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Robust Survey Aggregation with Student-t Distribution and Sparse Representation

机译:具有学生-T分布和稀疏表示的强大调查聚合

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Most existing survey aggregation methods assume that the sample data follow Gaussian distribution. However, these methods are sensitive to outliers, due to the thin-tailed property of Gaussian distribution. To address this issue, we propose a robust survey aggregation method based on Student-t distribution and sparse representation. Specifically, we assume that the samples follow Student-t distribution, instead of the common Gaussian distribution. Due to the Student-t distribution, our method is robust to outliers, which can be explained from both Bayesian point of view and non-Bayesian point of view. In addition, inspired by James-Stain estimator (JS) and Compressive Averaging (CAvg), we propose to sparsely represent the global mean vector by an adaptive basis comprising both data-specific basis and combined generic basis. Theoretically, we prove that JS and CAvg are special cases of our method. Extensive experiments demonstrate that our proposed method achieves significant improvement over the state-of-the-art methods on both synthetic and real datasets.
机译:大多数现有的调查聚合方法假设样本数据遵循高斯分布。然而,由于高斯分布的薄尾性特性,这些方法对异常值敏感。要解决此问题,我们提出了一种基于学生-T分布和稀疏表示的强大调查聚合方法。具体而言,我们假设样品遵循学生-T分布,而不是共同的高斯分布。由于学生-T分配,我们的方法对异常值强大,这可以从贝叶斯观点和非贝叶斯观点来解释。此外,由詹姆斯 - 污染估计器(JS)和压缩平均(CAVG)的启发,我们建议通过适应性的自适应基础稀疏地代表全局平均矢量,包括数据特定的基础和组合的通用基础。从理论上讲,我们证明了JS和CAVG是我们方法的特殊情况。广泛的实验表明,我们所提出的方法达到了对合成和实际数据集的最先进方法的显着改进。

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