The Data Mining OPtimization Ontology (DMOP) has been developed to support informed decision-making at various choice points of the data mining process. The ontology can be used by data miners and deployed in ontology-driven information systems. The primary purpose for which DMOP has been developed is the automation of algorithm and model selection through semantic meta-mining that makes use of an ontology-based meta-analysis of complete data mining processes in view of extracting patterns associated with mining performance. To this end, DMOP contains detailed descriptions of data mining tasks (e.g., learning, feature selection), data, algorithms, hypotheses such as mined models or patterns, and workflows. A development methodology was use...
Motivated by the need for unification of the field of data mining and the growing demand for formali...
This paper describes the use of meta-learning in the area of data mining. It describes the problems ...
International audienceThis paper deals with knowledge integration in a data mining process. We sugge...
The Data Mining OPtimization Ontology (DMOP) has been developed to support informed decision-making ...
We describe the Data Mining OPtimization Ontology (DMOP), which was developed to support informed de...
We describe the Data Mining OPtimization Ontology (DMOP), which was developed to support informed de...
This chapter describes a principled approach to meta-learning that has three distinctive features. F...
A data mining (DM) process involves multiple stages. A simple, but typical, process might include pr...
Semantic Data Mining alludes to the information mining assignments that deliberately consolidate are...
Abstract- Data Mining is the process of extracting potentially useful knowledge from raw data. This ...
In real life, extracting from real data through data mining is a complicated process. Meta-learning ...
A data mining (DM) process involves multiple stages. A simple, but typical, process might in-clude p...
Knowledge Discovery in Databases is a complex process that involves many different data processing a...
applying a data mining algorithm, and postprocessing the mining results. There are many possible cho...
Feature selection plays an important role in machine learning or data mining problems. Removing irre...
Motivated by the need for unification of the field of data mining and the growing demand for formali...
This paper describes the use of meta-learning in the area of data mining. It describes the problems ...
International audienceThis paper deals with knowledge integration in a data mining process. We sugge...
The Data Mining OPtimization Ontology (DMOP) has been developed to support informed decision-making ...
We describe the Data Mining OPtimization Ontology (DMOP), which was developed to support informed de...
We describe the Data Mining OPtimization Ontology (DMOP), which was developed to support informed de...
This chapter describes a principled approach to meta-learning that has three distinctive features. F...
A data mining (DM) process involves multiple stages. A simple, but typical, process might include pr...
Semantic Data Mining alludes to the information mining assignments that deliberately consolidate are...
Abstract- Data Mining is the process of extracting potentially useful knowledge from raw data. This ...
In real life, extracting from real data through data mining is a complicated process. Meta-learning ...
A data mining (DM) process involves multiple stages. A simple, but typical, process might in-clude p...
Knowledge Discovery in Databases is a complex process that involves many different data processing a...
applying a data mining algorithm, and postprocessing the mining results. There are many possible cho...
Feature selection plays an important role in machine learning or data mining problems. Removing irre...
Motivated by the need for unification of the field of data mining and the growing demand for formali...
This paper describes the use of meta-learning in the area of data mining. It describes the problems ...
International audienceThis paper deals with knowledge integration in a data mining process. We sugge...