Average Bias and Polynomial Sources
We identify a new notion of pseudorandomness for randomness sources, which we call the average bias. Given a distribution $Z$ over $\{0,1\}^n$, its average bias is: $b_{\text{av}}(Z) =2^{-n} \sum_{c \in \{0,1\}^n} |\mathbb{E}_{z \sim Z}(-1)^{\langle c, z\rangle}|$. A source with average bias at most...
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Zusammenfassung: | We identify a new notion of pseudorandomness for randomness sources, which we
call the average bias. Given a distribution $Z$ over $\{0,1\}^n$, its average
bias is: $b_{\text{av}}(Z) =2^{-n} \sum_{c \in \{0,1\}^n} |\mathbb{E}_{z \sim
Z}(-1)^{\langle c, z\rangle}|$. A source with average bias at most $2^{-k}$ has
min-entropy at least $k$, and so low average bias is a stronger condition than
high min-entropy. We observe that the inner product function is an extractor
for any source with average bias less than $2^{-n/2}$.
The notion of average bias especially makes sense for polynomial sources,
i.e., distributions sampled by low-degree $n$-variate polynomials over
$\mathbb{F}_2$. For the well-studied case of affine sources, it is easy to see
that min-entropy $k$ is exactly equivalent to average bias of $2^{-k}$. We show
that for quadratic sources, min-entropy $k$ implies that the average bias is at
most $2^{-\Omega(\sqrt{k})}$. We use this relation to design dispersers for
separable quadratic sources with a min-entropy guarantee. |
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DOI: | 10.48550/arxiv.1905.11612 |