This thesis describes a number of new data mining algorithms which were the result of our research into the enforcement of monotony restrictions when learning (mostly non-parametric) models from data. Not only can judicious use of domain knowledge improve the predictive accuracy of data mining algorithms but also, crucially, models that are consistent with the knowledge of domain experts will be accepted and adopted much earlier than models that are not. Unfortunately, domain knowledge that is most of times available is often informal and poorly structured, which makes its use in practice fraught with difficulty. Knowledge of an ascending or descending relationship between predictor variables and the variable to predict represents a notable...
In many real world applications classification models are required to be in line with domain knowled...
Abstract. Generator of hypotheses is a new method for data mining. It makes possible to classify the...
Plotting a learner’s average performance against the number of training samples results in a learnin...
This thesis describes a number of new data mining algorithms which were the result of our research i...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
textabstractThe monotonicity property is ubiquitous in our lives and it appears in different roles: ...
The objective of data mining is the extraction of knowledge from databases. In practice, one often e...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
Plotting a learner’s average performance against the number of training samples results in a learnin...
In many data mining applications, it is a priori known that the target function should satisfy certa...
Many data mining algorithms do not make use of existing domain knowledge when constructing their mod...
Monotonicity is a constraint which arises in many application domains. We present a machine learning...
Data mining is a broad area that encompasses many different tasks from the supervised classification...
In many application areas of machine learning, prior knowledge concerning the monotonicity of relati...
Machine learning algorithms (learners) are typically expected to produce monotone learning curves, m...
In many real world applications classification models are required to be in line with domain knowled...
Abstract. Generator of hypotheses is a new method for data mining. It makes possible to classify the...
Plotting a learner’s average performance against the number of training samples results in a learnin...
This thesis describes a number of new data mining algorithms which were the result of our research i...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
textabstractThe monotonicity property is ubiquitous in our lives and it appears in different roles: ...
The objective of data mining is the extraction of knowledge from databases. In practice, one often e...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
Plotting a learner’s average performance against the number of training samples results in a learnin...
In many data mining applications, it is a priori known that the target function should satisfy certa...
Many data mining algorithms do not make use of existing domain knowledge when constructing their mod...
Monotonicity is a constraint which arises in many application domains. We present a machine learning...
Data mining is a broad area that encompasses many different tasks from the supervised classification...
In many application areas of machine learning, prior knowledge concerning the monotonicity of relati...
Machine learning algorithms (learners) are typically expected to produce monotone learning curves, m...
In many real world applications classification models are required to be in line with domain knowled...
Abstract. Generator of hypotheses is a new method for data mining. It makes possible to classify the...
Plotting a learner’s average performance against the number of training samples results in a learnin...