Supervised learning methods aimed at performing precise predictions by learning from labeled training data. Unfortunately, training data can contain noisy or wrong information, specially when they come from real-world applications. In this scenario, applying a so-called training set selection procedure on data can lead to improve the performance of the supervised learning methods used for classification or regression tasks. In literature, several training set selection techniques have been proposed, but, to the best of our knowledge, few software tools implement this procedure. Moreover, all of them require programming capabilities or software package installation what makes their use difficult for people without specific computer skills. T...
The traditional techniques rely on human effort to acquire training sets, which is expensive and ine...
The design of the training stage of a supervised classification should account for the properties of...
One of the core objectives of machine learning is to instruct computers to use data or past experien...
Supervised learning methods aimed at performing precise predictions by learning from labeled trainin...
The traditional techniques rely on human effort to acquire training sets, which is expensive and ine...
It has been our experience that in order to obtain useful results using supervised learning of real-...
The Training Data Selector (TDS) allows a user to select training data that can then be used to trai...
The Training Data Selector (TDS) allows a user to select training data that can then be used to trai...
Feature subset selection is the process of identifying and removing from a training data set as much...
One of the most pervasive challenges in adopting machine or deep learning is the scarcity of trainin...
International audienceIn this paper, we propose a new unsupervised and automatic method for the sele...
Abstract – Classification in data mining has gained a lot of importance in literature and it has a g...
Conventional approaches to training a supervised image classification aim to fully describe all of t...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
Model selection is one of the most central tasks in supervised learning. Validation set methods are ...
The traditional techniques rely on human effort to acquire training sets, which is expensive and ine...
The design of the training stage of a supervised classification should account for the properties of...
One of the core objectives of machine learning is to instruct computers to use data or past experien...
Supervised learning methods aimed at performing precise predictions by learning from labeled trainin...
The traditional techniques rely on human effort to acquire training sets, which is expensive and ine...
It has been our experience that in order to obtain useful results using supervised learning of real-...
The Training Data Selector (TDS) allows a user to select training data that can then be used to trai...
The Training Data Selector (TDS) allows a user to select training data that can then be used to trai...
Feature subset selection is the process of identifying and removing from a training data set as much...
One of the most pervasive challenges in adopting machine or deep learning is the scarcity of trainin...
International audienceIn this paper, we propose a new unsupervised and automatic method for the sele...
Abstract – Classification in data mining has gained a lot of importance in literature and it has a g...
Conventional approaches to training a supervised image classification aim to fully describe all of t...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
Model selection is one of the most central tasks in supervised learning. Validation set methods are ...
The traditional techniques rely on human effort to acquire training sets, which is expensive and ine...
The design of the training stage of a supervised classification should account for the properties of...
One of the core objectives of machine learning is to instruct computers to use data or past experien...