Multivariate Functional Data Modeling with Time-varying Clustering

04/25/2019
by   Philip A. White, et al.
0

We consider the situation where multivariate functional data has been collected over time at each of a set of sites. Our illustrative setting is bivariate, monitoring ozone and PM_10 levels as a function of time over the course of a year at a set of monitoring sites. The data we work with is from 24 monitoring sites in Mexico City which record hourly ozone and PM_10 levels. We use the data for the year 2017. Hence, we have 48 functions to work with. Our objective is to implement model-based clustering of the functions across the sites. Using our example, such clustering can be considered for ozone and PM_10 individually or jointly. It may occur differentially for the two pollutants. More importantly for us, we allow that such clustering can vary with time. We model the multivariate functions across sites using a multivariate Gaussian process. With many sites and several functions at each site, we use dimension reduction to provide a stochastic process specification for the distribution of the collection of multivariate functions over the say n sites. Furthermore, to cluster the functions, either individually by component or jointly with all components, we use the Dirichlet process which enables shared labeling of the functions across the sites. Specifically, we cluster functions based on their response to exogenous variables. Though the functions arise in continuous time, clustering in continuous time is extremely computationally demanding and not of practical interest. Therefore, we employ a partitioning of the time scale to capture time-varying clustering.

READ FULL TEXT
research
07/31/2023

The epigraph and the hypograph indexes as useful tools for clustering multivariate functional data

The proliferation of data generation has spurred advancements in functio...
research
02/28/2013

Continuous-time Infinite Dynamic Topic Models

Topic models are probabilistic models for discovering topical themes in ...
research
07/18/2023

Continuous-time multivariate analysis

The starting point for much of multivariate analysis (MVA) is an n× p da...
research
12/01/2020

Bayesian classification for dating archaeological sites via projectile points

Dating is a key element for archaeologists. We propose a Bayesian approa...
research
08/17/2018

Efficient Single-Shot Multibox Detector for Construction Site Monitoring

Asset monitoring in construction sites is an intricate, manually intensi...
research
10/28/2019

Correlated functional models with derivative information for modeling MFS data on rock art paintings

Microfading Spectrometry (MFS) is a method for assessing light sensitivi...
research
06/12/2019

Markov-modulated continuous-time Markov chains to identify site- and branch-specific evolutionary variation

Markov models of character substitution on phylogenies form the foundati...

Please sign up or login with your details

Forgot password? Click here to reset