textabstractThe monotonicity property is ubiquitous in our lives and it appears in different roles: as domain knowledge, as a requirement, as a property that reduces the complexity of the problem, and so on. It is present in various domains: economics, mathematics, languages, operations research and many others. This thesis is focused on the monotonicity property in knowledge discovery and more specifically in classification, attribute reduction, function decomposition, frequent patterns generation and missing values handling. Four specific problems are addressed within four different methodologies, namely, rough sets theory, monotone decision trees, function decomposition and frequent patterns generation. In the first three parts, the mono...
AbstractMonotonic and dual monotonic language learning from positive as well as from positive and ne...
AbstractThe present paper deals with monotonic and dual monotonic language learning from positive as...
Default Logic is recognized as a powerful framework for knowledge representation and incomplete info...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
This thesis describes a number of new data mining algorithms which were the result of our research i...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
In the present paper strong-monotonic, monotonic and weak-monotonic reasoning is studied in the cont...
The present paper deals with the learnability of indexed families $ mathcal{L} $ of uniformly recurs...
The present paper deals with monotonic and dual monotonic language learning from positive and negati...
Monotonic and dual monotonic language learning from positive as well as from positive and negative e...
The objective of data mining is the extraction of knowledge from databases. In practice, one often e...
Unlocking the mystery of natural phenomena is a universal objective in scientific research. The rule...
International audienceIn many classification tasks there is a requirement of monotonicity. Concretel...
We present a systematic method for incorporating prior knowledge (hints) into the learning-from-exam...
Over the past few decades, non-monotonic reasoning has developed to be one of the most important top...
AbstractMonotonic and dual monotonic language learning from positive as well as from positive and ne...
AbstractThe present paper deals with monotonic and dual monotonic language learning from positive as...
Default Logic is recognized as a powerful framework for knowledge representation and incomplete info...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
This thesis describes a number of new data mining algorithms which were the result of our research i...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
In the present paper strong-monotonic, monotonic and weak-monotonic reasoning is studied in the cont...
The present paper deals with the learnability of indexed families $ mathcal{L} $ of uniformly recurs...
The present paper deals with monotonic and dual monotonic language learning from positive and negati...
Monotonic and dual monotonic language learning from positive as well as from positive and negative e...
The objective of data mining is the extraction of knowledge from databases. In practice, one often e...
Unlocking the mystery of natural phenomena is a universal objective in scientific research. The rule...
International audienceIn many classification tasks there is a requirement of monotonicity. Concretel...
We present a systematic method for incorporating prior knowledge (hints) into the learning-from-exam...
Over the past few decades, non-monotonic reasoning has developed to be one of the most important top...
AbstractMonotonic and dual monotonic language learning from positive as well as from positive and ne...
AbstractThe present paper deals with monotonic and dual monotonic language learning from positive as...
Default Logic is recognized as a powerful framework for knowledge representation and incomplete info...