In this paper, a two-step supervised learning algorithm of a single layer feedforward Articial Neural Network (ANN) is proposed for solving imbalanced dataset problems. Levenberg Marquart backpropagation learning algorithm is utilized in the first step learning, while the second step learning mechanism is introduced by optimizing the decision threshold of the step function at the output layer of ANN using particle swarm optimization (PSO). After all the steps learning are accomplished, the best weights and decision threshold value are obtained to be used for testing process. Several imbalanced datasets, which are available in UCI Machine Learning Repository, are chosen as case study. The prediction performance is assessed by Geometric Mean ...
In this work, we developed a Selective Dynamic Sampling Approach (SDSA) to deal with the class imbal...
Abstract. The latest research in neural networks demonstrates that the class imbalance problem is a ...
The Graph Neural Network (GNN) has been widely used for graph data representation. However, the exis...
Customary characterization calculations can be constrained in their execution on exceedingly uneven ...
This thesis focuses on the study of machine learning and pattern recognition algorithms for imbalanc...
This paper presents a new learning approach for pattern classification applications involving imbala...
Many machine/deep-learning models have been introduced to perform data classification. • An open qu...
The problem of imbalanced data has a heavy impact on the performance of learning models. In the case...
While we attempt to develop the balanced error rate (BER) minimization learning framework for random...
In this paper, we analyze the reason for the slow rate of convergence of net output error when using...
Recently, fuzzy adaptive resonance theory mapping (ARTMAP) neural networks are applied to solving co...
Learning with imbalanced data sets is considered as one of the key topics in machine learning commun...
In general, the imbalanced dataset is a problem often found in health applications. In medical data ...
Data classification is one of the main issues in management science which took into account from dif...
The imbalance classification is a common problem in the field of data mining.In general,the skewed d...
In this work, we developed a Selective Dynamic Sampling Approach (SDSA) to deal with the class imbal...
Abstract. The latest research in neural networks demonstrates that the class imbalance problem is a ...
The Graph Neural Network (GNN) has been widely used for graph data representation. However, the exis...
Customary characterization calculations can be constrained in their execution on exceedingly uneven ...
This thesis focuses on the study of machine learning and pattern recognition algorithms for imbalanc...
This paper presents a new learning approach for pattern classification applications involving imbala...
Many machine/deep-learning models have been introduced to perform data classification. • An open qu...
The problem of imbalanced data has a heavy impact on the performance of learning models. In the case...
While we attempt to develop the balanced error rate (BER) minimization learning framework for random...
In this paper, we analyze the reason for the slow rate of convergence of net output error when using...
Recently, fuzzy adaptive resonance theory mapping (ARTMAP) neural networks are applied to solving co...
Learning with imbalanced data sets is considered as one of the key topics in machine learning commun...
In general, the imbalanced dataset is a problem often found in health applications. In medical data ...
Data classification is one of the main issues in management science which took into account from dif...
The imbalance classification is a common problem in the field of data mining.In general,the skewed d...
In this work, we developed a Selective Dynamic Sampling Approach (SDSA) to deal with the class imbal...
Abstract. The latest research in neural networks demonstrates that the class imbalance problem is a ...
The Graph Neural Network (GNN) has been widely used for graph data representation. However, the exis...