Abstract — Consider arbitrarily distributed input signals observed in additive Gaussian noise. A new fundamental relationship is found between the input-output mutual information and the minimum mean-square error (MMSE) of an estimate of the input given the output: The derivative of the mutual in-formation (nats) with respect to the signal-to-noise ratio (SNR) is equal to half the MMSE. This iden-tity holds for both scalar and vector signals, as well as for discrete- and continuous-time noncausal MMSE estimation (smoothing). A consequence of the result is a new relationship in continuous-time nonlinear fil-tering: Regardless of the input statistics, the causal MMSE achieved at snr is equal to the expected value of the noncausal MMSE achieve...
AbstractIn the Gaussian channel Y(t) = Φ(t) + X(t) = message + noise, where Φ(t) and X(t) are mutual...
Relations between estimation and information measures have received considerable attention from the ...
We consider the characterization of the asymptotic behavior of the average minimum mean-squared erro...
Abstract—This work studies the properties of the minimum mean-square error (MMSE) of estimating an a...
Abstract—We show that the minimum mean-square error (MMSE) of estimating the input based on the chan...
Abstract—In addition to exploring its various regularity prop-erties, we show that the minimum mean-...
Abstract—Many of the classical and recent relations between in-formation and estimation in the prese...
Consider the minimum mean-square error (MMSE) of estimating an arbitrary random variable from its ob...
This work studies the minimum mean-square error (MMSE) of estimating an arbitrary random variable fr...
Abstract—Many of the classical and recent relations between information and estimation in the presen...
In this paper, derivatives of mutual information for a general linear Gaussian vector channel are co...
The scalar additive Gaussian noise channel has the “single crossing point ” property between the min...
A relationship between information theory and estimation theory was recently shown for the Gaussian ...
Let a message m = {m(t)} be a Gaussian process. We consider the transmission of m over a white Gauss...
This paper considers a general linear vector Gaussian channel with arbitrary signaling and pursues t...
AbstractIn the Gaussian channel Y(t) = Φ(t) + X(t) = message + noise, where Φ(t) and X(t) are mutual...
Relations between estimation and information measures have received considerable attention from the ...
We consider the characterization of the asymptotic behavior of the average minimum mean-squared erro...
Abstract—This work studies the properties of the minimum mean-square error (MMSE) of estimating an a...
Abstract—We show that the minimum mean-square error (MMSE) of estimating the input based on the chan...
Abstract—In addition to exploring its various regularity prop-erties, we show that the minimum mean-...
Abstract—Many of the classical and recent relations between in-formation and estimation in the prese...
Consider the minimum mean-square error (MMSE) of estimating an arbitrary random variable from its ob...
This work studies the minimum mean-square error (MMSE) of estimating an arbitrary random variable fr...
Abstract—Many of the classical and recent relations between information and estimation in the presen...
In this paper, derivatives of mutual information for a general linear Gaussian vector channel are co...
The scalar additive Gaussian noise channel has the “single crossing point ” property between the min...
A relationship between information theory and estimation theory was recently shown for the Gaussian ...
Let a message m = {m(t)} be a Gaussian process. We consider the transmission of m over a white Gauss...
This paper considers a general linear vector Gaussian channel with arbitrary signaling and pursues t...
AbstractIn the Gaussian channel Y(t) = Φ(t) + X(t) = message + noise, where Φ(t) and X(t) are mutual...
Relations between estimation and information measures have received considerable attention from the ...
We consider the characterization of the asymptotic behavior of the average minimum mean-squared erro...