Authors
Fulton, L., Lyu, P.
Abstract
Invasive species management demands predictive models that balance accuracy with ecological interpretability. Traditional approaches often fail to capture complex environmental interactions. We evaluated hybrid frameworks integrating biological and machine learning models for rainbow trout (Oncorhynchus mykiss) growth in the Lower Colorado River. Using ten years of tag-recapture data and environmental covariates, we assessed traditional and Bayesian von Bertalanffy (VBGM) and Gompertz models, Random Forests, XGBoost, LightGBM, Support Vector Regression, Neural Networks, and ensemble approaches through comprehensive probabilistic comparisons. Our results reveal substantial improvements from incorporating environmental context and advanced modeling. Top methods achieved 70 to 80 percent error reductions compared to baseline models, equivalent to 45 to 70 mm improvements or 20 to 32 percent of mean fish length. A stacked ensemble of XGBoost and the VBGM achieved optimal performance (RMSE = 15.96 mm, R2 = 0.966), demonstrating complete stochastic dominance across the posterior. Gradient boosting models formed a strong second tier, with LightGBM (9 dominances) and XGBoost (8 dominances) leading this group. Bayesian Model Averaging achieved similar accuracy while explicitly quantifying uncertainty. Even traditional mechanistic models improved markedly, up to 80 percent, when enhanced with covariates and Bayesian estimation. Feature importance analysis identified (on average) initial length, time at large, and weight at release as key predictors. The stacked ensemble dominated baseline models in over 99 percent of posterior samples, confirming its robustness. These findings establish hybrid ensemble frameworks as powerful tools for ecological forecasting, uniting predictive performance with mechanistic insight critical to conservation decision-making. The methodology provides a generalizable template for ecological systems where both accuracy and interpretability are essential.
Preprint server:
bioRxiv
The authors list and abstract were imported from bioRxiv on 07 Nov 2025.
Advertisement
Stats
- Recommendations n/a n/a positive of 0 vote(s)
- Views 29
- Comments 0