Litcius/Paper detail

Harnessing the power of machine learning for crop improvement and sustainable production

Seyed Mahdi Hosseiniyan Khatibi, Jauhar Ali

2024Frontiers in Plant Science32 citationsDOIOpen Access PDF

Abstract

Crop improvement and production domains encounter large amounts of expanding data with multi-layer complexity that forces researchers to use machine-learning approaches to establish predictive and informative models to understand the sophisticated mechanisms underlying these processes. All machine-learning approaches aim to fit models to target data; nevertheless, it should be noted that a wide range of specialized methods might initially appear confusing. The principal objective of this study is to offer researchers an explicit introduction to some of the essential machine-learning approaches and their applications, comprising the most modern and utilized methods that have gained widespread adoption in crop improvement or similar domains. This article explicitly explains how different machine-learning methods could be applied for given agricultural data, highlights newly emerging techniques for machine-learning users, and lays out technical strategies for agri/crop research practitioners and researchers.

Topics & Concepts

Machine learningComputer scienceArtificial intelligencePrincipal (computer security)Production (economics)Crop productionPredictive powerData scienceAgricultureEconomicsEcologyBiologyOperating systemMacroeconomicsEpistemologyPhilosophySmart Agriculture and AIRemote Sensing in AgricultureGenetics and Plant Breeding