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Semiparametric Estimation of a Two-component Mixture Model where One Component is known

机译:已知一种成分的两成分混合模型的半参数估计

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We consider a two-component mixture model where one component distribution is known while the mixing proportion and the other component distribution are unknown. These kinds of models were first introduced in biology to study the differences in expression between genes. The various estimation methods proposed till now have all assumed that the unknown distribution belongs to a parametric family. In this paper, we show how this assumption can be relaxed. First, we note that generally the above model is not identifiable, but we show that under moment and symmetry conditions some 'almost everywhere' identifiability results can be obtained. Where such identifiability conditions are fulfilled we propose an estimation method for the unknown parameters which is shown to be strongly consistent under mild conditions. We discuss applications of our method to microarray data analysis and to the training data problem. We compare our method to the parametric approach using simulated data and, finally, we apply our method to real data from microarray experiments.
机译:我们考虑两组分混合模型,其中一种组分的分布已知,而混合比例和另一种组分的分布未知。这类模型首先在生物学中引入,以研究基因之间表达的差异。迄今为止提出的各种估计方法都假设未知分布属于参数族。在本文中,我们展示了如何放松这一假设。首先,我们注意到上述模型通常是不可识别的,但是我们表明,在力矩和对称条件下,可以获得“几乎无处不在”的可识别性结果。在满足此类可识别性条件的情况下,我们提出了一种未知参数的估计方法,该方法在温和条件下表现出强烈的一致性。我们讨论了我们的方法在微阵列数据分析和训练数据问题中的应用。我们将我们的方法与使用模拟数据的参数方法进行比较,最后,将我们的方法应用于来自微阵列实验的真实数据。

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