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Variance stabilization for multivariate time series
Stockholm University, Faculty of Social Sciences, Department of Statistics.
(English)Manuscript (preprint) (Other academic)
National Category
Probability Theory and Statistics
Research subject
Econometrics; Statistics
Identifiers
URN: urn:nbn:se:su:diva-186535OAI: oai:DiVA.org:su-186535DiVA, id: diva2:1497122
Available from: 2020-11-04 Created: 2020-11-04 Last updated: 2022-02-25Bibliographically approved
In thesis
1. Some Contributions to Heteroscedastic Time Series Analysis and Computational Aspects of Bayesian VARs
Open this publication in new window or tab >>Some Contributions to Heteroscedastic Time Series Analysis and Computational Aspects of Bayesian VARs
2020 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Time-dependent volatility clustering (or heteroscedasticity) in macroeconomic and financial time series has been analyzed for more than half a century. The inefficiencies it causes in various inference procedures are well known and understood. Despite this, heteroscedasticity is surprisingly often neglected in practical work. The correct way is to model the variance jointly with the other properties of the time series by using some of the many methods available in the literature. In the first two papers of this thesis, we explore a third option, that is rarely used in the literature, in which we first remove the heteroscedasticity and only then fit a simpler model to the homogenized data.

In the first paper, we introduce a filter that removes heteroscedasticity from simulated data without affecting other time series properties. We show that filtering the data leads to efficiency gains when estimating parameters in ARMA models, and in some cases to higher forecast precision for US GDP growth.

The work of the first paper is extended to the case of multivariate time series in Paper II. In this paper, the stochastic volatility model is used for tracking the latent evolution of the time series variances. Also in this scenario variance stabilization offers efficiency gains when estimating model parameters.

During the last decade, there has been an increasing interest in using large-scale VARs together with Bayesian shrinkage methods. The rich parameterization together with the need for simulations methods results in a computational bottleneck that either force concessions regarding the flexibility of the model or the size of the data set. In the last two papers, we address these issues with methods from the machine learning literature.  

In Paper III, we develop a new Bayesian optimization strategy for finding optimal hyperparameters for econometric models via maximization of the marginal likelihood. We illustrate that the algorithm finds optimal values fast compared to conventional methods. 

Finally, in Paper IV we present a fast variational inference (VI) algorithm for approximating the parameter posterior and predictive distribution of the steady-state BVAR. We show that VI produces results that are very close to those of the conventional Gibbs sampler but are obtained at a much lower computational cost. This is illustrated in both a simulation study and on US macroeconomic data.

Place, publisher, year, edition, pages
Stockholm: Department of Statistics, Stockholm University, 2020. p. 32
Keywords
Time series, heteroscedasticity, variance stabilizing filters, Bayesian vector autoregressions, Bayesian optimization, variational inference
National Category
Probability Theory and Statistics
Research subject
Statistics
Identifiers
urn:nbn:se:su:diva-186542 (URN)978-91-7911-356-8 (ISBN)978-91-7911-357-5 (ISBN)
Public defence
2020-12-18, hörsal 9, hus D, Universitetsvägen 10 D, Stockholm, 13:00 (English)
Opponent
Supervisors
Available from: 2020-11-25 Created: 2020-11-04 Last updated: 2022-02-25Bibliographically approved

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  • apa
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