The Entropy Gain of Linear Time-Invariant Filters and Some of its Implications
Milan S. Derpich, Mat\'ias M\"uller, Jan {\O}stergaard

TL;DR
This paper rigorously analyzes the entropy gain of LTI filters for random processes, correcting previous inaccuracies and exploring implications for information theory, control, and communication systems.
Contribution
It provides a precise time-domain analysis of entropy gain in LTI filters, clarifying conditions for equality and correcting earlier mathematical oversights.
Findings
Entropy gain is upper bounded by B(G) for finite-length sequences.
When considering the entire output, entropy gain equals B(G) without extra signals.
Implications include new insights into rate-distortion, control inequalities, and channel capacity.
Abstract
We study the increase in per-sample differential entropy rate of random sequences and processes after being passed through a non minimum-phase (NMP) discrete-time, linear time-invariant (LTI) filter G. For such filters and random processes, it has long been established that this entropy gain, Gain(G), equals the integral of log|G(exp(jw))|. It is also known that, if the first sample of the impulse response of G has unit-magnitude, then this integral equals the sum of the logarithm of the magnitudes of the non-minimum phase zeros of G, say B(G). In this note, we begin by showing that existing time-domain proofs of these results, which consider finite length-n sequences and then let n tend to infinity, have neglected significant mathematical terms and, therefore, are inaccurate. We discuss some of the implications of this oversight when considering random processes. We then present a…
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Taxonomy
TopicsControl Systems and Identification · Target Tracking and Data Fusion in Sensor Networks · Probabilistic and Robust Engineering Design
