Feature Selection is the process of selecting a subset of relevant features (i.e. predictors) for use in the construction of predictive models. This paper proposes a hybrid feature selection approach to breast cancer diagnosis which combines a Genetic Algorithm (GA) with Mutual Information (MI) for selecting the best combination of cancer predictors, with maximal discriminative capability. The selected features are then input into a classifier to predict whether a patient has breast cancer. Using a publicly available breast cancer dataset, experiments were performed to evaluate the performance of the Genetic Algorithm based on the Mutual Information approach with two different machine learning classifiers, namely the k-Nearest Neighbor (KN...
In the classification of cancer data sets, we note that they contain a number of additional features...
This article addresses feature selection for breast cancer diagnosis. The present process contains a...
Breast cancer poses the greatest threat to human life and especially to women's life. Despite the pr...
Nowadays, breast cancer is the most frequent cancer among women. Early detection is a critical issue...
AbstractIn this paper we propose a novel Shapely Value Embedded Genetic Algorithm, called as SVEGA t...
Copyright © 2003 ACPSEM. All rights reserved. The document attached has been archived with permissio...
The advancements in intelligent systems have contributed tremendously to the fields of bioinformatic...
This chapter reviews and presents genetic algorithms and statistical methods based approach for earl...
Cancer is one of the leading causes of death in the world, which has increased over the past few yea...
Breast cancer is an important global health problem, and the most common type of cancer among women....
Breast cancer has replaced lung cancer as the number one cancer among women worldwide. In this paper...
The high dimensionality and sparsity of the microarray gene expression data make it challenging to a...
There is a massive amount of high dimensional data that is pervasive in the healthcare domain. Inter...
Breast cancer may cause a death due to the late diagnosis. A cheap and accurate tool for early detec...
Now a day, cancer is one of most common and internecine disease among all disease present in the wor...
In the classification of cancer data sets, we note that they contain a number of additional features...
This article addresses feature selection for breast cancer diagnosis. The present process contains a...
Breast cancer poses the greatest threat to human life and especially to women's life. Despite the pr...
Nowadays, breast cancer is the most frequent cancer among women. Early detection is a critical issue...
AbstractIn this paper we propose a novel Shapely Value Embedded Genetic Algorithm, called as SVEGA t...
Copyright © 2003 ACPSEM. All rights reserved. The document attached has been archived with permissio...
The advancements in intelligent systems have contributed tremendously to the fields of bioinformatic...
This chapter reviews and presents genetic algorithms and statistical methods based approach for earl...
Cancer is one of the leading causes of death in the world, which has increased over the past few yea...
Breast cancer is an important global health problem, and the most common type of cancer among women....
Breast cancer has replaced lung cancer as the number one cancer among women worldwide. In this paper...
The high dimensionality and sparsity of the microarray gene expression data make it challenging to a...
There is a massive amount of high dimensional data that is pervasive in the healthcare domain. Inter...
Breast cancer may cause a death due to the late diagnosis. A cheap and accurate tool for early detec...
Now a day, cancer is one of most common and internecine disease among all disease present in the wor...
In the classification of cancer data sets, we note that they contain a number of additional features...
This article addresses feature selection for breast cancer diagnosis. The present process contains a...
Breast cancer poses the greatest threat to human life and especially to women's life. Despite the pr...