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首页> 外文期刊>Indian Journal of Science and Technology >A Tourism Arrival Forecasting using Genetic Algorithm based Neural Network
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A Tourism Arrival Forecasting using Genetic Algorithm based Neural Network

机译:基于遗传算法的神经网络旅游人数预测

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Background: Tourism industry is very important for a country. Many tourists travel into a country will help and improve its economic growth. Methods: Many researchers used Backpropagation Neural Network (BPNN) for predicting tourist arrivals in a country. As the result, BPNN is proven to give good results, but the accuracy is still less than optimal. This study uses series dataset from the arrival of foreign tourists in the district of Central Java’s: Magelang, Solo, and Wonosobo from 1991 to 2013. We compared the performance of BPNN, K-Nearest Neighbor (KNN) and Multiple Linier Regression (MLR). Genetic Algorithm is used to optimize the parameters of BPNN, such as learning rate, training cycle, and momentum. The performance is measured by Root Mean Square Error (RMSE). Findings: BPNN produces small error of prediction compare to KNN and MLR. KNN performed the worst when used to predict. Improvements: Genetic algorithm proved to be able to optimize the parameters of BPNN. GA is able to minimize the error of the prediction of BPNN.
机译:背景:旅游业对于一个国家来说非常重要。许多游客进入一个国家将有助于并改善其经济增长。方法:许多研究人员使用反向传播神经网络(BPNN)来预测一个国家的游客人数。结果,已证明BPNN可以提供良好的结果,但准确度仍未达到最佳。这项研究使用了从1991年到2013年外国游客到达中爪哇(Magelang,Solo和Wonosobo)地区的系列数据集。我们比较了BPNN,K最近邻(KNN)和多线性回归(MLR)的表现。遗传算法用于优化BPNN的参数,例如学习率,训练周期和动量。性能由均方根误差(RMSE)衡量。结果:与KNN和MLR相比,BPNN产生较小的预测误差。当用于预测时,KNN表现最差。改进:遗传算法被证明能够优化BPNN的参数。遗传算法能够使BPNN预测的误差最小化。

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