, G Zhang - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
Concept drift is the phenomenon where the data distribution in a data stream changes over
time. It is a ubiquitous problem in the real-world, for example, a traffic accident would cause …

Concept drift adaptation by exploiting historical knowledge

Y Sun, K Tang, Z Zhu, X Yao - IEEE transactions on neural …, 2018 - ieeexplore.ieee.org
Incremental learning with concept drift has often been tackled by ensemble methods, where
models built in the past can be retrained to attain new models for the current data. Two …

Concept drift handling: A domain adaptation perspective

M Karimian, H Beigy - Expert Systems with Applications, 2023 - Elsevier
Data stream prediction is challenging when concepts drift, processing time, and memory
constraints come into account. Concept drift refers to changes in data distribution over time …

Concept drift adaptation by exploiting drift type

J Li, H Yu, Z Zhang, X Luo, S Xie - ACM Transactions on Knowledge …, 2024 - dl.acm.org
Concept drift is a phenomenon where the distribution of data streams changes over time.
When this happens, model predictions become less accurate. Hence, models built in the …

[PDF][PDF] Recent Advances in Concept Drift Adaptation Methods for Deep Learning.

L Yuan, H Li, B Xia, C Gao, M Liu, W Yuan, X You - IJCAI, 2022 - ijcai.org
Abstract In the “Big Data” age, the amount and distribution of data have increased wildly and
changed over time in various time-series-based tasks, eg weather prediction, network …