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Showing papers on "Covariance mapping published in 1973"


Journal ArticleDOI
TL;DR: In this paper, a causal and causally invertible innovations representation (IR) whose existence depends only on the positive definite nature of the separable covariance is presented, and it is shown that least squares filtered and smoothed estimates of one process given observations of a related colored process can be expressed as linear combinations of the state vector of the IR of the observed process.
Abstract: The linear stochastic discrete-time realization problem is to find a white-noise driven finite-dimensional linear system whose output generates a specified separable covariance. The solution to this problem is presented in the form of a causal and causally invertible innovations representation (IR) whose existence depends only on the positive definite nature of the separable covariance. It is also shown that least-squares filtered and smoothed estimates of one process given observations of a related colored process can be expressed as linear combinations of the state vector of the IR of the observed process. The analogous continuous-time problems have been studied earlier, and it has been shown that an important role is played by what is known as the relative order of the covariance. Here this is defined as the number of differencing operations required to produce a delta function component in the differenced covariance. It is shown that, unlike the continuous-time case, the relative order of the covariance does not necessarily induce similar (relative order) constraints on the impulse response of all models whose responses to white noise have the given covariance. This fact is at the heart of certain differences between continuous-time and discrete-time results. It is shown, however, that the innovations representations obey a number of constraints equal to the relative order of the covariance.

69 citations






Journal ArticleDOI
TL;DR: In this paper, a method for estimating the variances and covariances of the random components of the mixed model, appropriate to single sample repeated measures data, is discussed, and an example is presented which is concerned with the effect of syntactic and semantic violations of linguistic rules on the free recall of verbal materials.
Abstract: A method for estimating the variances and covariances of the random components of the mixed model, appropriate to single sample repeated measures data, is discussed. To illustrate its use, an example is presented which is concerned with the effect of syntactic and semantic violations of linguistic rules on the free recall of verbal materials. The procedures are based on the structural analysis of the covariance matrix of the repeated measures.

1 citations


Journal ArticleDOI
TL;DR: In this paper, a decomposition theorem is derived for stochastic processes of bounded quadratic variation into an orthogonal process and a process having minimal quadrastic variation, based on the natural correspondence between interval covariance functions and the continuous hermitian kernel.
Abstract: We consider any continuous hermitian kernel M (A, A') on £P x

1 citations