LGJun 24, 2021

Automated Agriculture Commodity Price Prediction System with Machine Learning Techniques

arXiv:2106.12747v145 citations
Originality Synthesis-oriented
AI Analysis

This addresses the need for accurate price prediction in agriculture, but it is incremental as it applies existing methods to new data.

The research tackled the problem of predicting agricultural commodity prices by designing an automated system that compared five machine learning algorithms, selecting LSTM as the most optimal with an average mean-square error of 0.304.

The intention of this research is to study and design an automated agriculture commodity price prediction system with novel machine learning techniques. Due to the increasing large amounts historical data of agricultural commodity prices and the need of performing accurate prediction of price fluctuations, the solution has largely shifted from statistical methods to machine learning area. However, the selection of proper set from historical data for forecasting still has limited consideration. On the other hand, when implementing machine learning techniques, finding a suitable model with optimal parameters for global solution, nonlinearity and avoiding curse of dimensionality are still biggest challenges, therefore machine learning strategies study are needed. In this research, we propose a web-based automated system to predict agriculture commodity price. In the two series experiments, five popular machine learning algorithms, ARIMA, SVR, Prophet, XGBoost and LSTM have been compared with large historical datasets in Malaysia and the most optimal algorithm, LSTM model with an average of 0.304 mean-square error has been selected as the prediction engine of the proposed system.

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