The Implementation of Machine Learning and Deep Learning Algorithms for Crop Yield Prediction in Agriculture


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AGRI ARTIC 2nd Rahimov

5. Conclusion
In recent years, machine learning techniques, 
such as multivariate linear regression (MLR), 
multiple regression (MR), and deep neural networks 
(DNN), have shown promising results in crop yield 
prediction. In this paper, we evaluated the 
performance of MLR, MR, and DNN models in 
predicting crop yield using a publicly available 
dataset. Our results show that GBRT outperforms 
MLR,DNN and MR models in terms of prediction 
accuracy, with lower mean absolute error (MAE) 
and root mean squared error (RMSE) values. This 
indicates that GBRT is better suited for modeling 
multi-functional relationships between crop yield 
and various environmental and management factors.
However, we also note that the choice of 
algorithm for crop yield prediction depends on 
several factors, including the complexity of the 
problem, the amount and quality of data, and the 
specific application requirements. While GBRT 
may perform better in some cases, MLR, DNN and 
MR models can be more interpretable and easier to 
implement in certain scenarios. 
In our future works, we aim to expand the 
dataset by collecting more data with varying 
specifications, including a new features for effecting 
crops, creating new application to collect the 
agricultural data from farmers, reducing range of 


Bulletin of TUIT: Management and Communication Technologies
Nodir Rahimov, Dilmurod Khasanov 
2023.Vol-2(4) 
learning area (specific area from central Asia). By 
doing so, we can improve the generalization and 
prediction performance of the prediction model
making it more effective in the real world. 
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021-02191-y 

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