Tesis
Intervalos de predição no modelo beta autorregressivo de médias móveis
Fecha
2016-02-25Registro en:
PALM, Bruna Gregory. PREDICTION INTERVALS IN BETA AUTOREGRESSIVE MOVING AVERAGE
MODEL. 2016. 102 f. Dissertação (Mestrado em Engenharia de Produção) - Universidade Federal de Santa Maria, Santa Maria, 2016.
Autor
Palm, Bruna Gregory
Institución
Resumen
Usual point and interval forecasting based on the autoregressive integrated moving average
models (ARIMA) may not be suitable for modelling variables defined over the interval
(0, 1). In fact, such forecasting effect predicted values outside variable domain (0, 1). The construction
of the prediction intervals usually assumes (i) normality or asymptotic normality and
(ii) knowledge of the parameters. If these assumptions are not fully satisfied, then the nominal
coverage of the prediction intervals may not be adequate. In order to address this issue, the
beta autoregressive moving average model (βARMA), which is a regarded as a suitable tool
for modelling and forecasting values defined over the interval (0, 1), was considered. The goal
of the present work is to propose a suit of methods for computing prediction interval linked
to the βARMA model. We introduced methods for obtaining approximate prediction intervals
based on (i) the normal distribution and (ii) the beta distribution quantiles. We also introduced
modifications to the interval with bootstrap prediction errors (BPE) proposed for autoregressive
models; and to the BCa intervals proposed for beta regression model. Moreover, based
on the quantiles of the predicted values, we proposed percentiles intervals for different types of
bootstrapping. The proposed prediction intervals were evaluated according to Monte Carlo simulations.
Assessed results indicated that the prediction intervals based on the quantiles of the
beta distribution outperformed the discussed non-bootstrapping methods. Despite some variance
effects, it offered better coverage rate values. However, the BCa based prediction intervals
presented well-balance results in all considered test scenarios. Therefore, the BCa prediction
interval was selected as the most reliable one. Empirical evaluations of the proposed methods
were applied to two actual time series: (i) the water level of the Cantareira water supply system
in São Paulo from January 2003 to August 2015 and (ii) the unemployment rate data in São
Paulo from January 1991 to November 2005.