Feature selection plays an important role in machine learning or data mining problems. Removing irrelevant features increases model accuracy and reduces the computational cost. However, selecting important features is not a simple task as one feature selection algorithm does not perform well on all the datasets that are of interest. This paper tries to address the recommendation of a feature selection algorithm based on dataset characteristics and quality. The research uses three types of dataset characteristics along with data quality metrics. The main contribution of the work is the utilization of Semantic Web techniques to develop a novel system that can aid in robust feature selection algorithm recommendations. The system’s strength lie...
In many datasets, there is a very large number of attributes (e.g. many thousands). Such datasets ca...
The high-dimensionality of Big Data poses challenges in data understanding and visualization. Furthe...
Attribute selection which is also known as feature selection is an essential process that is relevan...
Feature selection plays an important role in machine learning or data mining problems. Removing irre...
The Semantic Web emerged as an extension to the traditional Web, adding meaning (semantics) to a dis...
In Data Mining, during the preprocessing step, there is a considerable diversity of candidate algori...
The effectiveness of any machine learning algorithm depends, to a large extent, on the selection of ...
Feature selection is a key step in data mining. Unfortunately, there is no single feature selection ...
The increasing availability of data gatherable from various sources and in several contexts, is forc...
One major component of machine learning is feature analysis which comprises of mainly two processes:...
Feature selection is an important data pre-processing step that comes before applying a machine lear...
Feature selection is an important prerequisite of any pattern recognition, machine learning or data ...
In Data Mining, during the preprocessing step, there is a considerable diversity of candidate algori...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
In the current information-centric era, recommender systems are gaining momentum as tools able to as...
In many datasets, there is a very large number of attributes (e.g. many thousands). Such datasets ca...
The high-dimensionality of Big Data poses challenges in data understanding and visualization. Furthe...
Attribute selection which is also known as feature selection is an essential process that is relevan...
Feature selection plays an important role in machine learning or data mining problems. Removing irre...
The Semantic Web emerged as an extension to the traditional Web, adding meaning (semantics) to a dis...
In Data Mining, during the preprocessing step, there is a considerable diversity of candidate algori...
The effectiveness of any machine learning algorithm depends, to a large extent, on the selection of ...
Feature selection is a key step in data mining. Unfortunately, there is no single feature selection ...
The increasing availability of data gatherable from various sources and in several contexts, is forc...
One major component of machine learning is feature analysis which comprises of mainly two processes:...
Feature selection is an important data pre-processing step that comes before applying a machine lear...
Feature selection is an important prerequisite of any pattern recognition, machine learning or data ...
In Data Mining, during the preprocessing step, there is a considerable diversity of candidate algori...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
In the current information-centric era, recommender systems are gaining momentum as tools able to as...
In many datasets, there is a very large number of attributes (e.g. many thousands). Such datasets ca...
The high-dimensionality of Big Data poses challenges in data understanding and visualization. Furthe...
Attribute selection which is also known as feature selection is an essential process that is relevan...