Distributed Mining of Closed Patterns from Multi-Relational Data

Author(s):  
Yohei Kamiya ◽  
◽  
Hirohisa Seki

In multi-relational data mining (MRDM), there have been proposed many methods for searching for patterns that involve multiple tables (relations) from a relational database. In this paper, we consider closed pattern mining from distributed multi-relational databases (MRDBs). Since the computation of MRDM is costly compared with the conventional itemset mining, we propose some efficient methods for computing closed patterns using the techniques studied in Inductive Logic Programming (ILP) and Formal Concept Analysis (FCA). Given a set oflocaldatabases, we first compute sets of their closed patterns (concepts) using a closed pattern mining algorithm tailored to MRDM, and then generate the set of closed patterns in the global database by utilizing themergeoperator. We also present some experimental results, which shows the effectiveness of the proposed methods.

2014 ◽  
Vol 41 (11) ◽  
pp. 5105-5114 ◽  
Author(s):  
András Király ◽  
Asta Laiho ◽  
János Abonyi ◽  
Attila Gyenesei

Author(s):  
Aimene Belfodil ◽  
Sergei O. Kuznetsov ◽  
Céline Robardet ◽  
Mehdi Kaytoue

Pattern mining is an important task in AI for eliciting hypotheses from the data. When it comes to spatial data, the geo-coordinates are often considered independently as two different attributes. Consequently, rectangular patterns are searched for. Such an arbitrary form is not able to capture interesting regions in general. We thus introduce convex polygons, a good trade-off for capturing high density areas in any pattern mining task. Our contribution is threefold: (i) We formally introduce such patterns in Formal Concept Analysis (FCA), (ii) we give all the basic bricks for mining polygons with exhaustive search and pattern sampling, and (iii) we design several algorithms that we compare experimentally.


Sign in / Sign up

Export Citation Format

Share Document