Some data analysis applications comprise datasets, where explanatory variables are expensive or tedious to acquire, but auxiliary data are readily available and might help to construct an insightful training set. An example is neuroimaging research on mental disorders, specifically learning a diagnosis/prognosis model based on variables derived from expensive Magnetic Resonance Imaging (MRI) scans, which often requires large sample sizes. Auxiliary data, such as demographics, might help in selecting a smaller sample that comprises the individuals with the most informative MRI scans. In active learning literature, this problem has not yet been studied, despite promising results in related problem settings that concern the selection of instan...
LDA feature selection (a) selects 192 features with most being relative PSD band features and standa...
The general approach for automatically driving data collection using information from previously ac...
The recent Chu et al. (2012) manuscript discusses two key findings regarding feature selection (FS):...
In some machine learning applications, obtaining data on the most predictive features is costly, but...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
The amount of information in the form of features and variables avail-able to machine learning algor...
In various classification problems characterized by a large number of features, feature selection (F...
Feature selection, as a preprocessing step to machine learning, has been very effective in reducing\...
Abstract. An improved active learning method taking advantage of feature selection technique is prop...
AbstractFeature selection, as a preprocessing step to machine learning, has been very effective in r...
Hasenjäger M. Active data selection in supervised and unsupervised learning. Bielefeld: Bielefeld Un...
In this paper we present two very popular aspects in supervised Machine Learning algorithms: feature...
The general approach for automatically driving data collection using information from previously acq...
Classification is one of the most important tasks in machine learning. Due to feature redundancy or ...
Data dimensionality is growing exponentially, which poses chal-lenges to the vast majority of existi...
LDA feature selection (a) selects 192 features with most being relative PSD band features and standa...
The general approach for automatically driving data collection using information from previously ac...
The recent Chu et al. (2012) manuscript discusses two key findings regarding feature selection (FS):...
In some machine learning applications, obtaining data on the most predictive features is costly, but...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
The amount of information in the form of features and variables avail-able to machine learning algor...
In various classification problems characterized by a large number of features, feature selection (F...
Feature selection, as a preprocessing step to machine learning, has been very effective in reducing\...
Abstract. An improved active learning method taking advantage of feature selection technique is prop...
AbstractFeature selection, as a preprocessing step to machine learning, has been very effective in r...
Hasenjäger M. Active data selection in supervised and unsupervised learning. Bielefeld: Bielefeld Un...
In this paper we present two very popular aspects in supervised Machine Learning algorithms: feature...
The general approach for automatically driving data collection using information from previously acq...
Classification is one of the most important tasks in machine learning. Due to feature redundancy or ...
Data dimensionality is growing exponentially, which poses chal-lenges to the vast majority of existi...
LDA feature selection (a) selects 192 features with most being relative PSD band features and standa...
The general approach for automatically driving data collection using information from previously ac...
The recent Chu et al. (2012) manuscript discusses two key findings regarding feature selection (FS):...