Bayesian Additive Main Effects and Multiplicative Interaction Models
using Tensor Regression for Multi-environmental Trials
- URL: http://arxiv.org/abs/2301.03655v1
- Date: Mon, 9 Jan 2023 19:54:50 GMT
- Title: Bayesian Additive Main Effects and Multiplicative Interaction Models
using Tensor Regression for Multi-environmental Trials
- Authors: Antonia A. L. Dos Santos, Danilo A. Sarti, Rafael A. Moral, Andrew C.
Parnell
- Abstract summary: We propose a Bayesian tensor regression model to accommodate the effect of multiple factors on phenotype prediction.
We adopt a set of prior distributions that resolve identifiability issues that may arise between the parameters in the model.
We explore the applicability of our model by analysing real-world data related to wheat production across Ireland from 2010 to 2019.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose a Bayesian tensor regression model to accommodate the effect of
multiple factors on phenotype prediction. We adopt a set of prior distributions
that resolve identifiability issues that may arise between the parameters in
the model. Simulation experiments show that our method out-performs previous
related models and machine learning algorithms under different sample sizes and
degrees of complexity. We further explore the applicability of our model by
analysing real-world data related to wheat production across Ireland from 2010
to 2019. Our model performs competitively and overcomes key limitations found
in other analogous approaches. Finally, we adapt a set of visualisations for
the posterior distribution of the tensor effects that facilitate the
identification of optimal interactions between the tensor variables whilst
accounting for the uncertainty in the posterior distribution.
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