Hong Yu
· Adjunct ProfessorUniversity of Massachusetts Amherst · International Relations
Active 1989–2024
About
The UMass Lowell Center of Biomedical and Health Research in Data Sciences (CHORDS), where Professor Hong Yu is associated, conducts cutting-edge informatics research to accelerate biomedical and healthcare discoveries through innovative computational methods and technologies in information science, data science, and translational science. The center includes leaders and experts from a diverse set of fields including computer science, epidemiology, biostatistics, nursing, public health, and mathematics. The research focuses on leveraging big data in the biomedical field to improve health outcomes by mining literature, analyzing surveys for social determinants of health, and using electronic health records for surveillance and health risk factors.
Research topics
- Machine Learning
- Computer Science
- Artificial Intelligence
- Mathematics
- Data Mining
- Political Science
- Engineering
- Geography
- Statistics
- Reliability engineering
- Law
Selected publications
Understanding China’s Belt and Road Initiative
Asia in transition · 2024 · 80 citations
1st authorCorresponding- Political Science
- Political Science
- Geography
This book series, indexed in Scopus, is an initiative in conjunction with Springer under the auspices of the Universiti Brunei Darussalam -Institute of Asian Studies (http://ias.ubd.edu.bn/).It addresses the interplay of local
IEEE Transactions on Instrumentation and Measurement · 2022 · 90 citations
- Computer Science
- Artificial Intelligence
- Computer Science
The prediction of the remaining useful life (RUL) of wind turbine gearbox bearings is critical to avoid catastrophic accidents and minimize downtime. Temporal convolutional network (TCN), as a potential method of RUL prediction, utilizes dilated causal convolution to extract historic information in the time series, by which it can avoid the disadvantage of long-term dependence faced by classical recurrent neural networks (RNNs). However, a large amount of local information is lost after dilated causal convolution, restricting further improvement of accuracy in RUL prediction or even making TCN invalid when the time series data are not sufficient. To address this issue, an improved TCN denoted as self-calibration temporal convolutional network (SCTCN) is proposed for RUL prediction of wind turbine gearbox bearings, in which the dilated causal convolution of TCN is inherited to extract the long-term historic information, and the self-calibration module is used to focus on the local information in the time series. As a result, SCTCN can learn more complete historic information to improve the accuracy of RUL prediction. Bearing RUL prediction experiments on both test bench and wind turbine gearbox are performed to verify the effectiveness of the proposed method, and the experimental results show that SCTCN has higher prediction accuracy compared with other state-of-the-art methods.
Incremental approaches for heterogeneous feature selection in dynamic ordered data
Information Sciences · 2020 · 45 citations
Senior authorCorresponding- Computer Science
- Computer Science
- Data Mining
Recent grants
Improving Suicide Prediction using NLP-Extracted Social Determinants of Health
NIH · $3.1M · 2020–2025
Frequent coauthors
- 748 shared
Yan Wang
Chinese Academy of Medical Sciences & Peking Union Medical College
- 456 shared
Yang Wang
University of Science and Technology of China
- 242 shared
Feng Li
First Affiliated Hospital of Chengdu Medical College
- 154 shared
Qi Liu
- 144 shared
Jie Zheng
- 120 shared
Zhigang Wang
Chinese Academy of Medical Sciences & Peking Union Medical College
- 88 shared
Fei Xu
Nanchang University
- 79 shared
Xiaohui Wang
South China University of Technology
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