The presence of machine learning, data mining and related disciplines is increasingly evident in everyday environments. The support for the applications of learning techniques in topics related to economic risk assessment, among other financial topics of interest, is relevant for us as human beings. The content of this paper consists of a proposal of a new supervised learning algorithm and its application in real world datasets related to finance, called D1-NN (Dynamic 1-Nearest Neighbor). The D1-NN performance is competitive against the main state of the art algorithms in solving finance-related problems. The effectiveness of the new D1-NN classifier was compared against five supervised classifiers of the most important approaches (Bayes, ...
After the sub-prime mortgage crisis of 2007 and global crisis of 2008, credit risk analysis has beco...
In this thesis we focus on the NCA algorithm, which is a modification of k-nearest neighbors algorit...
Abstract:- Supervised learning plays a significant role in predicting the behavior of new data, base...
In this study, we present a new classifier that combines the distance-based algorithm K-Nearest Neig...
Summarization: The classification problem consists of using some known objects, usually described by...
This article focuses on supervised learning and reinforcement learning. These areas overlap most wit...
The article considers the binary classification problem of economic security objects on the credit i...
A professional neural structure is a variation of a deep neural association group and the K-means ne...
Financial risks have always been the topic of interest of researchers as well as investors. Therefor...
The nearest neighbor (NN) classifiers, especially the k-NN algorithm, are among the simplest and yet...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
Abstract — Bank plays the central role for the economic development world-wide. The failure and succ...
This paper discusses ideas for adaptive learning which can capture dynamic aspects of real-world dat...
Machine learning methods penetrate to applications in the analysis of financial data, particularly t...
Modern methods for classification analysis involve processes for “learning” to correctly assign elem...
After the sub-prime mortgage crisis of 2007 and global crisis of 2008, credit risk analysis has beco...
In this thesis we focus on the NCA algorithm, which is a modification of k-nearest neighbors algorit...
Abstract:- Supervised learning plays a significant role in predicting the behavior of new data, base...
In this study, we present a new classifier that combines the distance-based algorithm K-Nearest Neig...
Summarization: The classification problem consists of using some known objects, usually described by...
This article focuses on supervised learning and reinforcement learning. These areas overlap most wit...
The article considers the binary classification problem of economic security objects on the credit i...
A professional neural structure is a variation of a deep neural association group and the K-means ne...
Financial risks have always been the topic of interest of researchers as well as investors. Therefor...
The nearest neighbor (NN) classifiers, especially the k-NN algorithm, are among the simplest and yet...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
Abstract — Bank plays the central role for the economic development world-wide. The failure and succ...
This paper discusses ideas for adaptive learning which can capture dynamic aspects of real-world dat...
Machine learning methods penetrate to applications in the analysis of financial data, particularly t...
Modern methods for classification analysis involve processes for “learning” to correctly assign elem...
After the sub-prime mortgage crisis of 2007 and global crisis of 2008, credit risk analysis has beco...
In this thesis we focus on the NCA algorithm, which is a modification of k-nearest neighbors algorit...
Abstract:- Supervised learning plays a significant role in predicting the behavior of new data, base...