The paper presents a new proposal for a single overall measure, the diagonal modified confusion entropy (DMCEN), to assess the performance of class-models jointly computed for several classes, a versatile index regarding sensitivity and specificity, and that supports class weighting. The characteristics of the proposed figure of merit are illustrated as against other usual performance measures and show how the index is more sensitive to the variations in the class-models than similar published indexes. Besides, a benchmark value representing a random modelling is also defined for DMCEN to be used as initial level to assess the quality of the built class-models. Furthermore, systematic comparisons have been conducted by using the de...
Multi-label classifiers allow us to predict the state of a set of responses using a single model. A ...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
ABSTRACT: This paper dealswith the sensitivity analysis ofmodel output, using entropy. By the past, ...
We develop two tools to analyze the behavior of multiple-class, or multi-class, classifiers by means...
Different performance measures are used to assess the behaviour, and to carry out the comparison, of...
In the machine learning literature we can find numerous methods to solve classification problems. We...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
For evaluating the classification model of an information system, a proper measure is usually needed...
In 2010, a new performance measure to evaluate the results obtained by algorithms of data classifica...
Linear classifiers separate the data with a hyperplane. In this paper we focus on the novel method o...
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...
Performance evaluation is decisive when improving classifiers. Accuracy alone is insufficient becaus...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
Multi-label classifiers allow us to predict the state of a set of responses using a single model. A ...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
ABSTRACT: This paper dealswith the sensitivity analysis ofmodel output, using entropy. By the past, ...
We develop two tools to analyze the behavior of multiple-class, or multi-class, classifiers by means...
Different performance measures are used to assess the behaviour, and to carry out the comparison, of...
In the machine learning literature we can find numerous methods to solve classification problems. We...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
For evaluating the classification model of an information system, a proper measure is usually needed...
In 2010, a new performance measure to evaluate the results obtained by algorithms of data classifica...
Linear classifiers separate the data with a hyperplane. In this paper we focus on the novel method o...
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...
Performance evaluation is decisive when improving classifiers. Accuracy alone is insufficient becaus...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
Multi-label classifiers allow us to predict the state of a set of responses using a single model. A ...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
ABSTRACT: This paper dealswith the sensitivity analysis ofmodel output, using entropy. By the past, ...