Application of logistic regression models for the marketability of cucumber cultivars

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Abstract

The aim of this study is to establish a binary logistic regression method to evaluate and select cucumber cultivars (Cucumis sativus L.) with a longer postharvest shelf life. Each sample was evaluated for commercial quality (fruit aging, weight loss, wilting, yellowing, chilling injury, and rotting) every 7 days of storage. Simple and multiple binary logistic regression models were applied in which the dependent variable was the probability of marketability and the independent variables were the days of storage, cultivars, fruit weight loss, and months of evaluation. The results showed that cucumber cultivars with a longer shelf life can be selected by a simple and multiple binary logistic regression analysis. Storage time was the main determinant of fruit marketability. Fruit weight loss strongly influenced the probability of marketability. The logistic model allowed us to determine the cucumber weight loss percentage over which a fruit would be rejected in the market.

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Díaz-Pérez, M., Carreño-Ortega, Á., Salinas-Andújar, J. A., & Callejón-Ferre, Á. J. (2019). Application of logistic regression models for the marketability of cucumber cultivars. Agronomy, 9(1). https://doi.org/10.3390/agronomy9010017

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