New Publication in Scientific Reports

I am pleased to share that our study entitled:

“Bootstrap-Based K-Means Feature Selection Strategy for Fuzzy Regression Functions”

has been accepted for publication in Scientific Reports (Nature Portfolio).

In this study, we propose a bootstrap-stabilized k-means based feature selection framework integrated with Fuzzy Regression Functions (FRF) to improve robustness, stability, and predictive performance in regression modeling. The proposed approach was evaluated on multiple real-world datasets and compared with several widely used benchmark methods.

Authors:

  • Aylin Ucan
  • Dogan Yildiz
  • Nihat Tak

The article is currently available online as an accepted manuscript:
https://doi.org/10.1038/s41598-026-54121-y

I would like to thank my co-authors, colleagues, and everyone who contributed to this work.

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