RT Generic T1 Seasonality Detection in Small Samples using Score-Driven Nonlinear Multivariate Dynamic Location Models A1 Blazsek, Szabolcs A1 Escribano, Álvaro A1 Licht, Adrian A2 Universidad Carlos III de Madrid. Departamento de Economía, AB We suggest a new mechanism to detect stochastic seasonality of multivariate macroeconomic variables, by using an extension of the score-driven first-order multivariate t-distribution model. We name the new model as the quasi-vector autoregressive (QVAR) model. QVAR is a nonlinear extension of Gaussian VARMA (VAR moving average). The location of dependent variables for QVAR is updated by the score function, thus QVAR is robust to extreme observations. For QVAR, we present the econometric formulation, computation of the impulse response function (IRF), maximum likelihood (ML) estimation, and conditions of the asymptotic properties of ML that include invertibility. We use quarterly macroeconomic data for the period of 1987:Q1 to 2013:Q2 inclusive, which include extreme observations from three I(0) variables: percentage change in crude oil real price, United States (US) inflation rate, and US real gross domestic product (GDP) growth. The sample size of these data is relatively small, which occurs frequently in macroeconomic analyses. The statistical performance of QVAR is superior to that of VARMA and VAR. Annual seasonality effects are identified for QVAR, whereas those effects are not identified for VARMA and VAR. Our results suggest that QVAR may be used as a practical tool for seasonality detection in small macroeconomic datasets. SN 2340-5031 YR 2018 FD 2018-09-12 LK https://hdl.handle.net/10016/27483 UL https://hdl.handle.net/10016/27483 LA eng NO The work was presented in “Recent Advances in Econometrics: International Conference in Honor ofLuc Bauwens" (Brussels, 19-20 October 2017), GESG Research Seminar (Guatemala City, 9November 2017), “Workshop in Time Series Econometrics" (Zaragoza, 12-13 April 2018), and“International Conference on Statistical Methods for Big Data" (Madrid, 7-8 July 2018). The authors arethankful to Luc Bauwens, Matthew Copley, Antoni Espasa, Eric Ghysels, Joachim Grammig, AndrewHarvey, S∅ren Johansen, Bent Nielsen, Eric Renault, Genaro Sucarrat and Ruey Tsay. Blazsek andLicht acknowledge funding from Universidad Francisco Marroquín. Escribano acknowledges fundingfrom Ministerio de Economía, Industria y Competitividad (ECO2016-00105-001 and MDM 2014-0431)and Comunidad de Madrid (MadEco-CM S2015/HUM-3444). DS e-Archivo RD 30 abr. 2024