Transfer Prototype-based Fuzzy Clustering
Zhaohong Deng, Yizhang Jiang, Fu-Lai Chung, Hisao Ishibuchi, Kup-Sze, Choi, Shitong Wang

TL;DR
This paper introduces transfer learning into prototype-based fuzzy clustering to improve performance when data is scarce, leveraging knowledge from related domains to enhance clustering accuracy.
Contribution
It develops transfer prototype fuzzy clustering algorithms by integrating source domain knowledge into FCM, FKPC, and FSC with novel objective functions.
Findings
Effective on synthetic datasets
Improves clustering with limited data
Outperforms traditional methods
Abstract
The traditional prototype based clustering methods, such as the well-known fuzzy c-mean (FCM) algorithm, usually need sufficient data to find a good clustering partition. If the available data is limited or scarce, most of the existing prototype based clustering algorithms will no longer be effective. While the data for the current clustering task may be scarce, there is usually some useful knowledge available in the related scenes/domains. In this study, the concept of transfer learning is applied to prototype based fuzzy clustering (PFC). Specifically, the idea of leveraging knowledge from the source domain is exploited to develop a set of transfer prototype based fuzzy clustering (TPFC) algorithms. Three prototype based fuzzy clustering algorithms, namely, FCM, fuzzy k-plane clustering (FKPC) and fuzzy subspace clustering (FSC), have been chosen to incorporate with knowledge…
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