An important aspect of data mining algorithms and systems is that they should scale well to large databases. A consequence of this is that most data mining tools are based on machine learning algorithms that work on data in attribute-value format. Experience has proven that such 'single-table' mining algorithms indeed scale well. The downside of this format is, however, that more complex patterns are simply not expressible in this format and, thus, cannot be discovered. One way to enlarge the expressiveness is to generalize, as in ILP, from one-table mining to multiple table mining, i.e., to support mining on full relational databases. The key step in such a generalization is to ensure that the search space does not explode and that efficie...
We propose a new framework for constraint-based pattern mining in multi-relational databases. Distin...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-SISOInternational audienceGra...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...
An important aspect of data mining algorithms and systems is that they should scale well to large da...
textabstractAn important aspect of data mining algorithms and systems is that they should scale well...
Multi-relational data mining enables pattern mining from multiple tables. The existing multi-relatio...
Multi-relational data mining algorithms search a large hypothesis space in order to find a suitable ...
With ever-growing storage needs and drift towards very large relational storage settings, multi-rela...
Data is mostly stored in relational databases today. However, most data mining algorithms are not ca...
Abstract Background ...
Relational databases are the most popular repository for structured data, and are thus one of the ri...
We propose the new RADAR technique for multi-relational data mining. This permits the mining of very...
The multi-relational Data Mining approach has emerged as alternative to the analysis of structured d...
Today, most of the data in business applications is stored in relational database systems or in data...
We discuss the use of database methods for data mining. Recently impressive results have been achiev...
We propose a new framework for constraint-based pattern mining in multi-relational databases. Distin...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-SISOInternational audienceGra...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...
An important aspect of data mining algorithms and systems is that they should scale well to large da...
textabstractAn important aspect of data mining algorithms and systems is that they should scale well...
Multi-relational data mining enables pattern mining from multiple tables. The existing multi-relatio...
Multi-relational data mining algorithms search a large hypothesis space in order to find a suitable ...
With ever-growing storage needs and drift towards very large relational storage settings, multi-rela...
Data is mostly stored in relational databases today. However, most data mining algorithms are not ca...
Abstract Background ...
Relational databases are the most popular repository for structured data, and are thus one of the ri...
We propose the new RADAR technique for multi-relational data mining. This permits the mining of very...
The multi-relational Data Mining approach has emerged as alternative to the analysis of structured d...
Today, most of the data in business applications is stored in relational database systems or in data...
We discuss the use of database methods for data mining. Recently impressive results have been achiev...
We propose a new framework for constraint-based pattern mining in multi-relational databases. Distin...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-SISOInternational audienceGra...
Mining patterns from multi-relational data is a problem attracting increasing interest within the da...