To assess the quality of a binary classification, researchers often take advantage of a four-entry contingency table called confusion matrix, containing true positives, true negatives, false positives, and false negatives. To recap the four values of a confusion matrix in a unique score, researchers and statisticians have developed several rates and metrics. In the past, several scientific studies already showed why the Matthews correlation coefficient (MCC) is more informative and trustworthy than confusion-entropy error, accuracy, F1 score, bookmaker informedness, markedness, and balanced accuracy. In this study, we compare the MCC with the diagnostic odds ratio (DOR), a statistical rate employed sometimes in biomedical sciences. After ex...
Paper presented at the 4th Strathmore International Mathematics Conference (SIMC 2017), 19 - 23 June...
Agreement measures are useful tools to both compare different evaluations of the same diagnostic out...
Medical researchers have solved the problem of estimating the sensitivity and specificity of binary ...
To assess the quality of a binary classification, researchers often take advantage of a four-entry c...
Evaluating binary classifications is a pivotal task in statistics and machine learning, because it c...
Even if measuring the outcome of binary classifications is a pivotal task in machine learning and st...
Even if measuring the outcome of binary classifications is a pivotal task in machine learning and st...
To evaluate binary classifications and their confusion matrices, scientific researchers can employ s...
The accuracy of a classification is fundamental to its interpretation, use and ultimately decision m...
<p>It is seen that there is a much higher and more distinct peak for Dataset 1, supporting the infer...
An equivalence between the J statistic (Jack Youden, 1950) and the Kappa statistic (K), Cohen (1960)...
The performance of a binary classifier is described by a confusion matrix with four entries: the num...
Background: Diagnostic reviews often include the sensitivity/specificity results of individual studi...
We give a brief overview over common performance measures for binary classification. We cover sensit...
A marker that is strongly associated with outcome (or disease) is often assumed to be effective for ...
Paper presented at the 4th Strathmore International Mathematics Conference (SIMC 2017), 19 - 23 June...
Agreement measures are useful tools to both compare different evaluations of the same diagnostic out...
Medical researchers have solved the problem of estimating the sensitivity and specificity of binary ...
To assess the quality of a binary classification, researchers often take advantage of a four-entry c...
Evaluating binary classifications is a pivotal task in statistics and machine learning, because it c...
Even if measuring the outcome of binary classifications is a pivotal task in machine learning and st...
Even if measuring the outcome of binary classifications is a pivotal task in machine learning and st...
To evaluate binary classifications and their confusion matrices, scientific researchers can employ s...
The accuracy of a classification is fundamental to its interpretation, use and ultimately decision m...
<p>It is seen that there is a much higher and more distinct peak for Dataset 1, supporting the infer...
An equivalence between the J statistic (Jack Youden, 1950) and the Kappa statistic (K), Cohen (1960)...
The performance of a binary classifier is described by a confusion matrix with four entries: the num...
Background: Diagnostic reviews often include the sensitivity/specificity results of individual studi...
We give a brief overview over common performance measures for binary classification. We cover sensit...
A marker that is strongly associated with outcome (or disease) is often assumed to be effective for ...
Paper presented at the 4th Strathmore International Mathematics Conference (SIMC 2017), 19 - 23 June...
Agreement measures are useful tools to both compare different evaluations of the same diagnostic out...
Medical researchers have solved the problem of estimating the sensitivity and specificity of binary ...