Title :
Clustering with Attribute-Level Constraints
Author :
Schmidt, Jana ; Brändle, Elisabeth Maria ; Kramer, Stefan
Author_Institution :
Inst. fur Inf./112, Tech. Univ. Munchen, Garching, Germany
Abstract :
In many clustering applications the incorporation of background knowledge in the form of constraints is desirable. In this paper, we introduce a new constraint type and the corresponding clustering problem: attribute constrained clustering. The goal is to induce clusters of binary instances that satisfy constraints on the attribute level. These constraints specify whether instances may or may not be grouped to a cluster, depending on specific attribute values. We show how the well-established instance-level constraints, must-link and cannot-link, can be adapted to the attribute level. A variant of the k-Medoids algorithm taking into account attribute level constraints is evaluated on synthetic and real-world data. Experimental results show that such constraints may provide better clustering results at lower specification costs if constraints can be expressed on the attribute level.
Keywords :
constraint handling; constraint satisfaction problems; pattern clustering; set theory; attribute-level constraint clustering; background knowledge; constraint satisfaction; instance-level constraints; k-Medoids algorithm; Animals; Clustering algorithms; Data mining; Electronic mail; Equations; Runtime; attribute level; constrained clustering;
Conference_Titel :
Data Mining (ICDM), 2011 IEEE 11th International Conference on
Conference_Location :
Vancouver,BC
Print_ISBN :
978-1-4577-2075-8
DOI :
10.1109/ICDM.2011.36