Author:
Lv Guohao,Xia Yingchun,Qi Zhao,Zhao Zihao,Tang Lianggui,Chen Cheng,Yang Shuai,Wang Qingyong,Gu Lichuan
Abstract
AbstractLncRNA–protein interactions are ubiquitous in organisms and play a crucial role in a variety of biological processes and complex diseases. Many computational methods have been reported for lncRNA–protein interaction prediction. However, the experimental techniques to detect lncRNA–protein interactions are laborious and time-consuming. Therefore, to address this challenge, this paper proposes a reweighting boosting feature selection (RBFS) method model to select key features. Specially, a reweighted apporach can adjust the contribution of each observational samples to learning model fitting; let higher weights are given more influence samples than those with lower weights. Feature selection with boosting can efficiently rank to iterate over important features to obtain the optimal feature subset. Besides, in the experiments, the RBFS method is applied to the prediction of lncRNA–protein interactions. The experimental results demonstrate that our method achieves higher accuracy and less redundancy with fewer features.
Funder
National Natural Science Foundation of China
Natural Science Foundation of Anhui Province
Anhui University collaborative innovation project
Natural Science Research Project of Education Department of Anhui Province of China
Anhui Agricultural University Youth Fund
Anhui Provincial Key Project of Higher Education Scientific Research
National Natural Science Foundation of China Youth Science Foundation Project
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Structural Biology