Analysis of Missing Health Care Data by Effective Adaptive DASO Based Naive Bayesian Model

Anbumani K, Murali Dhar M S, Jasmine J, Subramanian P, Mahaveerakannan R, John Justin Thangaraj S
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Abstract

Inevitably, researchers in the field of medicine must deal with the issue of missing data. Imputation is frequently employed as a solution to this issue. Unfortunately, the perfect would overfit the experiential data distribution due to the uncertainty introduced by imputation, which would have a negative effect on the replica's generalisation presentation. It is unclear how machine learning (ML) approaches are applied in medical research despite claims that they can work around lacking data. We hope to learn if and how machine learning prediction model research discuss how they deal with missing data. Information contained in EHRs is evaluated to ensure it is accurate and comprehensive. The missing information is imputed from the recognised EHR record. The Predictive Modelling approach is used for this, and the Naive Bayesian (NB) model is then used to assess the results in terms of performance metrics related to imputation. An adaptive optimisation technique, called the Adaptive Dolphin Atom Search Optimisation (Adaptive DASO) procedure, is used to teach the NB. The created Adaptive DASO method syndicates the DASO procedure with the adaptive idea. Dolphin Echolocation (DE) and Atom Search Optimisation (ASO) come together to form DASO. This indicator of performance metrics verifies imputation's fullness.
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基于有效自适应DASO朴素贝叶斯模型的医疗数据缺失分析
不可避免地,医学领域的研究人员必须处理数据缺失的问题。对于这个问题,通常采用归因法来解决。不幸的是,由于归算引入的不确定性,完美会过度拟合经验数据分布,这将对副本的泛化表示产生负面影响。目前尚不清楚机器学习(ML)方法如何应用于医学研究,尽管有人声称它们可以解决缺乏数据的问题。我们希望了解机器学习预测模型研究如何讨论它们如何处理缺失数据。对电子病历中包含的信息进行评估以确保其准确和全面。缺失的信息是从认可的电子病历记录中输入的。预测建模方法用于此,然后使用朴素贝叶斯(NB)模型来评估与代入相关的性能指标的结果。一种自适应优化技术,称为自适应海豚原子搜索优化(自适应DASO)过程,用于教NB。所创建的自适应DASO方法将DASO过程与自适应思想联合在一起。海豚回声定位(DE)和原子搜索优化(ASO)结合在一起形成了DASO。这个性能指标验证了估算的完备性。
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