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Mixture model-based functional discriminant analysis for curve classification

机译:基于混合模型的函数判别分析用于曲线分类

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Statistical approaches for Functional Data Analysis concern the paradigm for which the individuals are functions or curves rather than finite dimensional vectors. In this paper, we particularly focus on the modeling and the classification of functional data which are temporal curves presenting regime changes over time. More specifically, we propose a new mixture model-based discriminant analysis approach for functional data using a specific hidden process regression model. Our approach is particularly adapted to both handle the problem of complex-shaped classes of curves, where each class is composed of several sub-classes, and to deal with the regime changes within each homogeneous sub-class. The model explicitly integrates the heterogeneity of each class of curves via a mixture model formulation, and the regime changes within each sub-class through a hidden logistic process. The approach allows therefore for fitting flexible curve-models to each class of complex-shaped curves presenting regime changes through an unsupervised learning scheme, to automatically summarize it into a finite number of homogeneous clusters, each of them is decomposed into several regimes. The model parameters are learned by maximizing the observed-data log-likelihood for each class by using a dedicated expectation-maximization (EM) algorithm. Comparisons on simulated data and real data with alternative approaches, including functional linear discriminant analysis and functional mixture discriminant analysis with polynomial regression mixtures and spline regression mixtures, show that the proposed approach provides better results regarding the discrimination results and significantly improves the curves approximation.
机译:功能数据分析的统计方法关注的是个体是函数或曲线而不是有限维向量的范式。在本文中,我们特别关注功能数据的建模和分类,这些功能数据是表示时间随时间变化的时间曲线。更具体地说,我们为使用特定隐藏过程回归模型的功能数据提供了一种基于混合模型的新判别分析方法。我们的方法特别适合于处理复杂形状的曲线类(每个类由几个子类组成)的问题,并处理每个同质子类中的状态变化。该模型通过混合模型公式明确地集成了每类曲线的异质性,并且通过隐藏的逻辑过程在每个子类中的状态变化。因此,该方法允许通过无监督的学习方案将柔性曲线模型拟合到每类复杂形状的曲线,以显示状态变化,以自动将其总结为有限数量的同质簇,它们中的每一个都分解为几种状态。通过使用专用的期望最大化(EM)算法最大化每个类别的观测数据对数似然性,可以学习模型参数。通过使用多项式回归混合和样条回归混合对函数线性判别分析和函数混合判别分析进行比较,对模拟数据和实际数据进行比较,结果表明,该方法可提供更好的判别结果,并显着改善了曲线逼近度。

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