2021
DOI: 10.1029/2021jf006112
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Determining the Shoreline Retreat Rate of Australia Using Discrete and Hybrid Bayesian Networks

Abstract: Evaluating shoreline retreat rate (SRR) on different spatial‐temporal scales is critical for effective coastal management. Large‐scale evaluations typically rely on data‐driven methods such as Discrete Bayesian networks (BNs). However, these BNs require discretization of continuous variables which can lead to information loss. Here, we propose a new method, the Hybrid BN to incorporate continuous variables without discretization. Both Discrete and Hybrid BNs were developed and compared to evaluate large‐scale … Show more

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“…The flexible utilisation of anthropogenic data enables the wide application of the BN approach. Later research studied the effects of beach grass on dune morphological changes with the application of the hybrid BN approach including continuous variables [42]. The BN approach is useful for both prediction and scientific studies.…”
Section: Machine Learning (Ml) Approachesmentioning
confidence: 99%
“…The flexible utilisation of anthropogenic data enables the wide application of the BN approach. Later research studied the effects of beach grass on dune morphological changes with the application of the hybrid BN approach including continuous variables [42]. The BN approach is useful for both prediction and scientific studies.…”
Section: Machine Learning (Ml) Approachesmentioning
confidence: 99%