Dwi Marisa Midyanti, Syamsul Bahri, S. Suhardi, H. I. Midyanti
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引用次数: 0
摘要
Bantuan Langsung Tunai Dana Desa (BLT-DD),或称为村庄基金直接现金援助,是印度尼西亚政府的援助,当援助没有达到目标时,会在社区中引起问题和冲突。该分类算法已被证明可用于确定BLT-DD接收者。本研究比较了径向基函数(RBF)和elman递归神经网络(ERNN)模型对BLTDD受者资格的分类。在实验中,比较了RBF和ERNN在确定BLT-DD接受者资格方面的最优性能。并与实现相同数据的分类算法,即Kubu Raya区的BLT-DD数据进行了比较。实验结果表明,RBF模型在识别测试数据方面是有效的,而ERNN模型在识别测试数据方面是有效的。RBF和ERNN模型的总准确率均为98.10%。
Eligibility of village fund direct cash assistance recipients using artificial neural network
Bantuan Langsung Tunai Dana Desa (BLT-DD), or known as Village Fund Direct Cash Assistance is assistance from the Indonesian government which causes problems and conflicts in the community when the assistance is not on target. The classification algorithm is proven to use in determining BLT-DD recipients. In this study, the radial basis function (RBF) and elman recurrent neural network (ERNN) models compare to classify the eligibility of BLTDD recipients. In the experiment, the optimal performance of the RBF and ERNN compare in determining the eligibility of BLT-DD recipients. Also, it’s compared with the classification algorithm that implements the same data, namely BLT-DD data for Kubu Raya District. The experimental results show the effectiveness of the RBF model in recognizing test data, while the ERNN model is effective in identifying test data. The RBF and ERNN models can achieve the same total accuracy of 98.10%.