Identifying multi-view patterns with hierarchy and granularity based multimodal (HGM) cognitive model
conference contribution
posted on 2011-01-01, 00:00authored byYee Ling Boo, D Alahakoon
Humans perceive entities such as objects, patterns, events, etc. as concepts, which are the basic units in human intelligence and communications. In addition, perceptions of these entities could be abstracted and generalised at multiple levels of granularity. In particular, such granulation allows the formation and usage of concepts in human intelligence. Such natural granularity in human intelligence could inspire and motivate the design and development of pattern identification approach in Data Mining. In our opinion, a pattern could be perceived at multiple levels of granularity and thus we advocate for the co-existence of hierarchy and granularity. In addition, granular patterns exist across different sources of data (multimodality). In this paper, we present a cognitive model that incorporates the characteristics of Hierarchy, Granularity and Multimodality for multi-view patterns identification in crime domain. Such framework is implemented with Growing Self Organising Maps (GSOM) and some experimental results are presented and discussed.
History
Pagination
71 - 76
Location
Kaohsiung, Taiwan
Start date
2011-11-08
End date
2011-11-10
ISBN-13
9781457703720
ISBN-10
1457703726
Language
eng
Publication classification
E1 Full written paper - refereed
Copyright notice
2011, IEEE
Title of proceedings
Proceedings of the 2011 IEEE International Conference on Granular Computing