Learning a latent pattern of heterogeneity in the innovation rates of a time series of counts

07/06/2019
by   Helton Graziadei, et al.
0

We develop a Bayesian hierarchical semiparametric model for phenomena related to time series of counts. The main feature of the model is its capability to learn a latent pattern of heterogeneity in the distribution of the process innovation rates, which are softly clustered through time with the help of a Dirichlet process placed at the top of the model hierarchy. The probabilistic forecasting capabilities of the model are put to test in the analysis of crime data in Pittsburgh, with favorable results.

READ FULL TEXT
research
05/15/2014

Effective Bayesian Modeling of Groups of Related Count Time Series

Time series of counts arise in a variety of forecasting applications, fo...
research
10/30/2022

Forecasting Hierarchical Time Series

This paper addresses a common problem with hierarchical time series. Tim...
research
04/21/2022

A Top-Down Approach to Hierarchically Coherent Probabilistic Forecasting

Hierarchical forecasting is a key problem in many practical multivariate...
research
10/27/2021

Warped Dynamic Linear Models for Time Series of Counts

Dynamic Linear Models (DLMs) are commonly employed for time series analy...
research
08/12/2010

Discovering shared and individual latent structure in multiple time series

This paper proposes a nonparametric Bayesian method for exploratory data...
research
02/20/2019

Integer-Valued Functional Data Analysis for Measles Forecasting

Measles presents a unique and imminent challenge for epidemiologists and...
research
04/18/2020

Integer-valued autoregressive process with flexible marginal and innovation distributions

INteger Auto-Regressive (INAR) processes are usually defined by specifyi...

Please sign up or login with your details

Forgot password? Click here to reset