In recent times, deep neural networks achieved outstanding predictive performance on various classification and pattern recognition tasks. However, many real-world prediction problems have ordinal response variables, and this ordering information is ignored by conventional classification losses such as the multi-category cross-entropy. Ordinal regression methods for deep neural networks address this. One such method is the CORAL method, which is based on an earlier binary label extension framework and achieves rank consistency among its output layer tasks by imposing a weight-sharing constraint. However, while earlier experiments showed that CORAL's rank consistency is beneficial for performance, {it is limited by a weight-sharing constrain...
The performance of medical image classification has been enhanced by deep convolutional neural netwo...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Diabetic Retinopathy (DR) has become one of the leading causes of vision impairment in working-aged ...
Currently, the use of deep learning for solving ordinal classification problems, where categories fo...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
Outcomes with a natural order commonly occur in prediction problems and often the available input da...
Ordinal regression (OR) is an important branch of supervised learning in between the multiclass clas...
Automatic classification tasks on structured data have been revolutionized by Convolutional Neural N...
Regression via classification (RvC) is a common method used for regression problems in deep learning...
We propose a new approach to conditional probability estimation for ordinal labels. First, we presen...
The problem of ordinal classification occurs in a large and growing number of areas. Some of the mos...
Pfannschmidt L, Jakob J, Biehl M, Tino P, Hammer B. Feature Relevance Bounds for Ordinal Regression....
This research presents the development of a new framework for analyzing ordered class data, commonly...
We present a reduction framework from ordinal regression to binary classification based on extended ...
In this work, we present a regression-based ordinal regression algorithm for supervised classificati...
The performance of medical image classification has been enhanced by deep convolutional neural netwo...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Diabetic Retinopathy (DR) has become one of the leading causes of vision impairment in working-aged ...
Currently, the use of deep learning for solving ordinal classification problems, where categories fo...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
Outcomes with a natural order commonly occur in prediction problems and often the available input da...
Ordinal regression (OR) is an important branch of supervised learning in between the multiclass clas...
Automatic classification tasks on structured data have been revolutionized by Convolutional Neural N...
Regression via classification (RvC) is a common method used for regression problems in deep learning...
We propose a new approach to conditional probability estimation for ordinal labels. First, we presen...
The problem of ordinal classification occurs in a large and growing number of areas. Some of the mos...
Pfannschmidt L, Jakob J, Biehl M, Tino P, Hammer B. Feature Relevance Bounds for Ordinal Regression....
This research presents the development of a new framework for analyzing ordered class data, commonly...
We present a reduction framework from ordinal regression to binary classification based on extended ...
In this work, we present a regression-based ordinal regression algorithm for supervised classificati...
The performance of medical image classification has been enhanced by deep convolutional neural netwo...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Diabetic Retinopathy (DR) has become one of the leading causes of vision impairment in working-aged ...