Katarzyna Bien
;
Ingmar Nolte
;
Winfried Pohlmeier

an inflated multivariate integer count hurdle model: an application to bid and ask quote dynamics (replication data)

In this paper we develop a model for the conditional inflated multivariate density of integer count variables with domain n, n. Our modelling framework is based on a copula approach and can be used for a broad set of applications where the primary characteristics of the data are: (i) discrete domain; (ii) the tendency to cluster at certain outcome values; and (iii) contemporaneous dependence. These kinds of properties can be found for high- or ultra-high-frequency data describing the trading process on financial markets. We present a straightforward sampling method for such an inflated multivariate density through the application of an independence Metropolis-Hastings sampling algorithm. We demonstrate the power of our approach by modelling the conditional bivariate density of bid and ask quote changes in a high-frequency setup. We show how to derive the implied conditional discrete density of the bid-ask spread, taking quote clusterings (at multiples of 5 ticks) into account.

Data and Resources

Suggested Citation

Bien, Katarzyna; Nolte, Ingmar; Pohlmeier, Winfried (2011): An inflated multivariate integer count hurdle model: an application to bid and ask quote dynamics (replication data). Version: 1. Journal of Applied Econometrics. Dataset. http://dx.doi.org/10.15456/jae.2022320.0722849628