Soft Covering Through the Lens of Hypothesis Testing
2026-05-19 • Information Theory
Information Theory
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Authors
Neri Merhav
Abstract
We study the soft covering phenomenon through the lens of Neyman--Pearson hypothesis testing: given a channel output sequence $y^n$, can one decide whether it was produced when the channel was driven by a random codeword, or generated independently from the output marginal? We derive exact exponential decay rates for the jointly averaged false-alarm (FA) probability $α_n(τ,R)$ and missed-detection (MD) probability $β_n(τ,R)$, as functions of the decision threshold $τ$ and the codebook rate $R$. The derived single-letter formulas of the exponents $\EFA(τ,R)=-\lim_{n\to\infty}\frac{1}{n}\lnα_n(τ,R)$ and $\EMD(τ,R)=-\lim_{n\to\infty}\frac{1}{n}\lnβ_n(τ,R)$ are tight in the random coding sense. The analysis reveals a rich phase structure. For $R < I(X;Y)$, there is a genuine exponential tradeoff between the two error types over the interval $τ\in (0, I(X;Y)-R)$. At $R = I(X;Y)$, this tradeoff interval collapses to the single point $τ= 0$, where both error exponents simultaneously vanish, a fact which manifests the soft covering phenomenon in the Neyman--Pearson sense. For $R > I(X;Y)$, the same instantaneous collapse persists at $τ= 0$; moreover, for every $τ$ at least one exponent is zero: the FA exponent is zero for $τ\le 0$ (FA probability does not decay exponentially), and the MD exponent is zero for $τ\ge 0$ (and finite, channel-specific for $τ<0$; see Remark~\ref{rem:jump}). There is no interval of $τ$ where both exponents are simultaneously positive. A sharp phase transition in the MD exponent occurs at $τ^* = [I(X;Y)-R]_+$ for all rates.