High-low level support vector regression prediction approach (HL-SVR) for data modeling with input parameters of unequal sample sizes
Maolin Shi, Wei Sun, Xueguan Song, Hongyou Li

TL;DR
This paper introduces HL-SVR, a novel support vector regression method designed to handle input parameters with unequal sample sizes, improving prediction accuracy in engineering data modeling.
Contribution
The paper proposes a high-low-level SVR approach that effectively models data with unequal sample sizes, enhancing prediction accuracy over traditional SVR methods.
Findings
HL-SVR outperforms conventional SVR in numerical tests.
HL-SVR provides more accurate predictions in engineering applications.
Application to dental implant stress analysis demonstrates effectiveness.
Abstract
Support vector regression (SVR) has been widely used to reduce the high computational cost of computer simulation. SVR assumes the input parameters have equal sample sizes, but unequal sample sizes are often encountered in engineering practices. To solve this issue, a new prediction approach based on SVR, namely as high-low-level SVR approach (HL-SVR) is proposed for data modeling of input parameters of unequal sample sizes in this paper. The proposed approach is consisted of low-level SVR models for the input parameters of larger sample sizes and high-level SVR model for the input parameters of smaller sample sizes. For each training point of the input parameters of smaller sample sizes, one low-level SVR model is built based on its corresponding input parameters of larger sample sizes and their responses of interest. The high-level SVR model is built based on the obtained responses…
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