Cross Validation of Prediction Models for Seasonal Time Series by Parametric Bootstrapping

Out-of-sample prediction for the final portion of a sample is a popular tool for model selection in model-based forecasting. We suggest to add a simulation step to this exercise, where pseudo-samples are generated (parametrically bootstrapped), conditional on the observed data and on any of the can...

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Main Author: Robert M. Kunst
Format: Article
Language:English
Published: Austrian Statistical Society 2016-04-01
Series:Austrian Journal of Statistics
Online Access:http://www.ajs.or.at/index.php/ajs/article/view/308
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spelling doaj-352275254f57429fbafeb5dce8df9d772021-04-22T12:34:05ZengAustrian Statistical SocietyAustrian Journal of Statistics1026-597X2016-04-01373&410.17713/ajs.v37i3&4.308Cross Validation of Prediction Models for Seasonal Time Series by Parametric BootstrappingRobert M. Kunst0University of Vienna and Institute for Advanced Studies Vienna, Austria Out-of-sample prediction for the final portion of a sample is a popular tool for model selection in model-based forecasting. We suggest to add a simulation step to this exercise, where pseudo-samples are generated (parametrically bootstrapped), conditional on the observed data and on any of the candidate models, and these pseudo-samples are predicted using any of the candidate models. The technique is demonstrated by an artificial univariate time-series specification that highlights the main features, and also by a real-life multivariate application to agricultural price data. In the exemplary data set on quarterly European barley prices, strong seasonal variation is obvious and represents a crucial feature in constructing good models for short-run prediction. Following some preliminary statistical testing, we restrict focus to vector autoregressions with deterministic seasonal cycles. We also consider a restricted specification that imposes a common seasonal cycle on all countries. While the restriction is formally rejected by hypothesis tests, it assists in reducing prediction errors. The parametric bootstrap experiments show that this improvement by using an invalid restriction is systematic. http://www.ajs.or.at/index.php/ajs/article/view/308
collection DOAJ
language English
format Article
sources DOAJ
author Robert M. Kunst
spellingShingle Robert M. Kunst
Cross Validation of Prediction Models for Seasonal Time Series by Parametric Bootstrapping
Austrian Journal of Statistics
author_facet Robert M. Kunst
author_sort Robert M. Kunst
title Cross Validation of Prediction Models for Seasonal Time Series by Parametric Bootstrapping
title_short Cross Validation of Prediction Models for Seasonal Time Series by Parametric Bootstrapping
title_full Cross Validation of Prediction Models for Seasonal Time Series by Parametric Bootstrapping
title_fullStr Cross Validation of Prediction Models for Seasonal Time Series by Parametric Bootstrapping
title_full_unstemmed Cross Validation of Prediction Models for Seasonal Time Series by Parametric Bootstrapping
title_sort cross validation of prediction models for seasonal time series by parametric bootstrapping
publisher Austrian Statistical Society
series Austrian Journal of Statistics
issn 1026-597X
publishDate 2016-04-01
description Out-of-sample prediction for the final portion of a sample is a popular tool for model selection in model-based forecasting. We suggest to add a simulation step to this exercise, where pseudo-samples are generated (parametrically bootstrapped), conditional on the observed data and on any of the candidate models, and these pseudo-samples are predicted using any of the candidate models. The technique is demonstrated by an artificial univariate time-series specification that highlights the main features, and also by a real-life multivariate application to agricultural price data. In the exemplary data set on quarterly European barley prices, strong seasonal variation is obvious and represents a crucial feature in constructing good models for short-run prediction. Following some preliminary statistical testing, we restrict focus to vector autoregressions with deterministic seasonal cycles. We also consider a restricted specification that imposes a common seasonal cycle on all countries. While the restriction is formally rejected by hypothesis tests, it assists in reducing prediction errors. The parametric bootstrap experiments show that this improvement by using an invalid restriction is systematic.
url http://www.ajs.or.at/index.php/ajs/article/view/308
work_keys_str_mv AT robertmkunst crossvalidationofpredictionmodelsforseasonaltimeseriesbyparametricbootstrapping
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