利用图基深度高效估计生成模型

Algorithms Pub Date : 2024-03-13 DOI:10.3390/a17030120
Minh-Quan Vo, Thu Nguyen, M. Riegler, Hugo L. Hammer
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引用次数: 0

摘要

生成模型最近受到了广泛关注。然而,这类模型面临的一个挑战是,通常无法计算似然函数,这使得模型的参数估计或训练具有挑战性。最常用的替代策略称为无似然估计,其基础是找到模型参数值,使一组选定的统计量在数据集和模型生成的样本中具有相似的值。然而,如何选择能有效估计未知参数的统计量是一个难题。最常用的统计量是变量间的均值向量、方差和相关性,但它们在估计未知参数时的相关性可能较低。我们建议在无似然估计中使用图基深度等值线(TDC)作为统计量。TDC 非常灵活,几乎可以捕捉到多元数据的任何属性,此外,它们在无似然估计方面似乎尚未被开发。我们证明,在无似然估计中,TDC 统计能比均值、方差和相关性更有效地估计未知参数。我们进一步将 TDC 统计法应用于估计计算机系统请求的属性,证明了其在现实生活中的适用性。所建议的方法能够有效地找到请求分布的未知参数,并量化估计的不确定性。
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Efficient Estimation of Generative Models Using Tukey Depth
Generative models have recently received a lot of attention. However, a challenge with such models is that it is usually not possible to compute the likelihood function, which makes parameter estimation or training of the models challenging. The most commonly used alternative strategy is called likelihood-free estimation, based on finding values of the model parameters such that a set of selected statistics have similar values in the dataset and in samples generated from the model. However, a challenge is how to select statistics that are efficient in estimating unknown parameters. The most commonly used statistics are the mean vector, variances, and correlations between variables, but they may be less relevant in estimating the unknown parameters. We suggest utilizing Tukey depth contours (TDCs) as statistics in likelihood-free estimation. TDCs are highly flexible and can capture almost any property of multivariate data, in addition, they seem to be as of yet unexplored for likelihood-free estimation. We demonstrate that TDC statistics are able to estimate the unknown parameters more efficiently than mean, variance, and correlation in likelihood-free estimation. We further apply the TDC statistics to estimate the properties of requests to a computer system, demonstrating their real-life applicability. The suggested method is able to efficiently find the unknown parameters of the request distribution and quantify the estimation uncertainty.
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