Application of backpropagation artificial neural network to predict human development index of Maluku Province

Y. A. Lesnussa, F. Y. Rumlawang, B. P. Tomasouw, V. Y. I. Ilwaru
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Abstract

The Human Development Index (HDI)) is a comparative measurement of longevity and healthy living, education, and a decent standard of living, for all countries throughout the world. HDI is used to classify whether a country is a developed country, a developing country or an underdeveloped country and also to measure the effect of economic policies on quality of life. In Indonesia HDI is one of the important indicators in measuring success in efforts to build the quality of human life (community/population), determine the rank or level of development of an area and as a allocator for determining general allocation funds. However, in reality the calculation and publication time of HDI by the Central Bureau of Statistics takes quite a long time. So this research aims to predict the HDI value of Maluku Province for the next 5 years using the Artificial Neural Network (ANN) Backpropagation method. And also, design or build an application system with the Graphic User Interface (GUI) Matlab to facilitate the calculation of prediction HDI values by each user. The research obtained the best prediction accuracy level using the learning rate (α) = 0.1, Target Error = 0.0000001, Maximum epoch = 500, network architecture 3-3-1, and scheme of data composition consists of 80% training data and 20% testing data. The percentage of prediction accuracy obtained for Maluku Province HDI is 99.57%, the average percentage of absolute error (MAPE) is 0.0043%. The pattern of predictive data shows an increase in HDI values from 2019-2023.
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应用反向传播人工神经网络预测马鲁古省人类发展指数
人类发展指数(HDI)是衡量世界各国寿命和健康生活、教育以及体面生活水平的比较指标。人类发展指数用于区分一个国家是发达国家、发展中国家还是欠发达国家,也用于衡量经济政策对生活质量的影响。在印度尼西亚,人类发展指数是衡量建立人类生活质量(社区/人口)的努力取得成功的重要指标之一,确定一个地区的发展等级或水平,并作为确定一般拨款资金的分配办法。然而,在现实中,中央统计局计算和公布人类发展指数需要相当长的时间。因此,本研究旨在利用人工神经网络(ANN)反向传播方法预测马鲁古省未来5年的HDI值。并利用图形用户界面(GUI) Matlab设计或构建应用系统,方便各用户计算预测HDI值。采用学习率(α) = 0.1, Target Error = 0.0000001, Maximum epoch = 500,网络结构3-3-1,数据组成方案为80%训练数据和20%测试数据,得到了最佳的预测精度水平。马鲁古省HDI预测正确率为99.57%,平均绝对误差百分比(MAPE)为0.0043%。预测数据的模式显示,2019-2023年人类发展指数值有所增加。
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