Knowledge Discovery in Databases aims to extract new, interesting and potential useful patterns from large amounts of data. It is a complex process whose central point is data mining, which effectively builds models from data. Data type, quality and dimensionality are some factors which affect performance of data mining task. Since the high dimensionality of data can cause some troubles, as data overload, a possible solution could be its reduction. Sampling and filtering reduce the number of cases in a dataset, whereas features reduction can be achieved by feature selection. This paper aims to present a combined method for feature selection, where a filter based on correlation is applied on whole features set to find the relevant ones, and ...
Dimensionality reduction is a very important step in the data mining process. In this paper, we co...
AbstractThe field of machine learning deals with a huge amount of various algorithms, which are able...
With advanced computer technologies and their omnipresent usage, data accumulates in a speed unmatch...
Real world data is high-dimensional like images, speech signals containing multiple dimensions to re...
For knowledge gaining the dimensionality reduction is a significant technique. It has been observed ...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Huge amounts of data in educational datasets may cause the problem in producing quality data. Recent...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...
Machine learning methods are used to build models for classification and regression tasks, among oth...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
In most cases, a dataset obtained through observation, measurement, etc. cannot be directly used for...
The paper broadly discusses the data reduction and data transformation issues which are important ta...
During past few decades, researchers worked on data preprocessing techniques for the datasets. Data ...
summary:The purpose of feature selection in machine learning is at least two-fold - saving measureme...
Dimensionality reduction is a very important step in the data mining process. In this paper, we co...
AbstractThe field of machine learning deals with a huge amount of various algorithms, which are able...
With advanced computer technologies and their omnipresent usage, data accumulates in a speed unmatch...
Real world data is high-dimensional like images, speech signals containing multiple dimensions to re...
For knowledge gaining the dimensionality reduction is a significant technique. It has been observed ...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Huge amounts of data in educational datasets may cause the problem in producing quality data. Recent...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...
Machine learning methods are used to build models for classification and regression tasks, among oth...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
In most cases, a dataset obtained through observation, measurement, etc. cannot be directly used for...
The paper broadly discusses the data reduction and data transformation issues which are important ta...
During past few decades, researchers worked on data preprocessing techniques for the datasets. Data ...
summary:The purpose of feature selection in machine learning is at least two-fold - saving measureme...
Dimensionality reduction is a very important step in the data mining process. In this paper, we co...
AbstractThe field of machine learning deals with a huge amount of various algorithms, which are able...
With advanced computer technologies and their omnipresent usage, data accumulates in a speed unmatch...