Equally partitioned data are essential for prediction. However, in some important cases, the data distribution is severely unbalanced. In this study, several algorithms are utilized to maximize the learning accuracy when dealing with a highly unbalanced dataset. A linguistic algorithm is applied to evaluate the input and output relationship, namely Fuzzy c-Means (FCM), which is applied as a clustering algorithm for the majority class to balance the minority class data from about 3 million cases. Each cluster is used to train several artificial neural network (ANN) models. Different techniques are applied to generate an ensemble genetic fuzzy neuro model (EGFNM) in order to select the models. The first ensemble technique, the intra-cluster E...
Sampling strategies which have very significant role on examining data characteristics (i.e. imbalan...
In the last decades ensemble learning has established itself as a valuable strategy within the compu...
This work proposes a unified neurofuzzy modelling scheme. To begin with, the initial fuzzy base const...
: Equally partitioned data is essential for prediction. However, in some important cases, the data d...
Equally partitioned data are essential for prediction. However, in some important cases, the data di...
One of the standard approaches for data analysis in unsupervised machine learning techniques is clus...
Recently, fuzzy adaptive resonance theory mapping (ARTMAP) neural networks are applied to solving co...
Abstract — An Adaptive-Network-based Fuzzy Inference System ANFIS with different techniques of clust...
Unsupervised learning based clustering methods are gaining importance in the field of data analytics...
Artificial intelligence has become the backbone of modern decision support systems. This is why a co...
Abstract — Classification in imbalanced domains is an important problem in Data Mining. We refer to ...
Neural fuzzy system is a hybrid intelligent system that synergizes artificial neural network and fuz...
Artificial intelligence has become the backbone of modern decision support systems. This is why a co...
for by 22 alg on the fuzzy entropy clustering (FEC), the modified particle swarm optimization (MPSO)...
Classification of datasets with imbalanced sample distributions has always been a challenge. In gene...
Sampling strategies which have very significant role on examining data characteristics (i.e. imbalan...
In the last decades ensemble learning has established itself as a valuable strategy within the compu...
This work proposes a unified neurofuzzy modelling scheme. To begin with, the initial fuzzy base const...
: Equally partitioned data is essential for prediction. However, in some important cases, the data d...
Equally partitioned data are essential for prediction. However, in some important cases, the data di...
One of the standard approaches for data analysis in unsupervised machine learning techniques is clus...
Recently, fuzzy adaptive resonance theory mapping (ARTMAP) neural networks are applied to solving co...
Abstract — An Adaptive-Network-based Fuzzy Inference System ANFIS with different techniques of clust...
Unsupervised learning based clustering methods are gaining importance in the field of data analytics...
Artificial intelligence has become the backbone of modern decision support systems. This is why a co...
Abstract — Classification in imbalanced domains is an important problem in Data Mining. We refer to ...
Neural fuzzy system is a hybrid intelligent system that synergizes artificial neural network and fuz...
Artificial intelligence has become the backbone of modern decision support systems. This is why a co...
for by 22 alg on the fuzzy entropy clustering (FEC), the modified particle swarm optimization (MPSO)...
Classification of datasets with imbalanced sample distributions has always been a challenge. In gene...
Sampling strategies which have very significant role on examining data characteristics (i.e. imbalan...
In the last decades ensemble learning has established itself as a valuable strategy within the compu...
This work proposes a unified neurofuzzy modelling scheme. To begin with, the initial fuzzy base const...