In instance-based learning, a training set is given to a classifier for classifying new instances. In practice, not all information in the training set is useful for classifiers. Therefore, it is convenient to discard irrelevant instances from the training set. This process is known as instance reduction, which is an important task for classifiers since through this process the time for classification or training could be reduced. Instance-based learning methods are often confronted with the difficulty of choosing the instances which must be stored to be used during an actual test. Storing too many instances may result in large memory requirements and slow execution speed. In this paper, first, a Distance-based Decision Surface (DDS) is pro...
This thesis concerns the problem of prototype reduction in instance-based learning. In order to deal...
The learning process consists of different steps: building a Training Set (TS), training the system,...
Over recent decades, database sizes have grown considerably. Larger sizes present new challenges, be...
The paper proposes a heuristic instance reduction algorithm as an approach to machine learning and k...
The basic nearest-neighbor rule generalizes well in many domains but has several shortcomings, inclu...
Instance-based learning algorithms are often required to choose which instances to store for use dur...
Instance reduction techniques are data preprocessing methods originally developed to enhance the nea...
Instance reduction techniques are data preprocessing methods originally developed to enhance the nea...
AbstractInstance selection is becoming increasingly relevant due to the huge amount of data that is ...
Instance-based learning is a machine learning method that classifies new examples by comparing them ...
ii Instance-based learning is a machine learning method that classifies new examples by comparing th...
Storing and using specific instances improves the performance of several supervised learning algorit...
The Reduction by Space Partitioning (RSP3) algorithm is a well-known data reduction technique. It su...
Fuzzy-rough set theory has been applied with much success to the problem of feature selection, where...
Abstract. Instance-based learning methods such as the nearest neigh-bor classifier have proven to pe...
This thesis concerns the problem of prototype reduction in instance-based learning. In order to deal...
The learning process consists of different steps: building a Training Set (TS), training the system,...
Over recent decades, database sizes have grown considerably. Larger sizes present new challenges, be...
The paper proposes a heuristic instance reduction algorithm as an approach to machine learning and k...
The basic nearest-neighbor rule generalizes well in many domains but has several shortcomings, inclu...
Instance-based learning algorithms are often required to choose which instances to store for use dur...
Instance reduction techniques are data preprocessing methods originally developed to enhance the nea...
Instance reduction techniques are data preprocessing methods originally developed to enhance the nea...
AbstractInstance selection is becoming increasingly relevant due to the huge amount of data that is ...
Instance-based learning is a machine learning method that classifies new examples by comparing them ...
ii Instance-based learning is a machine learning method that classifies new examples by comparing th...
Storing and using specific instances improves the performance of several supervised learning algorit...
The Reduction by Space Partitioning (RSP3) algorithm is a well-known data reduction technique. It su...
Fuzzy-rough set theory has been applied with much success to the problem of feature selection, where...
Abstract. Instance-based learning methods such as the nearest neigh-bor classifier have proven to pe...
This thesis concerns the problem of prototype reduction in instance-based learning. In order to deal...
The learning process consists of different steps: building a Training Set (TS), training the system,...
Over recent decades, database sizes have grown considerably. Larger sizes present new challenges, be...