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Adaptive Generalized Estimation Equation with Bayes Classifier for the Job Assignment Problem

机译:具有贝叶斯分类器的工作分配问题的自适应广义估计方程。

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We propose combining advanced statistical approaches with data mining techniques to build classifiers to enhance decision-making models for the job assignment problem. Adaptive Generalized Estimation Equation (AGEE) approaches with Gibbs sampling under Bayesian framework and adaptive Bayes classifiers based on the estimations of AGEE models which uses modified Naive Bayes algorithm are proposed. The proposed classifiers have several important features. Firstly, it accounts for the correlation among the outputs and the indeterministic subjective noise into the estimation of parameters. Secondly, it reduces the number of attributes used to predict the class. Moreover, it drops the assumption of independence made by the Naive Bayes classifier. We apply our techniques to the problem of assigning jobs to Navy officers, with the goal of enhancing happiness for both the Navy and the officers. The classification results were compared with nearest neighbor, Multi-Layer Perceptron and Support Vector Machine approaches.
机译:我们建议将高级统计方法与数据挖掘技术相结合,以建立分类器,以增强工作分配问题的决策模型。提出了基于贝叶斯框架的吉布斯采样和自适应贝叶斯分类器的自适应广义估计方程(AGEE)方法,该方法基于AGEE模型的估计,采用改进的朴素贝叶斯算法。提出的分类器具有几个重要特征。首先,它将输出和不确定性主观噪声之间的相关性考虑到参数的估计中。其次,它减少了用于预测类的属性的数量。此外,它删除了朴素贝叶斯分类器做出的独立性假设。我们将技术应用于分配给海军军官的问题,目的是增强海军和军官的幸福感。将分类结果与最近邻,多层感知器和支持向量机方法进行比较。

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