WeChat Mini Program
Old Version Features

K-Nearest Neighbor Algorithm Based on the Framework of Ordered Pair of Normalized Real Numbers

Yi Zheng, Xuanbin Ding,Xiang Zhao, Xiaoqin Pan, Lei Zhou

IEEE Transactions on Artificial Intelligence(2025)

Cited 0|Views2
Abstract
The K-Nearest Neighbors (kNN) algorithm, a cornerstone of supervised learning, relies on similarity measures constrained by real-number-based distance metrics. A critical limitation of traditional kNN research lies in its confinement to the real-number domain, which inherently restricts its ability to model nonlinear feature interactions in high-dimensional data and amplifies sensitivity to feature redundancy and class imbalance. These limitations arise from the inherent linearity and unidimensional nature of real-number representations, which restrict their ability to model complex feature interdependencies. To transcend these limitations, this paper proposes OPNs-kNN, a novel framework grounded in Ordered Pairs of Normalized Real Numbers (OPNs). Departing from the conventional real-number paradigm, OPNs-kNN constructs feature pairs as multidimensional OPNs tuples and employs a generalized OPNs-valued metric to explicitly model nonlinear relationships, thereby addressing the inherent shortcomings of real-number-based kNN. Extensive experiments on nine UCI benchmark datasets (e.g., glass, wines, seeds) demonstrate that OPNs-kNN achieves statistically significant improvements in classification accuracy, precision, recall, and F1 score compared to traditional kNN and its enhanced variants. This work pioneers a non-real-number computational framework, proving that moving beyond real-number constraints enables more expressive representations of data relationships, opening new directions for designing robust machine learning models in complex domains.
More
Translated text
Key words
Machine Learning,Ordered Pair of Normalized Real Numbers,Nearest Neighbor Algorithm,Generalized Metric,Feature Engineering
求助PDF
上传PDF
Bibtex
AI Read Science
AI Summary
AI Summary is the key point extracted automatically understanding the full text of the paper, including the background, methods, results, conclusions, icons and other key content, so that you can get the outline of the paper at a glance.
Example
Background
Key content
Introduction
Methods
Results
Related work
Fund
Key content
  • Pretraining has recently greatly promoted the development of natural language processing (NLP)
  • We show that M6 outperforms the baselines in multimodal downstream tasks, and the large M6 with 10 parameters can reach a better performance
  • We propose a method called M6 that is able to process information of multiple modalities and perform both single-modal and cross-modal understanding and generation
  • The model is scaled to large model with 10 billion parameters with sophisticated deployment, and the 10 -parameter M6-large is the largest pretrained model in Chinese
  • Experimental results show that our proposed M6 outperforms the baseline in a number of downstream tasks concerning both single modality and multiple modalities We will continue the pretraining of extremely large models by increasing data to explore the limit of its performance
Upload PDF to Generate Summary
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Data Disclaimer
The page data are from open Internet sources, cooperative publishers and automatic analysis results through AI technology. We do not make any commitments and guarantees for the validity, accuracy, correctness, reliability, completeness and timeliness of the page data. If you have any questions, please contact us by email: report@aminer.cn
Chat Paper
Summary is being generated by the instructions you defined