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首页> 外文期刊>Journal of applied statistics >Analysis of batched service time data using Gaussian and semi-parametric kernel models
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Analysis of batched service time data using Gaussian and semi-parametric kernel models

机译:使用高斯和半参数核模型分析批量服务时间数据

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摘要

Batched data is a type of data where each observed data value is the sum of a number of grouped (batched) latent ones obtained under different conditions. Batched data arises in various practical backgrounds and is often found in social studies and management sector. The analysis of such data is analytically challenging due to its structural complexity. In this article, we describe how to analyze batched service time data, estimate the mean and variance of each batch that are latent. We in particular focus on the situation when the observed total time includes an unknown proportion of non-service time. To address this problem, we propose a Gaussian model for efficiency as well as a semi-parametric kernel density model for robustness. We evaluate the performance of both proposed methods through simulation studies and then applied our methods to analyze a batched data.
机译:批量数据是一种数据类型,其中每个观察到的数据值是在不同条件下获得的多个分组(批次)潜在的数据的总和。批量数据出现在各种实际背景中,通常在社会研究和管理部门中找到。由于其结构复杂性,对这些数据的分析是分析挑战。在本文中,我们描述了如何分析批量服务时间数据,估计每个批次的均值和方差。我们特别关注观察到的总时间包括未知的非服务时间比例的情况。为了解决这个问题,我们提出了一种高斯模型的效率,以及用于鲁棒性的半参数核密度模型。我们通过仿真研究评估两个提出方法的性能,然后应用我们的方法来分析批量数据。

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