To select more effective feature genes, many existing algorithms focus on the selection and study of evaluation methods for feature genes, ignoring the accurate mapping of original information in data processing. Therefore, for solving this problem, a new model is proposed in this paper: rough uncertainty metric model. First, the fuzzy neighborhood granule of the sample is constructed by combining the fuzzy similarity relation with the neighborhood radius in the rough set, and the rough decision is defined by using the fuzzy similarity relation and the decision equivalence class. Then, the fuzzy neighborhood granule and the rough decision are introduced into the conditional entropy, and the rough uncertainty metric model is proposed; in the...
Selecting genes from microarray gene expression datasets has become an important research, because s...
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
Microarray gene expression data plays a prominent role in feature selection that helps in diagnosis ...
AbstractEstablishing a classification model for cancer recognition based on DNA microarrays is usefu...
Microarray gene expression data plays a prominent role in feature selection that helps in diagnosis ...
This Letter proposes a customised approach for attribute selection applied to the fuzzy rough quick ...
Cancer is one of the deadly diseases of human life. The patient may likely to survive if the disease...
Mammographie risk analysis is a useful means for the early diagnosis of breast cancer. There are man...
This study describes a novel approach to reducing the challenges of highly nonlinear multiclass gene...
Gene selection is of vital importance in molecular classification of cancer using high-dimensional g...
The information entropy developed by Shannon is an effective measure of uncertainty in data, and the...
The level of severity of brain tumor is captured through MRI and then assessed by the physician for ...
In the classification of cancer data sets, we note that they contain a number of additional features...
In this paper, a hybrid approach incorporating genetic algorithm and rough set theory into Feature S...
Background and Objectives: Cancer is one the major causes of mortality in today's world, an...
Selecting genes from microarray gene expression datasets has become an important research, because s...
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
Microarray gene expression data plays a prominent role in feature selection that helps in diagnosis ...
AbstractEstablishing a classification model for cancer recognition based on DNA microarrays is usefu...
Microarray gene expression data plays a prominent role in feature selection that helps in diagnosis ...
This Letter proposes a customised approach for attribute selection applied to the fuzzy rough quick ...
Cancer is one of the deadly diseases of human life. The patient may likely to survive if the disease...
Mammographie risk analysis is a useful means for the early diagnosis of breast cancer. There are man...
This study describes a novel approach to reducing the challenges of highly nonlinear multiclass gene...
Gene selection is of vital importance in molecular classification of cancer using high-dimensional g...
The information entropy developed by Shannon is an effective measure of uncertainty in data, and the...
The level of severity of brain tumor is captured through MRI and then assessed by the physician for ...
In the classification of cancer data sets, we note that they contain a number of additional features...
In this paper, a hybrid approach incorporating genetic algorithm and rough set theory into Feature S...
Background and Objectives: Cancer is one the major causes of mortality in today's world, an...
Selecting genes from microarray gene expression datasets has become an important research, because s...
The existing fuzzy rough set (FRS) models all believe that the decision attribute divides the sample...
Microarray gene expression data plays a prominent role in feature selection that helps in diagnosis ...