农业
持续性
国内生产总值
农业生产力
人工神经网络
计算机科学
产品(数学)
生产(经济)
可持续农业
机器学习
农业经济学
人工智能
经济
数学
地理
经济增长
生物
生态学
宏观经济学
考古
几何学
作者
Adedeji Charles Adeyemo,Bence Bogdandy,Zsolt Tóth
标识
DOI:10.1109/saci51354.2021.9465608
摘要
Prediction of economical growth is a complex task which is essential for planning sustainable economy. The economy has a wide range of indicators that are monitored and recorded by governments and international organizations. Agriculture is one of the most essential factors to modern day economical sustainability. The Food and Agriculture Organization keeps essential agricultural data sets which consist of records on production of crops and other agricultural products whose production strongly relates to the Gross Domestic Product of many countries. Assuming that total crop production and agricultural economy growth are highly related, the production of crops and total value of income from agriculture can be learnt by machine learning models. As data is recorded along an axis of time, it can be interpreted as a time series of various factors. Recurrent Neural Network excel in learning time series and sequential data. This paper presents experimental results on training various recurrent neural networks for modeling the changes of Agricultural and Gross Domestic Products. The paper details the data transformation, model building and model validation steps. Our experimental results showed that the models could achieve 85% accuracy.
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