Multivariate time series models for mixed data
Zinsou Max Debaly, Lionel Truquet

TL;DR
This paper presents a flexible multivariate time series modeling framework for mixed data types, integrating univariate models with copulas for dependence, and provides consistency results for parameter estimation.
Contribution
It introduces a novel approach combining univariate models and copulas for mixed data, with proven consistency and efficient estimation methods.
Findings
Models are stable under certain conditions.
Consistent parameter estimation via pseudo-maximum likelihood.
Successful application to real datasets.
Abstract
We introduce a general approach for modeling the dynamic of multivariate time series when the data are of mixed type (binary/count/continuous). Our method is quite flexible and conditionally on past values, each coordinate at time can have a distribution compatible with a standard univariate time series model such as GARCH, ARMA, INGARCH or logistic models whereas past values of the other coordinates play the role of exogenous covariates in the dynamic. The simultaneous dependence in the multivariate time series can be modeled with a copula. Additional exogenous covariates are also allowed in the dynamic. We first study usual stability properties of these models and then show that autoregressive parameters can be consistently estimated equation-by-equation using a pseudo-maximum likelihood method, leading to a fast implementation even when the number of time series is large.…
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Taxonomy
TopicsFinancial Risk and Volatility Modeling · Forecasting Techniques and Applications · Advanced Statistical Methods and Models
