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In mathematics, the Babenko–Beckner inequality (after K. Ivan Babenko and William E. Beckner) is a sharpened form of the
Hausdorff–Young inequality The Hausdorff−Young inequality is a foundational result in the mathematical field of Fourier analysis. As a statement about Fourier series, it was discovered by and extended by . It is now typically understood as a rather direct corollary of th ...
having applications to
uncertainty principle In quantum mechanics, the uncertainty principle (also known as Heisenberg's uncertainty principle) is any of a variety of mathematical inequalities asserting a fundamental limit to the accuracy with which the values for certain pairs of physic ...
s in the Fourier analysis of Lp spaces. The (''q'', ''p'')-norm of the ''n''-dimensional
Fourier transform A Fourier transform (FT) is a mathematical transform that decomposes functions into frequency components, which are represented by the output of the transform as a function of frequency. Most commonly functions of time or space are transformed, ...
is defined to beIwo Bialynicki-Birula. ''Formulation of the uncertainty relations in terms of the Renyi entropies.'
arXiv:quant-ph/0608116v2
/ref> :\, \mathcal F\, _ = \sup_ \frac,\text1 < p \le 2,\text\frac 1 p + \frac 1 q = 1. In 1961, BabenkoK.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 found this norm for ''even'' integer values of ''q''. Finally, in 1975, using
Hermite functions In mathematics, the Hermite polynomials are a classical orthogonal polynomial sequence. The polynomials arise in: * signal processing as Hermitian wavelets for wavelet transform analysis * probability, such as the Edgeworth series, as well ...
as
eigenfunction In mathematics, an eigenfunction of a linear operator ''D'' defined on some function space is any non-zero function f in that space that, when acted upon by ''D'', is only multiplied by some scaling factor called an eigenvalue. As an equation, ...
s of the Fourier transform, BecknerW. Beckner, ''Inequalities in Fourier analysis.'' Annals of Mathematics, Vol. 102, No. 6 (1975) pp. 159–182. proved that the value of this norm for all q \ge 2 is :\, \mathcal F\, _ = \left(p^/q^\right)^. Thus we have the Babenko–Beckner inequality that :\, \mathcal Ff\, _q \le \left(p^/q^\right)^ \, f\, _p. To write this out explicitly, (in the case of one dimension,) if the Fourier transform is normalized so that :g(y) \approx \int_ e^ f(x)\,dx\textf(x) \approx \int_ e^ g(y)\,dy, then we have :\left(\int_ , g(y), ^q \,dy\right)^ \le \left(p^/q^\right)^ \left(\int_ , f(x), ^p \,dx\right)^ or more simply :\left(\sqrt q \int_ , g(y), ^q \,dy\right)^ \le \left(\sqrt p \int_ , f(x), ^p \,dx\right)^.


Main ideas of proof

Throughout this sketch of a proof, let :1 < p \le 2, \quad \frac 1 p + \frac 1 q = 1, \quad \text \quad \omega = \sqrt = i\sqrt. (Except for ''q'', we will more or less follow the notation of Beckner.)


The two-point lemma

Let d\nu(x) be the discrete measure with weight 1/2 at the points x = \pm 1. Then the operator :C:a+bx \rightarrow a + \omega bx maps L^p(d\nu) to L^q(d\nu) with norm 1; that is, :\left a+\omega bx, ^q d\nu(x)\right \le \left a+bx, ^p d\nu(x)\right, or more explicitly, :\left frac 2 \right \le \left frac 2 \right for any complex ''a'', ''b''. (See Beckner's paper for the proof of his "two-point lemma".)


A sequence of Bernoulli trials

The measure d\nu that was introduced above is actually a fair
Bernoulli trial In the theory of probability and statistics, a Bernoulli trial (or binomial trial) is a random experiment with exactly two possible outcomes, "success" and "failure", in which the probability of success is the same every time the experiment is ...
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 d\nu_n(x) which is the ''n''-fold convolution of d\nu(\sqrt n x) 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 d\nu_n(x) with respect to the
elementary symmetric polynomials In mathematics, specifically in commutative algebra, the elementary symmetric polynomials are one type of basic building block for symmetric polynomials, in the sense that any symmetric polynomial can be expressed as a polynomial in elementary sy ...
.


Convergence to standard normal distribution

The sequence d\nu_n(x) converges weakly to the standard
normal probability distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu is ...
d\mu(x) = \frac 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 d\nu_n(x) is expressed as an operator ''T'' in terms of the
Hermite polynomials In mathematics, the Hermite polynomials are a classical orthogonal polynomial sequence. The polynomials arise in: * signal processing as Hermitian wavelets for wavelet transform analysis * probability, such as the Edgeworth series, as well ...
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

*
Entropic uncertainty In quantum mechanics, information theory, and Fourier analysis, the entropic uncertainty or Hirschman uncertainty is defined as the sum of the temporal and spectral Shannon entropies. It turns out that Heisenberg's uncertainty principle can be e ...


References

{{DEFAULTSORT:Babenko-Beckner inequality Inequalities