Monotone constraints are very common while dealing with multi-attribute ordinal problems. Grinding wheels hardness selection, timely replacements of costly laser sensors in silicon wafer manufacturing, and the selection of the right personnel for sensitive production facilities, are just a few examples of ordinal problems where monotonicity makes sense. In order to evaluate the performance of various ordinal classifiers one needs both artificially generated as well as real world data sets. Two algorithms are presented for generating monotone ordinal data sets. The first can be used for generating random monotone ordinal data sets without an underlying structure. The second algorithm, which is the main contribution of this paper, describes f...
In the real world, multi-class ordinal data classification problems occur frequently. Most ordinal c...
Machine learning methods for classification problems commonly assume that the class values are unord...
Monotonic classification is a kind of special task in machine learning and pattern recognition. Mono...
Monotone constraints are very common while dealing with multi-attribute ordinal problems. Grinding w...
One of the factors hindering the use of classification models in decision making is that their predi...
textabstractFor classification problems with ordinal attributes very often the class attribute shoul...
In many real world applications classification models are required to be in line with domain knowled...
Noise in multi-criteria data sets can manifest itself as non-monotonicity. Work on the remediation o...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
markdownabstract__Abstract__ Ordinal data sets often contain a certain amount of non-monotone noi...
Ordinal (i.e., ordered) classifiers are used to make judgments that we make on a regular basis, both...
textabstractThis paper focuses on the problem of monotone decision trees from the point of view of ...
Monotonic ordinal classification has received an increasing interest in the latest years. Building m...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
Ordinal classification (OC) is an important niche of supervised pattern recognition, in which the cl...
In the real world, multi-class ordinal data classification problems occur frequently. Most ordinal c...
Machine learning methods for classification problems commonly assume that the class values are unord...
Monotonic classification is a kind of special task in machine learning and pattern recognition. Mono...
Monotone constraints are very common while dealing with multi-attribute ordinal problems. Grinding w...
One of the factors hindering the use of classification models in decision making is that their predi...
textabstractFor classification problems with ordinal attributes very often the class attribute shoul...
In many real world applications classification models are required to be in line with domain knowled...
Noise in multi-criteria data sets can manifest itself as non-monotonicity. Work on the remediation o...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
markdownabstract__Abstract__ Ordinal data sets often contain a certain amount of non-monotone noi...
Ordinal (i.e., ordered) classifiers are used to make judgments that we make on a regular basis, both...
textabstractThis paper focuses on the problem of monotone decision trees from the point of view of ...
Monotonic ordinal classification has received an increasing interest in the latest years. Building m...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
Ordinal classification (OC) is an important niche of supervised pattern recognition, in which the cl...
In the real world, multi-class ordinal data classification problems occur frequently. Most ordinal c...
Machine learning methods for classification problems commonly assume that the class values are unord...
Monotonic classification is a kind of special task in machine learning and pattern recognition. Mono...