Supervised Machine Learning techniques can automatically extract information from a variety of multimedia sources, e.g., image, text, sound, video. But it produces imperfect results since the multimedia content can be misinterpreted. Errors are commonly measured using confusion matrices, encoding type I and II errors for each class. Non-expert users encounter difficulties in understanding and using confusion matrices. They need to be read both column- and row-wise, which is tedious and error prone, and their technical concepts need explanations. Further, the visualizations commonly use of complex metrics, e.g., Precision/Recall, F1 scores. These can be overwhelming and misleading for non-experts since they may be inappropriate for specific...
Abstract. In this paper, we discuss an approach to collect data on instances of user confusion durin...
Machine Learning techniques for automatic classification have reached a broad range of applications....
In real-world scenarios, typical visual recognition systems could fail under two major causes, i.e.,...
Supervised Machine Learning techniques can automatically extract information from a variety of multi...
Machine Learning techniques can automatically extract information from a variety of multimedia sourc...
Classifiers are applied in many domains where classification errors have significant implications. H...
Recent developments in machine learning applications are deeply concerned with the poor interpretabi...
Classifiers are applied in many domains where classification errors have significant implications. H...
The correctly classified data is reflected along the diagonal regions. The misclassified is reflecte...
In this work, we examine literature on creating visualizations for the performance of machine learni...
Since each classifier distinguishes between the desired class and every “other” class, the confusion...
Learning Classifier Systems (LCS) have not been widely applied to image recognition tasks due to the...
<p>The rows of the matrix indicate the actual roughness provided to the participants and the columns...
Educational data mining (EDM) using enhanced research methods are allowing researchers to effectivel...
When applying classifiers in real applications, the data imbalance often occurs when the number of e...
Abstract. In this paper, we discuss an approach to collect data on instances of user confusion durin...
Machine Learning techniques for automatic classification have reached a broad range of applications....
In real-world scenarios, typical visual recognition systems could fail under two major causes, i.e.,...
Supervised Machine Learning techniques can automatically extract information from a variety of multi...
Machine Learning techniques can automatically extract information from a variety of multimedia sourc...
Classifiers are applied in many domains where classification errors have significant implications. H...
Recent developments in machine learning applications are deeply concerned with the poor interpretabi...
Classifiers are applied in many domains where classification errors have significant implications. H...
The correctly classified data is reflected along the diagonal regions. The misclassified is reflecte...
In this work, we examine literature on creating visualizations for the performance of machine learni...
Since each classifier distinguishes between the desired class and every “other” class, the confusion...
Learning Classifier Systems (LCS) have not been widely applied to image recognition tasks due to the...
<p>The rows of the matrix indicate the actual roughness provided to the participants and the columns...
Educational data mining (EDM) using enhanced research methods are allowing researchers to effectivel...
When applying classifiers in real applications, the data imbalance often occurs when the number of e...
Abstract. In this paper, we discuss an approach to collect data on instances of user confusion durin...
Machine Learning techniques for automatic classification have reached a broad range of applications....
In real-world scenarios, typical visual recognition systems could fail under two major causes, i.e.,...