Vcc-Bps: Vertical Collaborative Clustering Using Bit Plane Slicing
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Date
2021, 2021
Authors
Ishaq, Waqar
Büyükkaya, Eliya
Ali, Mushtaq
Khan, Zakir
Journal Title
Journal ISSN
Volume Title
Publisher
PUBLIC LIBRARY SCIENCE
Open Access Color
GOLD
Green Open Access
Yes
OpenAIRE Downloads
OpenAIRE Views
Publicly Funded
No
Abstract
The vertical collaborative clustering aims to unravel the hidden structure of data (similarity) among different sites, which will help data owners to make a smart decision without sharing actual data. For example, various hospitals located in different regions want to investigate the structure of common disease among people of different populations to identify latent causes without sharing actual data with other hospitals. Similarly, a chain of regional educational institutions wants to evaluate their students' performance belonging to different regions based on common latent constructs. The available methods used for finding hidden structures are complicated and biased to perform collaboration in measuring similarity among multiple sites. This study proposes vertical collaborative clustering using a bit plane slicing approach (VCC-BPS), which is simple and unique with improved accuracy, manages collaboration among various data sites. The VCC-BPS transforms data from input space to code space, capturing maximum similarity locally and collaboratively at a particular bit plane. The findings of this study highlight the significance of those particular bits which fit the model in correctly classifying class labels locally and collaboratively. Thenceforth, the data owner appraises local and collaborative results to reach a better decision. The VCC-BPS is validated by Geyser, Skin and Iris datasets and its results are compared with the composite dataset. It is found that the VCC-BPS outperforms existing solutions with improved accuracy in term of purity and Davies-Boulding index to manage collaboration among different data sites. It also performs data compression by representing a large number of observations with a small number of data symbols.
Description
Keywords
Artificial intelligence, Science, Datasets as Topic, Space (punctuation), Clustering Algorithms, Cluster analysis, Artificial Intelligence, Document Clustering, Image (mathematics), Cluster Analysis, Humans, Similarity (geometry), Adaptation to Concept Drift in Data Streams, Data mining, Ensemble Learning, Data Clustering Techniques and Algorithms, Q, R, Statistical and Nonlinear Physics, Semi-supervised Clustering, Computer science, Operating system, N/A, Physics and Astronomy, Multivariate Analysis, Computer Science, Physical Sciences, Medicine, Statistical Mechanics of Complex Networks, Algorithms, Density-based Clustering, Research Article
Turkish CoHE Thesis Center URL
Fields of Science
02 engineering and technology, 0202 electrical engineering, electronic engineering, information engineering
Citation
WoS Q
Q2
Scopus Q
Q1

OpenCitations Citation Count
N/A
Source
PLOS ONE
Volume
16
Issue
1
Start Page
e0244691
End Page
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Citations
Scopus : 1
Captures
Mendeley Readers : 2
SCOPUS™ Citations
1
checked on Jan 31, 2026
Page Views
7
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Downloads
112
checked on Jan 31, 2026
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