The main objective of this research is to improve the predictive accuracy of classification in ordinal multiclass imbalanced scenario. The methodology attempts to uplift the classifier performance through synthesizing sophisticated objects of immature classes. A novel Adaptive Data Structure based Oversampling algorithm is proposed to create synthetic objects and Extreme Learning Machine for Ordinal Regression (ELMOP) classifier is adopted to validate our work. The proposed method generating new objects by analyzing the characteristics and intricacy of immature class objects. On the whole, the data set is divided into training and test data. Training data set is updated with new synthetic objects. The experimental analysis is performed on t...
Ordinal classification or ordinal regression is a classification problem in which the labels have an...
Ordinal classification problems can be found in various areas, such as product recommendation system...
This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) classes...
In the real world, multi-class ordinal data classification problems occur frequently. Most ordinal c...
In this paper, the well known stagewise additive modeling using a multiclass exponential (SAMME) boo...
In many applications, the dataset for classification may be highly imbalanced where most of the inst...
In this paper, the well known stagewise additive modeling using a multiclass exponential (SAMME) boo...
Machine learning methods for classification problems commonly assume that the class values are unord...
This paper considers the problem of ordinal classification of imbalanced data, i.e., the class distr...
Ordinal classification (OC) is an important niche of supervised pattern recognition, in which the cl...
Abstract. We show that classification rules used in ordinal regression are equivalent to a certain c...
Abstract. We show that classification rules used in ordinal regression are equivalent to a certain c...
We present a reduction framework from ordinal regression to binary classification based on extended ...
In recent years the introduction of aggregation methods led to many new techniques within the field ...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
Ordinal classification or ordinal regression is a classification problem in which the labels have an...
Ordinal classification problems can be found in various areas, such as product recommendation system...
This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) classes...
In the real world, multi-class ordinal data classification problems occur frequently. Most ordinal c...
In this paper, the well known stagewise additive modeling using a multiclass exponential (SAMME) boo...
In many applications, the dataset for classification may be highly imbalanced where most of the inst...
In this paper, the well known stagewise additive modeling using a multiclass exponential (SAMME) boo...
Machine learning methods for classification problems commonly assume that the class values are unord...
This paper considers the problem of ordinal classification of imbalanced data, i.e., the class distr...
Ordinal classification (OC) is an important niche of supervised pattern recognition, in which the cl...
Abstract. We show that classification rules used in ordinal regression are equivalent to a certain c...
Abstract. We show that classification rules used in ordinal regression are equivalent to a certain c...
We present a reduction framework from ordinal regression to binary classification based on extended ...
In recent years the introduction of aggregation methods led to many new techniques within the field ...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
Ordinal classification or ordinal regression is a classification problem in which the labels have an...
Ordinal classification problems can be found in various areas, such as product recommendation system...
This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) classes...