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Estimating Missing Data and Determining the Confidence of the Estimate Data

机译:估计缺失数据并确定估计数据的置信度

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A Computational Intelligence approach to estimate missing data makes use of Autoassociative Neural Networks (ANN) and a stochastic optimization technique. The ANN captures interrelationships within data and the optimization technique estimates probable values that are used as inputs to the ANN. The optimum estimate is one that has a minimum influence on the output of the ANN. A method to determine the confidence of this estimate is presented in this paper. An ensemble of ANNs with a Multi Layer Perceptron architecture is collected using Bayesian training methods. The percentage of the most dominant estimate values is used as a confidence measure. The South African antenatal seroprevalence survey data is used and the HIV status of the patients is estimated. It was found that the missing data could be estimated with an overall accuracy of 68% and the confidence ranges between 50% and 97%. Estimates that have a confidence exceeding 70% have 88% estimation accuracy.
机译:估计缺失数据的计算智能方法利用自动关联神经网络(ANN)和随机优化技术。 ANN捕获数据中的相互关系,优化技术估计用作ANN的输入的可能值。最佳估计是对ANN​​的产出产生最低影响的估计。本文提出了一种确定该估计置信度的方法。使用贝叶斯训练方法收集具有多层Perceptron架构的ANNS的集合。最占主导地位值的百分比用作置信度量。使用南非产前血清透析调查数据,估计患者的HIV状态。发现缺失的数据可以估计68%的总精度,置信范围在50%和97%之间。置信度超过70%的估计有88%的估计准确性。

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