This article presents the study regarding the problem of dimensionality reduction in training data sets used for classification tasks performed by the probabilistic neural network (PNN). Two methods for this purpose are proposed. The first solution is based on the feature selection approach where a single decision tree and a random forest algorithm are adopted to select data features. The second solution relies on applying the feature extraction procedure which utilizes the principal component analysis algorithm. Depending on the form of the smoothing parameter, different types of PNN models are explored. The prediction ability of PNNs trained on original and reduced data sets is determined with the use of a 10-fold cross validation procedu...
This paper presents a novel probability neural network (PNN) that can classify the data for both con...
In image classification, various techniques have been developed to enhance the performance of princi...
"The curse of dimensionality" is pertinent to many learning algorithms, and it denotes the drastic r...
Abstract—This article presents the study regarding the prob-lem of dimensionality reduction in train...
This article presents the study regarding the problemof feature selection and representation in the ...
A novel neural network based method for feature extraction is proposed. The method achieves dimensio...
Abstract: In this paper, pnn with image and data processing techniques was employed to implement an ...
Machine learning consists in the creation and development of algorithms that allow a machine to lear...
With its potential, extensive data analysis is a vital part of biomedical applications and of medica...
The probabilistic neural network (PNN) is a special type of radial basis neural network used mainly ...
In this paper, two performances increasing methods for datasets which have a nonuniform class distri...
In this work, a training algorithm for probabilistic neural networks (PNN) is presented. The algorit...
Generally, medical dataset classification has become one of the biggest problems in data mining rese...
This work considers the applicability of applying the derivatives of stepwise linear regression mode...
Abstract. “The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes th...
This paper presents a novel probability neural network (PNN) that can classify the data for both con...
In image classification, various techniques have been developed to enhance the performance of princi...
"The curse of dimensionality" is pertinent to many learning algorithms, and it denotes the drastic r...
Abstract—This article presents the study regarding the prob-lem of dimensionality reduction in train...
This article presents the study regarding the problemof feature selection and representation in the ...
A novel neural network based method for feature extraction is proposed. The method achieves dimensio...
Abstract: In this paper, pnn with image and data processing techniques was employed to implement an ...
Machine learning consists in the creation and development of algorithms that allow a machine to lear...
With its potential, extensive data analysis is a vital part of biomedical applications and of medica...
The probabilistic neural network (PNN) is a special type of radial basis neural network used mainly ...
In this paper, two performances increasing methods for datasets which have a nonuniform class distri...
In this work, a training algorithm for probabilistic neural networks (PNN) is presented. The algorit...
Generally, medical dataset classification has become one of the biggest problems in data mining rese...
This work considers the applicability of applying the derivatives of stepwise linear regression mode...
Abstract. “The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes th...
This paper presents a novel probability neural network (PNN) that can classify the data for both con...
In image classification, various techniques have been developed to enhance the performance of princi...
"The curse of dimensionality" is pertinent to many learning algorithms, and it denotes the drastic r...