Least Squares Estimators for Unit Root Processes with Locally Stationary Disturbance

نویسندگان

  • Junichi Hirukawa
  • Mako Sadakata
چکیده

The random walk is used as a model expressing equitableness and the effectiveness of various finance phenomena. Randomwalk is included in unit root process which is a class of nonstationary processes. Due to its nonstationarity, the least squares estimator LSE of random walk does not satisfy asymptotic normality. However, it is well known that the sequence of partial sum processes of random walk weakly converges to standard Brownian motion. This result is socalled functional central limit theorem FCLT . We can derive the limiting distribution of LSE of unit root process from the FCLT result. The FCLT result has been extended to unit root process with locally stationary process LSP innovation. This model includes different two types of nonstationarity. Since the LSP innovation has time-varying spectral structure, it is suitable for describing the empirical financial time series data. Here we will derive the limiting distributions of LSE of unit root, near unit root and general integrated processes with LSP innovation. Testing problem between unit root and near unit root will be also discussed. Furthermore, we will suggest two kind of extensions for LSE, which include various famous estimators as special cases.

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عنوان ژورنال:
  • ADS

دوره 2012  شماره 

صفحات  -

تاریخ انتشار 2012