Electrical evoked potentials prediction model in visual prostheses based on support vector regression with multiple weights | |
Qi, Jin ; Hu, Jie ; Peng, Ying Hong ; Ren, Qiushi | |
刊名 | applied soft computing |
2011 | |
关键词 | Electrical evoked potentials Time series prediction Support vector regression Similarity measurement Temporal weight function NEURAL-NETWORK MACHINES CLASSIFICATION APPROXIMATION ALGORITHM |
DOI | 10.1016/j.asoc.2011.05.037 |
英文摘要 | Electrical evoked potentials (EEPs) elicited by electrical stimuli to the optical nerve are an important study object in optical nerve visual prostheses to investigate the temporal property of responses of the visual cortex. Concentrating on reducing the cost of the visual prostheses research, this paper proposes an intelligent EEPs prediction model based on the support vector regression with multiple weights (SVR-MW) method in substitution of numerous biological experiments. In SVR-MW, to improve the predictive performance of traditional SVR, more temporal weights and similarity-based weights are given to the recent training data extracted from similar experimental cases for new electrical stimulus parameters than the distant data from less similar cases during regression estimation. For temporal weight (TW), we propose two TW functions i.e., linear temporal weight (LTW) function and exponential temporal weight (ETW) function to calculate the temporal weight of training sample at different time nodes. For similarity-based weight (SW), the similarity measurement (SM) is the key issue, and we adopt the multi-algorithm-oriented hybrid SM methods i.e., textual SM, numerical SM, interval SM and fuzzy SM to solve the SW computation for training data derived from different experimental cases. The proposed method was empirically tested with data collected from actual EEPs eliciting experiments. Empirical comparison shows that SVR-MW is feasible and validated for EEPs prediction in visual prostheses research. (C) 2011 Elsevier B.V. All rights reserved.; Computer Science, Artificial Intelligence; Computer Science, Interdisciplinary Applications; SCI(E); EI; 0; ARTICLE; 8; 5230-5242; 11 |
语种 | 英语 |
内容类型 | 期刊论文 |
源URL | [http://ir.pku.edu.cn/handle/20.500.11897/237439] |
专题 | 工学院 |
推荐引用方式 GB/T 7714 | Qi, Jin,Hu, Jie,Peng, Ying Hong,et al. Electrical evoked potentials prediction model in visual prostheses based on support vector regression with multiple weights[J]. applied soft computing,2011. |
APA | Qi, Jin,Hu, Jie,Peng, Ying Hong,&Ren, Qiushi.(2011).Electrical evoked potentials prediction model in visual prostheses based on support vector regression with multiple weights.applied soft computing. |
MLA | Qi, Jin,et al."Electrical evoked potentials prediction model in visual prostheses based on support vector regression with multiple weights".applied soft computing (2011). |
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