2023
DOI: 10.3389/fevo.2023.1160684
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An improved machine learning model Shapley value-based to forecast demand for aquatic product supply chain

Abstract: Previous machine learning models usually faced the problem of poor performance, especially for aquatic product supply chains. In this study, we proposed a coupling machine learning model Shapely value-based to predict the CCL demand of aquatic products (CCLD-AP). We first select the key impact indicators through the gray correlation degree and finally determine the indicator system. Secondly, gray prediction, principal component regression analysis prediction, and BP neural network models are constructed from … Show more

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