Poverty Classification in Indonesia Using BiGRU, BPNN, and Stacking
AdaBoost Frameworks
Khalisha Ariyani,
Silvia Ratna,
M. Muflih
et al.
Abstract:This research addresses the persistent global challenge of poverty, with a specific focus on
Indonesia, a nation with a population exceeding 270 million. The primary objective is to enhance
the precision and reliability of poverty classification using advanced machine learning
technologies. We employed a combination of Bidirectional Gated Recurrent Unit (BiGRU),
Backpropagation Neural Network (BPNN), and stacking techniques with AdaBoost to develop an
innovative classification model. The methodology involved t… Show more
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