Title :
Soft-Hard Clustering for Multiview Data
Author :
Gaurav Tyagi;Nilesh Patel;Ishwar Sethi
Author_Institution :
Sch. of Eng. &
Abstract :
With rapid advances in technology and connectivity, the capability to capture data from multiple sources has given rise to multiview learning wherein each object has multiple representations and a learned model, whether supervised or unsupervised, needs to integrate these different representations. Multiview learning has shown to yield better predictive and clustering models, it also is able to provide a better insight into relationships between different views for making better decisions. In this paper, we consider the problem of multiview clustering and present a soft-hard clustering approach. In our approach, all object views are first independently mapped into a unit hypercube via soft clustering. The mapped views are next integrated via a hard clustering approach to yield the final results. Both soft and hard clustering stages utilize k-means or its variant c-means, which makes our method suitable for large-scale data problems. Furthermore, additional parallelization of the view mapping stage in parallel is possible, thus making the method more attractive for large-scale data applications. The performance of the method using three benchmark data sets is demonstrated and a comparison with other published results shows our method mostly yields a slightly better performance.
Keywords :
"Hypercubes","Accuracy","Clustering algorithms","Multimedia communication","Visualization","Vehicles","Measurement"
Conference_Titel :
Information Reuse and Integration (IRI), 2015 IEEE International Conference on
DOI :
10.1109/IRI.2015.77