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The dimensionality reductions of environmental variables have a significant effect on the performance of species distribution models
The dimensionality reductions of environmental variables have a significant effect on the performance of species distribution models
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The dimensionality reductions of environmental variables have a significant effect on the performance of species distribution models
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The dimensionality reductions of environmental variables have a significant effect on the performance of species distribution models
The dimensionality reductions of environmental variables have a significant effect on the performance of species distribution models

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The dimensionality reductions of environmental variables have a significant effect on the performance of species distribution models
The dimensionality reductions of environmental variables have a significant effect on the performance of species distribution models
Journal Article

The dimensionality reductions of environmental variables have a significant effect on the performance of species distribution models

2023
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Overview
How to effectively obtain species‐related low‐dimensional data from massive environmental variables has become an urgent problem for species distribution models (SDMs). In this study, we will explore whether dimensionality reduction on environmental variables can improve the predictive performance of SDMs. We first used two linear (i.e., principal component analysis (PCA) and independent components analysis) and two nonlinear (i.e., kernel principal component analysis (KPCA) and uniform manifold approximation and projection) dimensionality reduction techniques (DRTs) to reduce the dimensionality of high‐dimensional environmental data. Then, we established five SDMs based on the environmental variables of dimensionality reduction for 23 real plant species and nine virtual species, and compared the predictive performance of those with the SDMs based on the selected environmental variables through Pearson's correlation coefficient (PCC). In addition, we studied the effects of DRTs, model complexity, and sample size on the predictive performance of SDMs. The predictive performance of SDMs under DRTs other than KPCA is better than using PCC. And the predictive performance of SDMs using linear DRTs is better than using nonlinear DRTs. In addition, using DRTs to deal with environmental variables has no less impact on the predictive performance of SDMs than model complexity and sample size. When the model complexity is at the complex level, PCA can improve the predictive performance of SDMs the most by 2.55% compared with PCC. At the middle level of sample size, the PCA improved the predictive performance of SDMs by 2.68% compared with the PCC. Our study demonstrates that DRTs have a significant effect on the predictive performance of SDMs. Specifically, linear DRTs, especially PCA, are more effective at improving model predictive performance under relatively complex model complexity or large sample sizes. Dimensionality reduction techniques (DRTs) can effectively improve the predictive performance of species distribution models by reducing the dimensionality of environmental variables. Specifically, linear DRTs (especially principal component analysis, or PCA) were found to be more effective in improving model performance under relatively complex model complexity or large sample sizes.