A criterion, based on Bayes' theorem, is described that defines the optimal set of classes (a classification) for a given set of examples. This criterion is transformed into an equivalent minimum message length criterion with an intuitive information interpretation. This criterion does not require that the number of classes be specified in advance, this is determined by the data. The minimum message length criterion includes the message length required to describe the classes, so there is a built in bias against adding new classes unless they lead to a reduction in the message length required to describe the data. Unfortunately, the search space of possible classifications is too large to search exhaustively, so heuristic search methods, su...
We define an optimal class association rule set to be the minimum rule set with the same predictive ...
The extraction of optimal features, in a classification sense, is still quite challenging in the con...
This paper discusses the unsupervised learning problem. An important part of the unsupervised learni...
The fundamental theorem of statistical learning states that for binary classification prob-lems, any...
The problem of feature selection is critical in several areas of machine learning and data analysis ...
The task of inferring a set of classes and class descriptions most likely to explain a given data se...
The task of inferring a set of classes and class descriptions most likely to explain a given data se...
AbstractGoldʼs original paper on inductive inference introduced a notion of an optimal learner. Intu...
In fields such as medicine and drug discovery, the ultimate goal of a classification is not to guess...
It is rarely possible to use an optimal classifier. Often the classifier used for a specific problem...
Basic decisions, such as judging a person as a friend or foe, involve categorizing novel stimuli. Re...
International audienceMachine learning (ML) is ubiquitous in modern life. Since it is being deployed...
We develop an approach for automatically learning the optimal feature transformation for a given cla...
An important task in data mining is that of rule discovery in supervised data. Well-known examples i...
The purpose of this paper is to formulate decision rules for adapting the appropriate amount of inst...
We define an optimal class association rule set to be the minimum rule set with the same predictive ...
The extraction of optimal features, in a classification sense, is still quite challenging in the con...
This paper discusses the unsupervised learning problem. An important part of the unsupervised learni...
The fundamental theorem of statistical learning states that for binary classification prob-lems, any...
The problem of feature selection is critical in several areas of machine learning and data analysis ...
The task of inferring a set of classes and class descriptions most likely to explain a given data se...
The task of inferring a set of classes and class descriptions most likely to explain a given data se...
AbstractGoldʼs original paper on inductive inference introduced a notion of an optimal learner. Intu...
In fields such as medicine and drug discovery, the ultimate goal of a classification is not to guess...
It is rarely possible to use an optimal classifier. Often the classifier used for a specific problem...
Basic decisions, such as judging a person as a friend or foe, involve categorizing novel stimuli. Re...
International audienceMachine learning (ML) is ubiquitous in modern life. Since it is being deployed...
We develop an approach for automatically learning the optimal feature transformation for a given cla...
An important task in data mining is that of rule discovery in supervised data. Well-known examples i...
The purpose of this paper is to formulate decision rules for adapting the appropriate amount of inst...
We define an optimal class association rule set to be the minimum rule set with the same predictive ...
The extraction of optimal features, in a classification sense, is still quite challenging in the con...
This paper discusses the unsupervised learning problem. An important part of the unsupervised learni...