首页> 外文期刊>Australian & New Zealand journal of statistics >STATISTICAL INFERENCE FOR CURVED FIBROUS OBJECTS IN 3D-BASED ON MULTIPLE SHORT OBSERVATIONS OF MULTIVARIATE AUTOREGRESSIVE PROCESSES
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STATISTICAL INFERENCE FOR CURVED FIBROUS OBJECTS IN 3D-BASED ON MULTIPLE SHORT OBSERVATIONS OF MULTIVARIATE AUTOREGRESSIVE PROCESSES

机译:基于多元自回归过程的多次简短观测的3D弯曲纤维对象的统计推断

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摘要

This paper deals with statistical inference on the parameters of a stochastic model, describing curved fibrous objects in three dimensions, that is based on multivariate autoregressive processes. The model is fitted to experimental data consisting of a large number of short independently sampled trajectories of multivariate autoregressive processes. We discuss relevant statistical properties (e.g. asymptotic behaviour as the number of trajectories tends to infinity) of the maximum likelihood (ML) estimators for such processes. Numerical studies are also performed to analyse some of the more intractable properties of the ML estimators. Finally the whole methodology, i.e., the fibre model and its statistical inference, is applied to appropriately describe the tracking of fibres in real materials.
机译:本文对基于随机自回归过程的三维模型中的弯曲纤维物体描述了随机模型参数的统计推断。该模型适合于实验数据,该实验数据由多元自回归过程的大量短时独立采样的轨迹组成。我们讨论了此类过程的最大似然(ML)估计量的相关统计属性(例如,随着轨迹数趋于无穷大的渐近行为)。还进行了数值研究,以分析ML估计量的一些更难处理的属性。最后,将整个方法,即纤维模型及其统计推断,用于适当地描述真实材料中纤维的跟踪。

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