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📄 Abstract
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. Further, we incorporate a spike-and-slab structure that identifies
which interactions are relevant for inclusion in the linear predictor, even
when they form a subset of the available variables. Simulation experiments show
that our method outperforms 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.
Authors (4)
Antonia A. L. Dos Santos
Danilo A. Sarti
Rafael A. Moral
Andrew C. Parnell
Submitted
January 9, 2023