Estimating monthly indicators for Consumer Confidence using Structural Time Series Models

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Abstract

In this paper a model-based inference procedure based on a multivariate structural time series model is developed for the production of monthly figures about consumer confidence. The input for the model are five series of direct estimates for the indices that measure consumer confidence, which are derived from the Dutch Consumer Survey. The model improves the accuracy of the direct estimates, since it provides a better separation of measurement errors and sampling errors from estimated target parameters. The standard errors for the month-to-month changes are clearly smaller under the time series model. A second problem addressed in this paper is related to the transition to a new survey process in 2017. Structural time series models in combination with a parallel run are applied to estimate discontinuities induced by the redesign. An algorithm designed for the consumer confidence variables is developed to construct uninterrupted input series for the aforementioned structural time series model. This inference method facilitated a smooth transition to a new survey design and resulted in uninterrupted series about consumer confidence that date back to 1986. The method is implemented for the production of official monthly figures on consumer confidence in the Netherlands.
Original languageEnglish
Pages (from-to)589-627
Number of pages41
JournalSurvey Methodology
Volume51
Issue number2
Publication statusPublished - 1 Dec 2025

Keywords

  • Break in series
  • Consumer confidence survey
  • Structural time series model
  • STATE-SPACE MODELS
  • SMALL-AREA ESTIMATION
  • LABOR-FORCE SURVEY
  • UNEMPLOYMENT
  • DISCONTINUITIES

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