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Construction Model Using Machine Learning Techniques for the Prediction of Rice Produce for Farmers

机译:利用机器学习技术对农民稻米生产的施工模型

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摘要

Nowadays, the researches in data mining area have been continuous increasing. Appling data mining to agriculture; for example, the prediction of rice produce for farmers is still challenging. The objective of the research is to propose a model using Machine Learning Techniques comparing between Decision Tree Technique and Neural Network Technique (ANN) for the prediction of rice produce for farmers. Farmers can predict volume of rice produce and selling price. It is helpful for farmers to increase their income. The process of the research follows Cross-industry standard process for data mining (CRISP-DM) process. The model pattern is classified by machine learning techniques experiment with a dataset of farmer records. Performance measure of model pattern uses four options such as Test Options, Cross-Validation Folds 10, Split 80-20, and Use Training Set. After that, four options will be averaged for accuracy. The experimental result shows that the best technique which has highest accuracy can be helpful for farmers in real world.
机译:如今,数据挖掘区域的研究一直在持续增加。应用数据挖掘到农业;例如,农民水稻生产的预测仍然具有挑战性。该研究的目的是提出使用机器学习技术的模型,比较决策树技术与神经网络技术(ANN)对农民稻米生产的预测。农民可以预测大米产量和销售价格的数量。农民增加收入是有帮助的。该研究的过程遵循数据挖掘(CRISP-DM)过程的跨行业标准过程。模型模式由机器学习技术进行分类,实验与农民记录数据集。模型模式的性能测量使用四种选项,如测试选项,交叉验证折叠10,拆分80-20,以及使用培训集。之后,将平均四种选择以准确率。实验结果表明,具有最高精度的最佳技术可能对现实世界的农民有所帮助。

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