In this paper we present two very popular aspects in supervised Machine Learning algorithms: feature selection and active learning paradigm. Feature selection algorithms are widely used in Machine Learning to reduce the feature space representing given data samples. Active learning is very popular supervised Machine Learning technique that has been effectively used in Text Classification tasks to reduce training time and achieve high accuracy with small labeling cost 1. Using feature selection integrated with active learning seems like a great idea as it combines faster learning with smaller feature space dimensionality. Though promising, we observe through various experiments that feature selection when integrated within active learning pr...
Active learning aims to train an accurate prediction model with minimum cost by labeling most inform...
Methods that learn from prior information about input features such as generalized expectation (GE) ...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
Abstract. An improved active learning method taking advantage of feature selection technique is prop...
We execute a careful study of the effects of feature selection and human feedback on features in act...
In machine learning the classification task is normally known as supervised learning. In supervised ...
Feature selection, as a preprocessing step to machine learning, has been very effective in reducing\...
AbstractFeature selection, as a preprocessing step to machine learning, has been very effective in r...
We extend the traditional active learning framework to include feedback on features in addition to l...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Despite the availability and ease of collecting a large amount of free, unlabeled data, the expensiv...
Some data analysis applications comprise datasets, where explanatory variables are expensive or tedi...
Hasenjäger M. Active data selection in supervised and unsupervised learning. Bielefeld: Bielefeld Un...
In machine learning, active learning refers to algorithms that autonomously select the data points f...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
Active learning aims to train an accurate prediction model with minimum cost by labeling most inform...
Methods that learn from prior information about input features such as generalized expectation (GE) ...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
Abstract. An improved active learning method taking advantage of feature selection technique is prop...
We execute a careful study of the effects of feature selection and human feedback on features in act...
In machine learning the classification task is normally known as supervised learning. In supervised ...
Feature selection, as a preprocessing step to machine learning, has been very effective in reducing\...
AbstractFeature selection, as a preprocessing step to machine learning, has been very effective in r...
We extend the traditional active learning framework to include feedback on features in addition to l...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Despite the availability and ease of collecting a large amount of free, unlabeled data, the expensiv...
Some data analysis applications comprise datasets, where explanatory variables are expensive or tedi...
Hasenjäger M. Active data selection in supervised and unsupervised learning. Bielefeld: Bielefeld Un...
In machine learning, active learning refers to algorithms that autonomously select the data points f...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
Active learning aims to train an accurate prediction model with minimum cost by labeling most inform...
Methods that learn from prior information about input features such as generalized expectation (GE) ...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...