A Limitation of the Kernel Methodfor Joint Distributions of Arbitrary
نویسنده
چکیده
|Recently, Cohen has proposed a construction for joint distributions of arbitrary physical quantities , in direct generalization of joint time-frequency representations. Actually this method encompasses two approaches, one based on operator correspondences and one based on weighting kernels. The literature has emphasized the kernel method due to its ease of analysis; however, its simplicity comes at a price. In this paper, we use a simple example to demonstrate that the kernel method cannot generate all possible bilinear joint distributions. Our results suggest that the relationship between the operator method and the kernel method merits closer scrutiny.
منابع مشابه
On the Equivalence of the Operator and Kernel Methods for Joint Distributions of Arbitrary Variables - Signal Processing, IEEE Transactions on
Generalizing the concept of time-frequency representations, Cohen has recently proposed a method, based on operator correspondence rules, for generating joint distributions of arbitrary variables. As an alternative to considering all such rules, which is a practical impossibility in general, Cohen has proposed the kernel method in which different distributions are generated from a fixed rule vi...
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تاریخ انتشار 1995