FAO AGRIS - International System for Agricultural Science and Technology

Machine learning-based comparative analysis of weather-driven rice and sugarcane yield forecasting models

2024

V. B. Virani | Neeraj Kumar | D. S. Rathod | D. P. Mobh


Bibliographic information
Publisher
Association of Rice Research Workers
Other Subjects
Random forest; Booster
Language
English
Format
application/pdf
License
Copyright (c) 2024 Association of Rice Research Workers, http://creativecommons.org/licenses/by/4.0
Type
Journal Article; Journal Part; Journal Article; Journal Part
Source
ORYZA-An International Journal of Rice; Vol. 61 No. 2 (2024): April-June; 150-159, 2249-5266, 0474-7615

2024-06-18
2025-10-25
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