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Functional PCA and Base-Line Logit Models

机译:功能性PCA和基准Logit模型

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摘要

In many statistical applications data are curves measured as functions of a continuous parameter as time. Despite of their functional nature and due to discrete-time observation, these type of data are usually analyzed with multivariate statistical methods that do not take into account the high correlation between observations of a single curve at nearby time points. Functional data analysis methodologies have been developed to solve these type of problems. In order to predict the class membership (multi-category response variable) associated to an observed curve (functional data), a functional generalized logit model is proposed. Base-line category logit formulations will be considered and their estimation based on basis expansions of the sample curves of the functional predictor and parameters. Functional principal component analysis will be used to get an accurate estimation of the functional parameters and to classify sample curves in the categories of the response variable. The good performance of the proposed methodology will be studied by developing an experimental study with simulated and real data.
机译:在许多统计应用中,数据是作为连续参数随时间变化的函数而测量的曲线。尽管它们具有功能性并且由于是离散时间观测,但通常使用多元统计方法分析这些类型的数据,而这些统计方法并未考虑到在附近时间点对单个曲线的观测之间的高度相关性。已经开发了功能数据分析方法来解决这类问题。为了预测与观测曲线(功能数据)相关的类成员资格(多类别响应变量),提出了一种功能化的通用logit模型。将考虑基线类别logit公式,并根据功能预测变量和参数的样本曲线的基本展开对它们进行估计。功能主成分分析将用于获得功能参数的准确估计,并将样本曲线分类为响应变量的类别。拟议方法的良好性能将通过使用模拟和真实数据进行实验研究来进行研究。

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