Abstract:- In processing the medical data, choosing the optimal subset of features is important, not only to reduce the processing cost but also to improve the classification performance of the model built from the selected data. Rough Set method has been recognized to be one of the powerful tools in the medical feature selection. However, the high storage space and the time-consuming computation restrict its application. In this paper, we propose two new concepts: discernibility string and feature forest, and an efficient algorithm, the Feature Forest Based (FF-Based) algorithm, for generation of all reducts of a medical dataset. The algorithm consists of two phases: feature forest construction phase and disjunctive normal form computation...
Part 7: Fault DiagnosisInternational audiencePrimary liver cancer, one of the most common malignant ...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
Abstract In the design of classification models, irrelevant or noisy features are often generated. I...
Abstract- Medical datasets inevitably suffer from redundant and irrelevant attributes, which reduce ...
AbstractSelection of optimal features is an important area of research in medical data mining system...
Generally, medical dataset classification has become one of the biggest problems in data mining rese...
This paper presents a novel feature selection approach to deal with issues of high dimensionality in...
Technological advancements are increasing day by day in biomedical field. A huge amount of data has ...
AbstractThis paper presents a novel feature selection approach to deal with issues of high dimension...
The aim of this paper is to discuss about various feature selection algorithms applied on different ...
A huge amount of biological data has been collected which is related to cardiovascular disease in he...
The level of severity of brain tumor is captured through MRI and then assessed by the physician for ...
Abstract — Application of data mining techniques on medical databases is a challenging task consider...
AbstractIn the performance of data mining and knowledge discovery activities, rough set theory has b...
The objective of this research is to improve the breast cancer diagnosis performance by applying fea...
Part 7: Fault DiagnosisInternational audiencePrimary liver cancer, one of the most common malignant ...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
Abstract In the design of classification models, irrelevant or noisy features are often generated. I...
Abstract- Medical datasets inevitably suffer from redundant and irrelevant attributes, which reduce ...
AbstractSelection of optimal features is an important area of research in medical data mining system...
Generally, medical dataset classification has become one of the biggest problems in data mining rese...
This paper presents a novel feature selection approach to deal with issues of high dimensionality in...
Technological advancements are increasing day by day in biomedical field. A huge amount of data has ...
AbstractThis paper presents a novel feature selection approach to deal with issues of high dimension...
The aim of this paper is to discuss about various feature selection algorithms applied on different ...
A huge amount of biological data has been collected which is related to cardiovascular disease in he...
The level of severity of brain tumor is captured through MRI and then assessed by the physician for ...
Abstract — Application of data mining techniques on medical databases is a challenging task consider...
AbstractIn the performance of data mining and knowledge discovery activities, rough set theory has b...
The objective of this research is to improve the breast cancer diagnosis performance by applying fea...
Part 7: Fault DiagnosisInternational audiencePrimary liver cancer, one of the most common malignant ...
We examine feature selection algorithms for handling data sets with many features. We introduce the ...
Abstract In the design of classification models, irrelevant or noisy features are often generated. I...