学位论文详细信息
An inter-domain supervision framework for collaborative clustering of data with mixed types.
Clustering;Heterogeneous;Mixed types;Collaborative
Artur Abdullin
University:University of Louisville
Department:Computer Engineering and Computer Science
关键词: Clustering;    Heterogeneous;    Mixed types;    Collaborative;   
Others  :  https://ir.library.louisville.edu/cgi/viewcontent.cgi?article=1005&context=etd
美国|英语
来源: The Universite of Louisville's Institutional Repository
PDF
【 摘 要 】

We propose an Inter-Domain Supervision (IDS) clustering framework to discover clusters within diverse data formats, mixed-type attributes and different sources of data. This approach can be used for combined clustering of diverse representations of the data, in particular where data comes from different sources, some of which may be unreliable or uncertain, or for exploiting optional external concept set labels to guide the clustering of the main data set in its original domain. We additionally take into account possible incompatibilities in the data via an automated inter-domain compatibility analysis. Our results in clustering real data sets with mixed numerical, categorical, visual and text attributes show that the proposed IDS clustering framework gives improved clustering results compared to conventional methods, over a wide range of parameters. Thus the automatically extracted knowledge, in the form of seeds or constraints, obtained from clustering one domain, can provide additional knowledge to guide the clustering in another domain. Additional empirical evaluations further show that our approach, especially when using selective mutual guidance between domains, outperforms common baselines such as clustering either domain on its own or clustering all domains converted to a single target domain. Our approach also outperforms other specialized multiple clustering methods, such as the fully independent ensemble clustering and the tightly coupled multiview clustering, after they were adapted to the task of clustering mixed data. Finally, we present a real life application of our IDS approach to the cluster-based automated image annotation problem and present evaluation results on a benchmark data set, consisting of images described with their visual content along with noisy text descriptions, generated by users on the social media sharing website, Flickr.

【 预 览 】
附件列表
Files Size Format View
An inter-domain supervision framework for collaborative clustering of data with mixed types. 4951KB PDF download
  文献评价指标  
  下载次数:13次 浏览次数:14次