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Supervised Machine learning Approach for Crop Yield Prediction in Agriculture Sector

机译:有监督的机器学习方法在农业领域的农作物产量预测中

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Machine learning (ML) is a crucial perspective for acquiring real-world and operative solution for crop yield issue. From a given set of predictors, ML can predict a target/outcome by using Supervised Learning. To get the desired outputs need to generate a suitable function by set of some variables which will map the input variable to the aim output. Crop yield prediction incorporates forecasting the yield of the crop from past historical data which includes factors such as temperature, humidity, ph, rainfall, crop name. It gives us an idea for the finest predicted crop which will be cultivate in the field weather conditions. These predictions can be done by a machine learning algorithm called Random Forest. It will attain the crop prediction with best accurate value. The algorithm random forest is used to give the best crop yield model by considering least number of models. It is very useful to predict the yield of the crop in agriculture sector
机译:机器学习(ML)是获取现实世界和作物产量问题的有效解决方案的重要视角。根据给定的一组预测变量,机器学习可以使用监督学习预测目标/结果。为了获得所需的输出,需要通过设置一些变量来生成合适的函数,这些变量会将输入变量映射到目标输出。作物产量预测包括根据过去的历史数据预测作物的产量,这些历史数据包括温度,湿度,ph值,降雨,作物名称等因素。它为我们提供了在田间天气条件下将要种植的最好的预测作物的想法。这些预测可以通过称为随机森林的机器学习算法来完成。它将以最准确的值获得作物预测。通过考虑最少的模型数量,使用算法随机森林来提供最佳的作物产量模型。预测农业部门的农作物产量非常有用

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