AbstractInstance selection is becoming increasingly relevant due to the huge amount of data that is constantly being produced in many fields of research. Although current algorithms are useful for fairly large datasets, scaling problems are found when the number of instances is in the hundreds of thousands or millions. When we face huge problems, scalability becomes an issue, and most algorithms are not applicable.Thus, paradoxically, instance selection algorithms are for the most part impracticable for the same problems that would benefit most from their use. This paper presents a way of avoiding this difficulty using several rounds of instance selection on subsets of the original dataset. These rounds are combined using a voting scheme to...
Ensemble selection has recently appeared as a popular ensemble learning method, not only because its...
Instance-based learning algorithms are often required to choose which instances to store for use dur...
The purpose of instance selection is to identify which instances (examples, patterns) in a large dat...
AbstractInstance selection is becoming increasingly relevant due to the huge amount of data that is ...
AbstractIn this paper the application of ensembles of instance selection algorithms to improve the q...
Instance selection is often performed as one of the preprocessing methods which, along with feature ...
Over recent decades, database sizes have grown considerably. Larger sizes present new challenges, be...
AbstractOver recent decades, database sizes have grown considerably. Larger sizes present new challe...
Aspects of a classifier\u27s training dataset can often make building a helpful and high accuracy cl...
Finding a small set of representative instances for large datasets can bring various benefits to dat...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
Abstract. This paper is an continuation of the accompanying paper with the same main title. The firs...
Multiple-instance learning (MIL) is a paradigm in supervised learning that deals with the classi-fic...
Multiple-instance Learning (MIL) is a new paradigm of supervised learning that deals with the classi...
Multiple instance learning (MIL) is a paradigm in supervised learning that deals with the classifica...
Ensemble selection has recently appeared as a popular ensemble learning method, not only because its...
Instance-based learning algorithms are often required to choose which instances to store for use dur...
The purpose of instance selection is to identify which instances (examples, patterns) in a large dat...
AbstractInstance selection is becoming increasingly relevant due to the huge amount of data that is ...
AbstractIn this paper the application of ensembles of instance selection algorithms to improve the q...
Instance selection is often performed as one of the preprocessing methods which, along with feature ...
Over recent decades, database sizes have grown considerably. Larger sizes present new challenges, be...
AbstractOver recent decades, database sizes have grown considerably. Larger sizes present new challe...
Aspects of a classifier\u27s training dataset can often make building a helpful and high accuracy cl...
Finding a small set of representative instances for large datasets can bring various benefits to dat...
When generating ensemble classifiers, selecting the best set of classifiers from the base classifier...
Abstract. This paper is an continuation of the accompanying paper with the same main title. The firs...
Multiple-instance learning (MIL) is a paradigm in supervised learning that deals with the classi-fic...
Multiple-instance Learning (MIL) is a new paradigm of supervised learning that deals with the classi...
Multiple instance learning (MIL) is a paradigm in supervised learning that deals with the classifica...
Ensemble selection has recently appeared as a popular ensemble learning method, not only because its...
Instance-based learning algorithms are often required to choose which instances to store for use dur...
The purpose of instance selection is to identify which instances (examples, patterns) in a large dat...