Model Structure of Fetal Health Status Prediction

Emirul Bahar, Dewi Agushinta R., Yuti Dewita Arimbi, Mariono Reksoprodjo
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引用次数: 2

Abstract

One of the issues of pregnant mothers in Indonesia is their access speed and accuracy services availability towards the prediction of fetus or baby conceived during pregnancy. Thus, the research aimed to obtain the ability to predict three ranges of a fetal target, namely normal, risk, and abnormal condition. This research emphasized the modeling aspect of supervised learning using seven different algorithms to obtain an optimal working score. Those are Decision Tree, Gradient Boosting, Random Forest, SVM, k-NN, AdaBoost, and Stochastic Gradient Descent (SGD). The structure process is mainly divided into two steps, pre-process model and the prediction model. An early data pre-process is needed before executing. Prediction output indicated that dataset test is valid, and can be proven by comparing between the testing data table and prediction and testing table diagram. The resulting model has described the sequence for simulating the training and testing data model to produce the highest working score from the seven selected algorithms. The simulated data based on the model created is proved its validity thru three main filter processes, which are missing data solution, outlier data control, and data normalization. The result obtained a working score that has data proximity with a low score range of 0.063 from model evaluation, confusion matrix, and prediction output.
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胎儿健康状态预测的模型结构
印度尼西亚孕妇面临的问题之一是她们能否获得、速度和准确的服务,以预测怀孕期间怀孕的胎儿或婴儿。因此,本研究旨在获得对正常、危险和异常三个胎儿目标范围的预测能力。本研究强调了监督学习的建模方面,使用七种不同的算法来获得最佳工作分数。它们是决策树、梯度增强、随机森林、支持向量机、k-NN、AdaBoost和随机梯度下降(SGD)。构造过程主要分为预处理模型和预测模型两个步骤。在执行之前需要一个早期的数据预处理。预测输出表明数据集测试是有效的,可以通过测试数据表和预测测试表图的对比来证明。结果模型描述了模拟训练和测试数据模型的顺序,以从七个选定的算法中产生最高的工作分数。通过缺失数据处理、离群数据控制和数据归一化三个主要滤波过程,验证了该模型的有效性。结果从模型评价、混淆矩阵和预测输出中获得了一个数据接近度较低的工作分数0.063。
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