Assessing Predictive Models for Tea Yield: A Statistical and Machine Learning Approach in Assam's Biswanath Chariali District

Deka, Pal and Tanti, Nabajit and Neog, Prasanta (2024) Assessing Predictive Models for Tea Yield: A Statistical and Machine Learning Approach in Assam's Biswanath Chariali District. Journal of Experimental Agriculture International, 46 (7). pp. 526-534. ISSN 2457-0591

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Abstract

Climatic factors significantly impact Assam tea production. The tropical climate of Assam, characterized by high precipitation and temperatures up to 36°C during the monsoon, creates ideal conditions for tea cultivation, contributing to the region's unique malty flavor. Here, in this study an attempt has been made to bring a comparison among statistical and machine learning models in prediction of tea production and evaluate an optimal model among them. A time span of last 23 years data were collected from Biswanath College of Agriculture under Assam Agriculture University situated at Biswanath Chariali district. The study has found that mean absolute percentage error of random forest regression model is 6.49 percent followed by decision tree (7.3 percent) and linear regression model (7.5 percent). From the evaluation metrics, random forest algorithm fits well in comparison to decision tree and linear regression. This study could be generalized to comparison among more predictive machine learning models.

Item Type: Article
Subjects: Euro Archives > Agricultural and Food Science
Depositing User: Managing Editor
Date Deposited: 24 Jun 2024 06:38
Last Modified: 24 Jun 2024 06:38
URI: http://publish7promo.com/id/eprint/4812

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