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演講公告

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How to be More Box than Box ?

  • 2010-09-20 (Mon.), 10:30 AM
  • 中研院-蔡元培館 2F 208 演講廳
  • 茶 會:上午10:10統計所蔡元培館二樓
  • Prof. Howell Tong
  • London School of Economics, UK

Abstract

Using a time series model to mimic an observed time series has a long history. However, with regard to this objective, conventional estimation methods for discrete-time dynamical models are frequently found to be wanting. In fact, very often they are misguided in at least? three respects: (i) assuming that there is a true model, and the real time series are free from measurement errors; (ii) evaluating? the efficiency of the estimation as if the postulated model is true; (iii) often losing sight of the more important global features. In the absence of a true model or uncontaminated data, we prefer to focus on feature matching rather than conventional model fitting. The primary purpose of matching is to capture the main features of the dynamics that underpin the data, such as cycles, dynamic ranges and others. In feature matching, the method should be robust against such occurrences as model mis-specification and data contamination. In this talk, we propose a new approach to empirical time series analysis, in which our aim is to postulate discrete-time dynamical models to match some observed features that are deemed significant. Both linear models and nonlinear models are postulated and discussed. Numerical results, based on both simulations and real data, suggest that the proposed feature matching approach has several advantages over the conventional methods, especially when the time series is short or with strong cyclical fluctuations. ?

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