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Data Mining Classification Approach to Predict The Duration of Contraceptive Use

机译:数据挖掘分类方法预测避孕用途的持续时间

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Family planning program implementation in Indonesia has a plethora of challenges. One of the biggest challenges to implement the family planning program in Indonesia is the huge percentage of contraceptive discontinuation rates for around 29% in 2019. Based on that problem, the data mining classification approach is proposed to produce a model that can predict the duration of contraceptive use by productive couples. Through Cross-Industry Standard Process for Data Mining (CRISP-DM) process, it tested four experiments to seven data mining techniques with 39.594 contraceptives used histories dataset which is sourced from the Demography and Health Survey of Indonesia (DHS) in 2017. The result shows that the Adaboost data mining technique produced the best performance of contraceptive used prediction model, with the accuracy score of the classification model as 85.1%, precision score as 85.1%, recall score as 85.2%, and F1 as 85.1%. The model produced in this study can be used to estimate the length/duration of a particular type of contraceptive method which is used by each productive couple. That information is useful to prevent discontinuation potencies among contraceptive users for a further period.
机译:印度尼西亚的计划生育计划实施具有普遍的挑战。实现印度尼西亚计划生育计划的最大挑战之一是避孕禁止停止率大约2019年的巨大比例。根据该问题,提出了数据挖掘分类方法来生产一种可以预测持续时间的模型生产夫妇的避孕用途。通过跨行业标准过程进行数据挖掘(CRISP-DM)过程,它测试了四个数据挖掘技术,39.594避孕药用于2017年由印度尼西亚(DHS)的人口统计和健康调查所属的历史数据集。结果表明,Adaboost数据挖掘技术产生了避孕使用预测模型的最佳性能,分类模型的精度得分为85.1%,精度得分为85.1%,召回得分为85.2%,F1为85.1%。本研究中产生的模型可用于估计每个生产夫妇使用的特定类型避孕方法的长度/持续时间。该信息可用于防止避孕药中的停药效率进一步。

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