Machine Learning Algorithm for Determining the Best Performance in Predicting Turmeric Production in Indonesia

D. Setiawan, Solikhun Solikhun
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Abstract

The herb that has many uses in everyday life is turmeric. Not only in Indonesia but in other countries also use turmeric for consumption. Therefore, by making predictions on the level of turmeric production in the country, so that the government or other parties can use this as a reference and reference to solve problems. The method we use is Resilient Backpropagation where this method is one of the methods that is often used to forecast data. By using turmeric plant production data in Indonesia from 2016-2021 taken on the website of the Indonesian Central Statistics Agency. According to the data to be tested a network architecture model is formed, namely 2-15-1, 2-20-1, 2-25- 1 and 2-30-1. From this model, the Fletcher-Reeves method is used. From the 4 models that have been trained and tested, a 2-15-1 model is obtained to be the best architectural model for each method. The accuracy level of the Fletcher-Reeves method with the 2-15-1 model has an MSE value of 0.002481597.
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确定印度尼西亚姜黄产量预测最佳性能的机器学习算法
在日常生活中有很多用途的草药是姜黄。不仅在印度尼西亚,而且在其他国家也使用姜黄作为消费。因此,通过对该国的姜黄产量水平进行预测,使政府或其他方面可以以此作为参考和参考来解决问题。我们使用的方法是弹性反向传播,这种方法是经常用于预测数据的方法之一。通过使用印度尼西亚中央统计局网站上2016-2021年的印度尼西亚姜黄植物生产数据。根据待测数据,形成了2-15-1、2-20-1、2-25- 1、2-30-1的网络结构模型。从这个模型中,使用了Fletcher-Reeves方法。从经过训练和测试的4个模型中,得到了一个2-15-1模型作为每种方法的最佳体系结构模型。基于2-15-1模型的Fletcher-Reeves方法精度水平的MSE值为0.002481597。
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