One of the four basic machine learning tasks is pattern classification. The selection of the proper learning algorithm for a given problem is a challenging task, formally known as the algorithm selection problem (ASP). In particular, we are interested in the behavior of the associative classifiers derived from Alpha-Beta models applied to the financial field. In this paper, the behavior of four associative classifiers was studied: the One-Hot version of the Hybrid Associative Classifier with Translation (CHAT-OHM), the Extended Gamma (EG), the Naïve Associative Classifier (NAC), and the Assisted Classification for Imbalanced Datasets (ACID). To establish the performance, we used the area under the curve (AUC), F-score, and geometric mean me...
Association rule mining is a data mining technique that reveals interesting relationships in a datab...
Data mining algorithms have been applied in industries, government, military, retail, banking and ed...
The aim of this paper is to evaluate the results in term of misclassification rate of two classifica...
The following thesis explores the impact of the dataset distributional prop- erties on classificatio...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
Research carried out by the scientific community has shown that the performance of the classifiers d...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In our master thesis, we compare ten classification algorithms for credit scor- ing. Their predictio...
Associative memories have emerged as a powerful computational neural network model for several patte...
Discretization is the process of converting numerical values into categorical values. Contemporary l...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...
This research uses four classification algorithms in standard and boosted forms to predict members o...
Abstract:- Supervised learning plays a significant role in predicting the behavior of new data, base...
Association rule mining is a data mining technique that reveals interesting relationships in a datab...
Data mining algorithms have been applied in industries, government, military, retail, banking and ed...
The aim of this paper is to evaluate the results in term of misclassification rate of two classifica...
The following thesis explores the impact of the dataset distributional prop- erties on classificatio...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
Research carried out by the scientific community has shown that the performance of the classifiers d...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In our master thesis, we compare ten classification algorithms for credit scor- ing. Their predictio...
Associative memories have emerged as a powerful computational neural network model for several patte...
Discretization is the process of converting numerical values into categorical values. Contemporary l...
[[abstract]]This study focuses on predicting whether a credit applicant can be categorized as good, ...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...
This research uses four classification algorithms in standard and boosted forms to predict members o...
Abstract:- Supervised learning plays a significant role in predicting the behavior of new data, base...
Association rule mining is a data mining technique that reveals interesting relationships in a datab...
Data mining algorithms have been applied in industries, government, military, retail, banking and ed...
The aim of this paper is to evaluate the results in term of misclassification rate of two classifica...