imbalanced-ensemble
Ensemble learner
A library that enables quick and efficient ensemble learning on imbalanced datasets through various over-/under-sampling methods and algorithms
🛠️ Class-imbalanced Ensemble Learning Toolbox. | 类别不平衡/长尾机器学习库
336 stars
8 watching
51 forks
Language: Python
last commit: 5 months ago
Linked from 1 awesome list
class-imbalanceclassificationdata-miningdata-scienceensembleensemble-imbalanced-learningensemble-learningensemble-modelimbalanced-classificationimbalanced-dataimbalanced-learninglong-tailmachine-learningmulti-class-classificationpythonpython3scikit-learnsklearn
Related projects:
Repository | Description | Stars |
---|---|---|
ikki407/stacking | A Python library implementing Stacked Generalization (Ensemble Learning) for combining multiple machine learning models to improve prediction accuracy. | 221 |
dialnd/imbalanced-algorithms | A collection of algorithms and implementations for handling imbalanced data in machine learning | 235 |
zackzikaixiao/fedgrab | A tool for training federated learning models with adaptive gradient balancing to handle class imbalance in multi-client scenarios. | 13 |
flennerhag/mlens | A Python library for building and training ensemble machine learning models | 847 |
mingruiliu-ml-lab/episode | An algorithm for Federated Learning with heterogeneous data, designed to optimize deep neural networks and improve performance | 2 |
xjtushujun/meta-weight-net | An implementation of a meta-learning algorithm to improve sample weighting in classification tasks with noisy labels. | 281 |
ron1818/phd_code | A collection of source code and supporting materials for a PhD study on ensemble learning methods and machine learning algorithms. | 45 |
reiinakano/xcessiv | A tool to automate the creation and optimization of stacked machine learning ensembles. | 1,267 |
benedekrozemberczki/shapley | An open-source Python library for evaluating and explaining the contribution of individual classifiers in machine learning ensembles. | 218 |
pengyang7881187/fedrl | Enabling multiple agents to learn from heterogeneous environments without sharing their knowledge or data | 54 |
zfancy/sfat | Combating heterogeneity in federated learning by combining adversarial training with client-wise slack during aggregation | 28 |
yamingguo98/fediir | An implementation of a federated learning algorithm that generalizes to out-of-distribution scenarios using implicit invariant relationships | 9 |
jianyizhang123/flop | An experiment comparing different federated learning approaches for image classification tasks with non-iid datasets. | 8 |
lyn1874/fedpvr | An implementation of a federated learning algorithm for handling heterogeneous data | 6 |
hyhmia/distrans | Improves federated learning models by addressing data heterogeneity through distributional transformation | 5 |