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Main Authors: Lin, Yang, Li, Muqing, Zhu, Ziyi, Feng, Yinqiu, Xiao, Lingxi, Chen, Zexi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.16982
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author Lin, Yang
Li, Muqing
Zhu, Ziyi
Feng, Yinqiu
Xiao, Lingxi
Chen, Zexi
author_facet Lin, Yang
Li, Muqing
Zhu, Ziyi
Feng, Yinqiu
Xiao, Lingxi
Chen, Zexi
contents The prediction of disease risk factors can screen vulnerable groups for effective prevention and treatment, so as to reduce their morbidity and mortality. Machine learning has a great demand for high-quality labeling information, and labeling noise in medical big data poses a great challenge to efficient disease risk warning methods. Therefore, this project intends to study the robust learning algorithm and apply it to the early warning of infectious disease risk. A dynamic truncated loss model is proposed, which combines the traditional mutual entropy implicit weight feature with the mean variation feature. It is robust to label noise. A lower bound on training loss is constructed, and a method based on sampling rate is proposed to reduce the gradient of suspected samples to reduce the influence of noise on training results. The effectiveness of this method under different types of noise was verified by using a stroke screening data set as an example. This method enables robust learning of data containing label noise.
format Preprint
id arxiv_https___arxiv_org_abs_2406_16982
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Research on Disease Prediction Model Construction Based on Computer AI deep Learning Technology
Lin, Yang
Li, Muqing
Zhu, Ziyi
Feng, Yinqiu
Xiao, Lingxi
Chen, Zexi
Machine Learning
Artificial Intelligence
The prediction of disease risk factors can screen vulnerable groups for effective prevention and treatment, so as to reduce their morbidity and mortality. Machine learning has a great demand for high-quality labeling information, and labeling noise in medical big data poses a great challenge to efficient disease risk warning methods. Therefore, this project intends to study the robust learning algorithm and apply it to the early warning of infectious disease risk. A dynamic truncated loss model is proposed, which combines the traditional mutual entropy implicit weight feature with the mean variation feature. It is robust to label noise. A lower bound on training loss is constructed, and a method based on sampling rate is proposed to reduce the gradient of suspected samples to reduce the influence of noise on training results. The effectiveness of this method under different types of noise was verified by using a stroke screening data set as an example. This method enables robust learning of data containing label noise.
title Research on Disease Prediction Model Construction Based on Computer AI deep Learning Technology
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2406.16982