Multiclass Learning (ML) requires a classifier to discriminate instances (objects) among several classes of an outcome (response) variable. Most of the proposed methods for ML do not consider that analyzing complex datasets requires the results to be easily interpretable. We refer to the Sequential Automatic Search of Subset of Classifiers (SASSC) algorithm as an approach able to find the right compromise between knowledge extraction and good prediction. SASSC is an iterative algorithm that works by building a taxonomy of classes in an ascendant manner: this is done by the solution of a multiclass problem obtained by decomposing it into several r-nary problems (r >> 2) in an agglomerative way. We consider the use of different classification...
Several researchers have proposed effective approaches for binary classification in the last years. ...
Instance-based learning algorithms are often required to choose which instances to store for use dur...
Multiclassifier systems, the focus of this article, provide scientists and data professionals with p...
Multiclass Learning (ML) requires a classifier to discriminate instances (objects) among several cla...
A method called Sequential Automatic Search of a Subset of Classifiers is hereby introduced to deal ...
A classification rule is performed to assign a class to new sample indi- viduals. Many times the num...
An algorithm detecting a classification model in the presence of a multiclass response is introduced...
Several real problems involve the classification of data into categories or classes. Given a data se...
The paper deals with multiclass learning from the perspective of analytically interpreting the resu...
Learning Classifier Systems (LCS) are a well-known machine learning method, producing sets of interp...
Treball realitzat a TELECOM ParisTech i EADS FranceMulti-class classification is the core issue of m...
Given a new dataset for classification in Machine Learning (ML), finding the best classification alg...
The pace of generating data in all areas is extremely high. This pace has been mounting the pressure...
Real-world problems often have multiple classes: text, speech, image, biological sequences. Algorith...
In many classification problems, neighbor data labels have inherent sequential relationships. Sequen...
Several researchers have proposed effective approaches for binary classification in the last years. ...
Instance-based learning algorithms are often required to choose which instances to store for use dur...
Multiclassifier systems, the focus of this article, provide scientists and data professionals with p...
Multiclass Learning (ML) requires a classifier to discriminate instances (objects) among several cla...
A method called Sequential Automatic Search of a Subset of Classifiers is hereby introduced to deal ...
A classification rule is performed to assign a class to new sample indi- viduals. Many times the num...
An algorithm detecting a classification model in the presence of a multiclass response is introduced...
Several real problems involve the classification of data into categories or classes. Given a data se...
The paper deals with multiclass learning from the perspective of analytically interpreting the resu...
Learning Classifier Systems (LCS) are a well-known machine learning method, producing sets of interp...
Treball realitzat a TELECOM ParisTech i EADS FranceMulti-class classification is the core issue of m...
Given a new dataset for classification in Machine Learning (ML), finding the best classification alg...
The pace of generating data in all areas is extremely high. This pace has been mounting the pressure...
Real-world problems often have multiple classes: text, speech, image, biological sequences. Algorith...
In many classification problems, neighbor data labels have inherent sequential relationships. Sequen...
Several researchers have proposed effective approaches for binary classification in the last years. ...
Instance-based learning algorithms are often required to choose which instances to store for use dur...
Multiclassifier systems, the focus of this article, provide scientists and data professionals with p...