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Agricultural Recommendation System for Crops Using Different Machine Learning Regression Methods
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Author(s): Mamata Garanayak (School of Computer Engineering, KIIT University (Deemed), Bhubaneswar, India), Goutam Sahu (Department of Computer Science and Engineering, Centurion University of Technology and Management, Bhubaneswar, India), Sachi Nandan Mohanty (Department of Computer Engineering, College of Engineering Pune, Pune, India)and Alok Kumar Jagadev (School of Computer Engineering, KIIT University (Deemed), Bhubaneswar, India)
Copyright: 2021
Volume: 12
Issue: 1
Pages: 20
Source title:
International Journal of Agricultural and Environmental Information Systems (IJAEIS)
Editor(s)-in-Chief: Frederic Andres (National Institute of Informatics, Japan), Chutiporn Anutariya (Asian Institute of Technology, Thailand), Teeradaj Racharak (Japan Advanced Institute of Science and Technology, Japan)and Watanee Jearanaiwongkul (National institute of Informatics, Japan)
DOI: 10.4018/IJAEIS.20210101.oa1
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Abstract
Agriculture is a foremost field within the world, and it's the backbone in the Republic of India. Agriculture has been in poor condition. The impact of temperature variations and its uncertainty has engendered the bulk of the agricultural crops to be overripe in terms of their manufacturing. A correct forecast of crop expansion is a vital character in crop forecast management. Such forecasts will hold up the federated industries for accomplishing the provision of their occupation. ML is the method of finding new models from giant information sets. Numerous regressive ways like random forest, linear regression, decision tree regression, polynomial regression, and support vector regression will be used for the aim. Area and production are among the meteorological information that's made by necessary data. This paper figures out the yield recommendation of the crop by the accurate comparison of numerous machine learning ML regressions where the overall percentage improvement over several existing methods is 3.6%.
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