Abstract Background Various kinds of data mining algorithms are continuously raised with the development of related disciplines. The applicable scopes and their performances of these algorithms are different. Hence, finding a suitable algorithm for a dataset is becoming an important emphasis for biomedical researchers to solve practical problems promptly. Methods In this paper, seven kinds of sophisticated active algorithms, namely, C4.5, support vector machine, AdaBoost, k-nearest neighbor, naïve Bayes, random forest, and logistic regression, were selected as the research objects. The seven algorithms were applied to the 12 top-click UCI public datasets with the task of classification, and their performances were compared through induction...
Diseases chronic, including heart disease, cancer, diabetes, and obesity, are the main causes of mor...
Objective(s): This study addresses the comparison of classification models for diagnosing breast can...
Abstract: This paper presents a comparison among the classifiers FT, LMT, RandomForest, SimpleCart ...
This study evaluates the performance of classification techniques with the application of several so...
Data Mining refers to the process of digging into the data so that one can find out patterns and gai...
Availability of high dimensional biological datasets such as from gene expression, proteomic, and me...
Abstract. Biomedical datasets pose a unique challenge to machine learning and data mining algorithms...
Most of the healthcare organizations and medical research institutions store their patient's data di...
The goal of this master’s thesis is to identify and evaluate data mining algorithms which are common...
The process of extracting information from a dataset and transforming it into an understandable stru...
In this study we report the advances in supervised learning methods that have been devised to analyz...
Data mining is a non-trivial process of categorizing valid, novel, potentially useful and ultimately...
The availability of huge amounts of data resulted in great need of data mining technique in order to...
The idea of medical data mining is to extract hidden knowledge in medical field using data mining te...
Dataset size is considered a major concern in the medical domain, where lack of data is a common occ...
Diseases chronic, including heart disease, cancer, diabetes, and obesity, are the main causes of mor...
Objective(s): This study addresses the comparison of classification models for diagnosing breast can...
Abstract: This paper presents a comparison among the classifiers FT, LMT, RandomForest, SimpleCart ...
This study evaluates the performance of classification techniques with the application of several so...
Data Mining refers to the process of digging into the data so that one can find out patterns and gai...
Availability of high dimensional biological datasets such as from gene expression, proteomic, and me...
Abstract. Biomedical datasets pose a unique challenge to machine learning and data mining algorithms...
Most of the healthcare organizations and medical research institutions store their patient's data di...
The goal of this master’s thesis is to identify and evaluate data mining algorithms which are common...
The process of extracting information from a dataset and transforming it into an understandable stru...
In this study we report the advances in supervised learning methods that have been devised to analyz...
Data mining is a non-trivial process of categorizing valid, novel, potentially useful and ultimately...
The availability of huge amounts of data resulted in great need of data mining technique in order to...
The idea of medical data mining is to extract hidden knowledge in medical field using data mining te...
Dataset size is considered a major concern in the medical domain, where lack of data is a common occ...
Diseases chronic, including heart disease, cancer, diabetes, and obesity, are the main causes of mor...
Objective(s): This study addresses the comparison of classification models for diagnosing breast can...
Abstract: This paper presents a comparison among the classifiers FT, LMT, RandomForest, SimpleCart ...