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dc.contributor.authorGurugubelli, Venkata Sukumar
dc.contributor.authorLi, Zhouzhou
dc.contributor.authorWang, Honggang
dc.contributor.authorFang, Hua (Julia)
dc.date2022-08-11T08:11:02.000
dc.date.accessioned2022-08-23T17:29:33Z
dc.date.available2022-08-23T17:29:33Z
dc.date.issued2018-03-01
dc.date.submitted2019-04-17
dc.identifier.citation<p>Int Conf Comput Netw Commun. 2018 Mar;2018:912-916. doi: 10.1109/ICCNC.2018.8390419. Epub 2018 Jun 21. <a href="https://doi.org/10.1109/ICCNC.2018.8390419">Link to article on publisher's site</a></p>
dc.identifier.issn2325-2626 (Linking)
dc.identifier.doi10.1109/ICCNC.2018.8390419
dc.identifier.pmid30906794
dc.identifier.urihttp://hdl.handle.net/20.500.14038/50344
dc.description.abstractClustering methods become increasingly important in analyzing heterogeneity of treatment effects, especially in longitudinal behavioral intervention studies. Methods such as K-means and Fuzzy C-means (FCM) have been widely endorsed to identify distinct groups of different types of data. Build upon our MIFuzzy [1], our goal is to concurrently handle multiple methodological issues in studying high dimensional longitudinal intervention data with missing values. Particularly, this paper focuses on the initialization issue of FCM and proposes a new initialization method to overcome the local optimal problem and decrease the convergence time in handling high-dimensional data with missing values for overlapping clusters. Based on the idea of K-means++ [9], we proposed an enhanced Fuzzy C-means clustering (eFCM) and incorporated it into our MIFuzzy. This method was evaluated using real longitudinal intervention data, classic and generic datasets. Compared to conventional FCM, our findings indicate eFCM can improve computational efficiency and avoid the local optimization.
dc.language.isoen_US
dc.relation<p><a href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=pubmed&cmd=Retrieve&list_uids=30906794&dopt=Abstract">Link to Article in PubMed</a></p>
dc.relation.urlhttps://www.ncbi.nlm.nih.gov/pmc/articles/PMC6428443/
dc.subjectUMCCTS funding
dc.subjectComputer Sciences
dc.subjectLongitudinal Data Analysis and Time Series
dc.subjectTranslational Medical Research
dc.titleeFCM: An Enhanced Fuzzy C-Means Algorithm for Longitudinal Intervention Data
dc.typeJournal Article
dc.source.journaltitleInternational Conference on Computing, Networking, and Communications : [proceedings]
dc.source.volume2018
dc.identifier.legacycoverpagehttps://escholarship.umassmed.edu/umccts_pubs/170
dc.identifier.contextkey14282385
html.description.abstract<p>Clustering methods become increasingly important in analyzing heterogeneity of treatment effects, especially in longitudinal behavioral intervention studies. Methods such as K-means and Fuzzy C-means (FCM) have been widely endorsed to identify distinct groups of different types of data. Build upon our MIFuzzy [1], our goal is to concurrently handle multiple methodological issues in studying high dimensional longitudinal intervention data with missing values. Particularly, this paper focuses on the initialization issue of FCM and proposes a new initialization method to overcome the local optimal problem and decrease the convergence time in handling high-dimensional data with missing values for overlapping clusters. Based on the idea of K-means++ [9], we proposed an enhanced Fuzzy C-means clustering (eFCM) and incorporated it into our MIFuzzy. This method was evaluated using real longitudinal intervention data, classic and generic datasets. Compared to conventional FCM, our findings indicate eFCM can improve computational efficiency and avoid the local optimization.</p>
dc.identifier.submissionpathumccts_pubs/170
dc.contributor.departmentDepartment of Quantitative Health Sciences
dc.source.pages912-916


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