In this paper we propose a novel (multi-)relational classification framework based on propositionalization. Propositionalization makes use of discovered relational association rules and permits to significantly reduce feature space through a feature reduction algorithm. The method is implemented in a Data Mining system tightly integrated with a relational database. It performs the classification at different granularity levels and takes advantage from domain specific knowledge in form of rules that support qualitative reasoning. An application of classification in real-world georeferenced census data analysis is reported
Spatial classification is the task of learning models to predict class labels for spatial entities b...
This book provides two general granular computing approaches to mining relational data, the first of...
International audienceThe processing of complex data is admittedly among the major concerns of knowl...
In this paper we propose a novel (multi-)relational classification framework based on propositional...
Abstract. In traditional classification setting, training data are represented as a single table, wh...
Data is mainly available in relational formats, so relational data mining receives a lot of interes...
Companies want to extract value from their relational databases. This is the aim of relational data ...
Propositionalization, Inductive Logic Programming, Multi-Relational Data MiningMagdeburg, Univ., Fak...
summary:Systems aiming at discovering interesting knowledge in data, now commonly called data mining...
For many real-world applications it is important to choose the right representation language. While ...
Abstract Relational databases are the most popular repository for structured data, and are thus one ...
This paper introduces relational redescription mining, that is, the task of finding two structurally...
We introduce relational redescription mining, that is, the task of finding two structurally differen...
Mining of association rules is of interest to data miners. Typically, before association rules are ...
One of the primary goals of data mining is to extract patterns from a large volume of data. Rules ch...
Spatial classification is the task of learning models to predict class labels for spatial entities b...
This book provides two general granular computing approaches to mining relational data, the first of...
International audienceThe processing of complex data is admittedly among the major concerns of knowl...
In this paper we propose a novel (multi-)relational classification framework based on propositional...
Abstract. In traditional classification setting, training data are represented as a single table, wh...
Data is mainly available in relational formats, so relational data mining receives a lot of interes...
Companies want to extract value from their relational databases. This is the aim of relational data ...
Propositionalization, Inductive Logic Programming, Multi-Relational Data MiningMagdeburg, Univ., Fak...
summary:Systems aiming at discovering interesting knowledge in data, now commonly called data mining...
For many real-world applications it is important to choose the right representation language. While ...
Abstract Relational databases are the most popular repository for structured data, and are thus one ...
This paper introduces relational redescription mining, that is, the task of finding two structurally...
We introduce relational redescription mining, that is, the task of finding two structurally differen...
Mining of association rules is of interest to data miners. Typically, before association rules are ...
One of the primary goals of data mining is to extract patterns from a large volume of data. Rules ch...
Spatial classification is the task of learning models to predict class labels for spatial entities b...
This book provides two general granular computing approaches to mining relational data, the first of...
International audienceThe processing of complex data is admittedly among the major concerns of knowl...