The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models with a given level of accuracy may have greater predictive power than models with higher accuracy. Despite optimizing classification error rate, high accuracy models may fail to capture crucial information transfer in the classification task. We present evidence of this behavior by means of a combinatorial analysis where every possible contingency matrix of 2, 3 and 4 classes classifiers are depicted on the entropy triangle, a more reliable information-theoretic tool for classification assessment. Motivated by this, we develop from first principles a measure of classification performance that takes into consideration the information learned by...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Evaluating binary classifications is a pivotal task in statistics and machine learning, because it c...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
In the machine learning literature we can find numerous methods to solve classification problems. We...
Although the conventional performance indexes, such as accuracy, are commonly used in classifier sel...
Categorical classifier performance is typically evaluated with respect to error rate, expressed as a...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...
From a machine learning perspective, information retrieval may be viewed as a problem of classifying...
We develop two tools to analyze the behavior of multiple-class, or multi-class, classifiers by means...
The paper presents a new proposal for a single overall measure, the diagonal modified confusion entr...
Classification is the allocation of an object to an existing category among several based on uncerta...
In an observational learning environment, rational agents with incomplete information may mimic the...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Evaluating binary classifications is a pivotal task in statistics and machine learning, because it c...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
In the machine learning literature we can find numerous methods to solve classification problems. We...
Although the conventional performance indexes, such as accuracy, are commonly used in classifier sel...
Categorical classifier performance is typically evaluated with respect to error rate, expressed as a...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...
From a machine learning perspective, information retrieval may be viewed as a problem of classifying...
We develop two tools to analyze the behavior of multiple-class, or multi-class, classifiers by means...
The paper presents a new proposal for a single overall measure, the diagonal modified confusion entr...
Classification is the allocation of an object to an existing category among several based on uncerta...
In an observational learning environment, rational agents with incomplete information may mimic the...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Evaluating binary classifications is a pivotal task in statistics and machine learning, because it c...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...