HEDIBERT FREITAS LOPES

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Resultados da Pesquisa

Agora exibindo 1 - 5 de 5
  • Imagem de Miniatura
    Artigo Científico
    Regression models for exceedance data via the full likelihood
    (2011) HEDIBERT FREITAS LOPES; Nascimento, Fernando Ferraz do; Gamerman, Dani
  • Imagem de Miniatura
    Artigo Científico
    Time-varying extreme pattern with dynamic models
    (2015) Nascimento, Fernando Ferraz do; Gamerman, Dani; HEDIBERT FREITAS LOPES
  • Imagem de Miniatura
    Artigo Científico
    Generalized spatial dynamic factor models
    (2011) HEDIBERT FREITAS LOPES; Gamerman, Dani; Salazar, Esther
  • Imagem de Miniatura
    Artigo Científico
    A semiparametric Bayesian approach to extreme value estimation
    (2012) Nascimento, Fernando Ferraz do; Gamerman, Dani; HEDIBERT FREITAS LOPES
  • Imagem de Miniatura
    Working Paper
    Temporal dependence in extremes with dynamic model
    (2014) Nascimento, Fernando Ferraz do; Gamerman, Dani; HEDIBERT FREITAS LOPES
    This paper is concerned with the analysis of time series data with temporal dependence through extreme events. This is achieved via a model formulation that considers separately the central part and the tail of the distributions, using a two component mixture model. Extremes beyond a thresh old are assumed to follow a generalized Pareto distribution (GPD). Temporal dependence is induced by allowing to GPD parameter to vary with time. Temporal variation and dependence is introduced at a latent level via the novel use of dynamic linear models (DLM). Novelty lies in the time variation of the shape and scale parameter of the resulting distribution. These changes in limiting regimes as time changes reflect better the data behavior, with importante gains in estimation and interpretation. The central part follows a nonparametric mixture approach. The uncertainty about the threshold is explicitly considered. Posterior inference is performed through Markov Chain Monte Carlo (MCMC) methods. A variety of scenarios can be entertained and include the possibility of alternation of presence and absence of a finite upper limit of the distribution for different time periods. Simulations are carried out in order to analyze the performance of our proposed model. We also apply the proposed model to financial time series: returns of Petrobr´as stocks and SP500 index. Results show advantage of our proposal over currently entertained models such as stochastic volatility, with improved estimation of high quantiles and extremes.