<p>The upper number in each entry of the matrix is the average number of actual recognised classes in testing mode; the bottom one (its percentage) refers to the total number of cases used in testing (251). The diagonal entries of the matrix represent the mean quantities of the properly recognised cases (the upper value) and also their ratios with respect to the total representation of all testing data (the lower values are expressed as a percentage). Each entry outside the diagonal indicates an error (the number of misclassifications and its relative value). The last column of the matrix represents the total percentage measure of accuracy of actual recognition for the class indicated by the classifier. The upper number in this column repre...
<p>The rows of the matrix indicate the actual roughness provided to the participants and the columns...
<p>The confusion matrices of the unsupervised, semi-supervised, and supervised MTBNs for prediction ...
<p>Confusion matrix of the classification results using a NaiveBayes classifier and cross validation...
Confusion matrix for the best classification model, which corresponded to a neural network with four...
<p>The parameters of the matrix are analogous to those in <a href="http://www.plosone.org/article/in...
The correctly classified data is reflected along the diagonal regions. The misclassified is reflecte...
<p>Each row represents the actual variety and in which one was classified. Bolded values (diagonal o...
<p>The rows of this matrix indicate the groups of the subjects (ground truth), and the columns indic...
Confusion matrix showing the results of the testing phase for the AlexNet neural network.</p
Classifications of the validation data (columns) are compared to the ground truth (rows). Numbers ar...
The area of each square represents the value of each matrix entry. Values are counts averaged across...
Confusion matrix showing the results of the testing phase for the LeNet neural network.</p
Since each classifier distinguishes between the desired class and every “other” class, the confusion...
<p>Each row represents the actual variety and in which one was classified. Bolded values (diagonal o...
Confusion matrix showing the results of the testing phase for the GoogLeNet neural network.</p
<p>The rows of the matrix indicate the actual roughness provided to the participants and the columns...
<p>The confusion matrices of the unsupervised, semi-supervised, and supervised MTBNs for prediction ...
<p>Confusion matrix of the classification results using a NaiveBayes classifier and cross validation...
Confusion matrix for the best classification model, which corresponded to a neural network with four...
<p>The parameters of the matrix are analogous to those in <a href="http://www.plosone.org/article/in...
The correctly classified data is reflected along the diagonal regions. The misclassified is reflecte...
<p>Each row represents the actual variety and in which one was classified. Bolded values (diagonal o...
<p>The rows of this matrix indicate the groups of the subjects (ground truth), and the columns indic...
Confusion matrix showing the results of the testing phase for the AlexNet neural network.</p
Classifications of the validation data (columns) are compared to the ground truth (rows). Numbers ar...
The area of each square represents the value of each matrix entry. Values are counts averaged across...
Confusion matrix showing the results of the testing phase for the LeNet neural network.</p
Since each classifier distinguishes between the desired class and every “other” class, the confusion...
<p>Each row represents the actual variety and in which one was classified. Bolded values (diagonal o...
Confusion matrix showing the results of the testing phase for the GoogLeNet neural network.</p
<p>The rows of the matrix indicate the actual roughness provided to the participants and the columns...
<p>The confusion matrices of the unsupervised, semi-supervised, and supervised MTBNs for prediction ...
<p>Confusion matrix of the classification results using a NaiveBayes classifier and cross validation...