Feature selection is a key step in data mining. Unfortunately, there is no single feature selection method that is always the best and the data miner usually has to experiment with different methods using a trial and error approach, which can be time consuming and costly especially with very large datasets. Hence, this research aims to develop a meta learning framework that is able to learn about which feature selection methods work best for a given data set. The framework involves obtaining the characteristics of the data and then running alternative feature selection methods to obtain their performance. The characteristics, methods used and their performance provide the examples which are used by a learner to induce the meta knowledge whi...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
In this paper, we present a novel meta-feature generation method in the context of meta-learning, wh...
In this paper, we present a novel meta-feature generation method in the context of meta-learning, wh...
Knowledge discovery is the data mining task. Number of classification algorithms is present for know...
In Data Mining, during the preprocessing step, there is a considerable diversity of candidate algori...
In regression applications, there is no single algorithm which performs well with all data since the...
The task of selecting the most suitable classification algorithm for each data set under analysis is...
In Data Mining, during the preprocessing step, there is a considerable diversity of candidate algori...
Classification is a very vital task that is performed in machine learning. A technique used for clas...
This paper describes the use of meta-learning in the area of data mining. It describes the problems ...
In recent years, the task of selecting and tuning machine learning algorithms has been increasingly ...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
We explore the possibilities of meta-learning on data streams, in particular algorithm selection. In...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
In this paper, we present a novel meta-feature generation method in the context of meta-learning, wh...
In this paper, we present a novel meta-feature generation method in the context of meta-learning, wh...
Knowledge discovery is the data mining task. Number of classification algorithms is present for know...
In Data Mining, during the preprocessing step, there is a considerable diversity of candidate algori...
In regression applications, there is no single algorithm which performs well with all data since the...
The task of selecting the most suitable classification algorithm for each data set under analysis is...
In Data Mining, during the preprocessing step, there is a considerable diversity of candidate algori...
Classification is a very vital task that is performed in machine learning. A technique used for clas...
This paper describes the use of meta-learning in the area of data mining. It describes the problems ...
In recent years, the task of selecting and tuning machine learning algorithms has been increasingly ...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
We explore the possibilities of meta-learning on data streams, in particular algorithm selection. In...
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and ...
In this paper, we present a novel meta-feature generation method in the context of meta-learning, wh...
In this paper, we present a novel meta-feature generation method in the context of meta-learning, wh...