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  • 标题:Principal Components and Long Run Implications of Multivariate Diffusions
  • 本地全文:下载
  • 作者:Chen, Xiaohong ; Hansen, Lars P. ; Scheinkman, José
  • 期刊名称:COWLES Foundation Discussion Paper / Cowles Foundation for Research in Economics
  • 出版年度:2009
  • 卷号:1
  • 出版社:Yale University
  • 摘要:We investigate a method for extracting nonlinear principal components. These principal components maximize variation subject to smoothness and orthogonality constraints; but we allow for a general class of constraints and multivariate densities, including densities without compact support and even densities with algebraic tails. We provide primitive sufficient conditions for the existence of these principal components. We characterize the limiting behavior of the associated eigenvalues, the objects used to quantify the incremental importance of the principal components. By exploiting the theory of continuous-time, reversible Markov processes, we give a different interpretation of the principal components and the smoothness constraints. When the diffusion matrix is used to enforce smoothness, the principal components maximize long-run variation relative to the overall variation subject to orthogonality constraints. Moreover, the principal components behave as scalar autoregressions with heteroskedastic innovations; this supports semiparametric identification of a multivariate reversible diffusion process and tests of the overidentifying restrictions implied by such a process from low frequency data. We also explore implications for stationary, possibly non-reversible diffusion processes.
  • 关键词:Nonlinear principal components, Discrete spectrum, Eigenvalue decay rates, Multivariate diffusion, Quadratic form, Conditional expectations operator
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