Evaluating binary classifications is a pivotal task in statistics and machine learning, because it can influence decisions in multiple areas, including for example prognosis or therapies of patients in critical conditions. The scientific community has not agreed on a general-purpose statistical indicator for evaluating two-class confusion matrices (having true positives, true negatives, false positives, and false negatives) yet, even if advantages of the Matthews correlation coefficient (MCC) over accuracy and F1 score have already been shown.In this manuscript, we reaffirm that MCC is a robust metric that summarizes the classifier performance in a single value, if positive and negative cases are of equal importance. We compare MCC to other...
The performance of a binary classifier is described by a confusion matrix with four entries: the num...
The paper describes results of analytical and experimental analysis of seventeen functions used for ...
There are strong incentives to build classification systems that show outstanding performance on var...
To assess the quality of a binary classification, researchers often take advantage of a four-entry c...
To evaluate binary classifications and their confusion matrices, scientific researchers can employ s...
To assess the quality of a binary classification, researchers often take advantage of a four-entry 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...
The accuracy of a classification is fundamental to its interpretation, use and ultimately decision m...
This paper proposes a systematic benchmarking method called BenchMetrics to analyze and compare the ...
How can one meaningfully make a measurement, if the meter does not conform to any standard and its s...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
<p>It is seen that there is a much higher and more distinct peak for Dataset 1, supporting the infer...
Classification is a fundamental task in machine learning, and the principled design and evaluation o...
The performance of a binary classifier is described by a confusion matrix with four entries: the num...
The paper describes results of analytical and experimental analysis of seventeen functions used for ...
There are strong incentives to build classification systems that show outstanding performance on var...
To assess the quality of a binary classification, researchers often take advantage of a four-entry c...
To evaluate binary classifications and their confusion matrices, scientific researchers can employ s...
To assess the quality of a binary classification, researchers often take advantage of a four-entry 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...
The accuracy of a classification is fundamental to its interpretation, use and ultimately decision m...
This paper proposes a systematic benchmarking method called BenchMetrics to analyze and compare the ...
How can one meaningfully make a measurement, if the meter does not conform to any standard and its s...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
We show that the Confusion Entropy, a measure of performance in multiclass problems has a strong (mo...
<p>It is seen that there is a much higher and more distinct peak for Dataset 1, supporting the infer...
Classification is a fundamental task in machine learning, and the principled design and evaluation o...
The performance of a binary classifier is described by a confusion matrix with four entries: the num...
The paper describes results of analytical and experimental analysis of seventeen functions used for ...
There are strong incentives to build classification systems that show outstanding performance on var...