© 2014 IEEE. Many applications involve stream data with structural dependency, graph representations, and continuously increasing volumes. For these applications, it is very common that their class distributions are imbalanced with minority (or positive) samples being only a small portion of the population, which imposes significant challenges for learning models to accurately identify minority samples. This problem is further complicated with the presence of noise, because they are similar to minority samples and any treatment for the class imbalance may falsely focus on the noise and result in deterioration of accuracy. In this paper, we propose a classification model to tackle imbalanced graph streams with noise. Our method, graph ensemb...
In recent years, graph neural networks (GNNs) have achieved state-of-the-art performance for node cl...
Imbalanced data is ubiquitous in many real-world domains such as bioinformatics, call logs, cancer d...
International audienceIn machine learning, classifiers are typically susceptible to noise in the tra...
Recent years have witnessed an increasing number of applications involving data with structural depe...
Graph classification is becoming increasingly popular due to the rapidly rising applications involvi...
Graphs represent interconnected structures prevalent in a myriad of real-world scenarios. Effective ...
Class imbalance in graph data poses significant challenges for node classification. Existing methods...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
The class imbalance problem occurs when one class far outnumbers the other classes, causing most tra...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Graph Neural Networks (GNNs) have achieved unprecedented success in identifying categorical labels o...
In this paper, we study the problem of learning from concept drifting data streams with noise, where...
Imbalanced data might cause some issues in problem definition level, algorithm level, and data level...
© International Association of Engineers. Mining imbalanced data, which is also known as a class im...
This paper presents two adaptive ensemble sampling approaches for imbalanced learning: one is the un...
In recent years, graph neural networks (GNNs) have achieved state-of-the-art performance for node cl...
Imbalanced data is ubiquitous in many real-world domains such as bioinformatics, call logs, cancer d...
International audienceIn machine learning, classifiers are typically susceptible to noise in the tra...
Recent years have witnessed an increasing number of applications involving data with structural depe...
Graph classification is becoming increasingly popular due to the rapidly rising applications involvi...
Graphs represent interconnected structures prevalent in a myriad of real-world scenarios. Effective ...
Class imbalance in graph data poses significant challenges for node classification. Existing methods...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
The class imbalance problem occurs when one class far outnumbers the other classes, causing most tra...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Graph Neural Networks (GNNs) have achieved unprecedented success in identifying categorical labels o...
In this paper, we study the problem of learning from concept drifting data streams with noise, where...
Imbalanced data might cause some issues in problem definition level, algorithm level, and data level...
© International Association of Engineers. Mining imbalanced data, which is also known as a class im...
This paper presents two adaptive ensemble sampling approaches for imbalanced learning: one is the un...
In recent years, graph neural networks (GNNs) have achieved state-of-the-art performance for node cl...
Imbalanced data is ubiquitous in many real-world domains such as bioinformatics, call logs, cancer d...
International audienceIn machine learning, classifiers are typically susceptible to noise in the tra...