Sample re-weighting strategies provide a promising mechanism to deal with imperfect training data in machine learning, such as noisily labeled or class-imbalanced data. One such strategy involves formulating a bi-level optimization problem called the meta re-weighting problem, whose goal is to optimize performance on a small set of perfect pivotal samples, called meta samples. Many approaches have been proposed to efficiently solve this problem. However, all of them assume that a perfect meta sample set is already provided while we observe that the selections of meta sample set is performance-critical. In this paper, we study how to learn to identify such a meta sample set from a large, imperfect training set, that is subsequently cleaned a...
Machine learning has been facing significant challenges over the last years, much of which stem from...
Leveraging weak or noisy supervision for building effective machine learning models has long been an...
The field of artificial intelligence has been throughout its history repeatedly inspired by human co...
The field of machine learning has seen explosive growth over the past decade, largely due to increas...
The field of machine learning (ML) has seen explosive growth over the past decade, largely due to in...
We present a novel framework that applies a meta-learning approach to clustering algorithms. Given a...
One popular approach for imbalance learning is weighting samples in rare classes with high cost and ...
National audienceThe success of machine learning approaches to solving real-world problems motivated...
The selection of a meta-learner determines the success of a stacked ensemble as the meta-learner is ...
Undersampling has been widely used in the class-imbalance learning area. The main deficiency of most...
Abstract—Existing attempts to improve the performance of AdaBoost on imbalanced datasets have largel...
In this paper, we present a novel meta-feature generation method in the context of meta-learning, wh...
Feature screening is an important and challenging topic in current class-imbalance learning. Most of...
[[abstract]]It is difficult for learning models to achieve high classification performances with imb...
One of the fundamental assumptions of machine learning is that learnt models are applied to data th...
Machine learning has been facing significant challenges over the last years, much of which stem from...
Leveraging weak or noisy supervision for building effective machine learning models has long been an...
The field of artificial intelligence has been throughout its history repeatedly inspired by human co...
The field of machine learning has seen explosive growth over the past decade, largely due to increas...
The field of machine learning (ML) has seen explosive growth over the past decade, largely due to in...
We present a novel framework that applies a meta-learning approach to clustering algorithms. Given a...
One popular approach for imbalance learning is weighting samples in rare classes with high cost and ...
National audienceThe success of machine learning approaches to solving real-world problems motivated...
The selection of a meta-learner determines the success of a stacked ensemble as the meta-learner is ...
Undersampling has been widely used in the class-imbalance learning area. The main deficiency of most...
Abstract—Existing attempts to improve the performance of AdaBoost on imbalanced datasets have largel...
In this paper, we present a novel meta-feature generation method in the context of meta-learning, wh...
Feature screening is an important and challenging topic in current class-imbalance learning. Most of...
[[abstract]]It is difficult for learning models to achieve high classification performances with imb...
One of the fundamental assumptions of machine learning is that learnt models are applied to data th...
Machine learning has been facing significant challenges over the last years, much of which stem from...
Leveraging weak or noisy supervision for building effective machine learning models has long been an...
The field of artificial intelligence has been throughout its history repeatedly inspired by human co...