Babenko–Beckner inequality explained
In mathematics, the Babenko–Beckner inequality (after and William E. Beckner) is a sharpened form of the Hausdorff–Young inequality having applications to uncertainty principles in the Fourier analysis of Lp spaces. The (q, p)-norm of the n-dimensional Fourier transform is defined to be[1]
\|lF\|q,p=
,where1<p\le2,
+
=1.
In 1961, Babenko[2] found this norm for even integer values of q. Finally, in 1975, using Hermite functions as eigenfunctions of the Fourier transform, Beckner[3] proved that the value of this norm for all
is
\|lF\|q,p=\left(p1/p/q1/q\right)n/2.
Thus we have the Babenko–Beckner inequality that
\|lFf\|q\le\left(p1/p/q1/q\right)n/2\|f\|p.
To write this out explicitly, (in the case of one dimension,) if the Fourier transform is normalized so that
g(y) ≈ \intRe-2\pif(x)dxandf(x) ≈ \intRe2\pig(y)dy,
then we have
\left(\intR|g(y)|qdy\right)1/q\le\left(p1/p/q1/q\right)1/2\left(\intR|f(x)|pdx\right)1/p
or more simply
\left(\sqrtq\intR|g(y)|qdy\right)1/q\le\left(\sqrtp\intR|f(x)|pdx\right)1/p.
Main ideas of proof
Throughout this sketch of a proof, let
1<p\le2,
+
=1, and \omega=\sqrt{1-p}=i\sqrt{p-1}.
(Except for
q, we will more or less follow the notation of Beckner.)
The two-point lemma
Let
be the discrete measure with weight
at the points
Then the operator
maps
to
with norm 1; that is,
\left[\int|a+\omegabx|qd\nu(x)\right]1/q\le\left[\int|a+bx|pd\nu(x)\right]1/p,
or more explicitly,
\left[ | |a+\omegab|q+|a-\omegab|q |
2 |
\right]1/q\le\left[
\right]1/p
for any complex
a,
b. (See Beckner's paper for the proof of his "two-point lemma".)
A sequence of Bernoulli trials
The measure
that was introduced above is actually a fair
Bernoulli trial with mean 0 and variance 1. Consider the sum of a sequence of
n such Bernoulli trials, independent and normalized so that the standard deviation remains 1. We obtain the measure
which is the
n-fold convolution of
with itself. The next step is to extend the operator
C defined on the two-point space above to an operator defined on the (
n + 1)-point space of
with respect to the
elementary symmetric polynomials.
Convergence to standard normal distribution
The sequence
converges weakly to the standard
normal probability distribution
} e^\, dx with respect to functions of polynomial growth. In the limit, the extension of the operator
C above in terms of the elementary symmetric polynomials with respect to the measure
is expressed as an operator
T in terms of the
Hermite polynomials with respect to the standard normal distribution. These Hermite functions are the eigenfunctions of the Fourier transform, and the (
q,
p)-norm of the Fourier transform is obtained as a result after some renormalization.
See also
Notes and References
- Iwo Bialynicki-Birula. Formulation of the uncertainty relations in terms of the Renyi entropies. arXiv:quant-ph/0608116v2
- K.I. Babenko. An inequality in the theory of Fourier integrals. Izv. Akad. Nauk SSSR, Ser. Mat. 25 (1961) pp. 531–542 English transl., Amer. Math. Soc. Transl. (2) 44, pp. 115–128
- W. Beckner, Inequalities in Fourier analysis. Annals of Mathematics, Vol. 102, No. 6 (1975) pp. 159–182.