Eaton's inequality

In probability theory, Eaton's inequality is a bound on the largest values of a linear combination of bounded random variables. This inequality was described in 1974 by Morris L. Eaton.[1]

Statement of the inequality

Let {Xi} be a set of real independent random variables, each with an expected value of zero and bounded above by 1 ( |Xi | ≤ 1, for 1 ≤ in). The variates do not have to be identically or symmetrically distributed. Let {ai} be a set of n fixed real numbers with

i = 1 n a i 2 = 1. {\displaystyle \sum _{i=1}^{n}a_{i}^{2}=1.}

Eaton showed that

P ( | i = 1 n a i X i | k ) 2 inf 0 c k c ( z c k c ) 3 ϕ ( z ) d z = 2 B E ( k ) , {\displaystyle P\left(\left|\sum _{i=1}^{n}a_{i}X_{i}\right|\geq k\right)\leq 2\inf _{0\leq c\leq k}\int _{c}^{\infty }\left({\frac {z-c}{k-c}}\right)^{3}\phi (z)\,dz=2B_{E}(k),}

where φ(x) is the probability density function of the standard normal distribution.

A related bound is Edelman's[citation needed]

P ( | i = 1 n a i X i | k ) 2 ( 1 Φ [ k 1.5 k ] ) = 2 B E d ( k ) , {\displaystyle P\left(\left|\sum _{i=1}^{n}a_{i}X_{i}\right|\geq k\right)\leq 2\left(1-\Phi \left[k-{\frac {1.5}{k}}\right]\right)=2B_{Ed}(k),}

where Φ(x) is cumulative distribution function of the standard normal distribution.

Pinelis has shown that Eaton's bound can be sharpened:[2]

B E P = min { 1 , k 2 , 2 B E } {\displaystyle B_{EP}=\min\{1,k^{-2},2B_{E}\}}

A set of critical values for Eaton's bound have been determined.[3]

Related inequalities

Let {ai} be a set of independent Rademacher random variables – P( ai = 1 ) = P( ai = −1 ) = 1/2. Let Z be a normally distributed variate with a mean 0 and variance of 1. Let {bi} be a set of n fixed real numbers such that

i = 1 n b i 2 = 1. {\displaystyle \sum _{i=1}^{n}b_{i}^{2}=1.}

This last condition is required by the Riesz–Fischer theorem which states that

a i b i + + a n b n {\displaystyle a_{i}b_{i}+\cdots +a_{n}b_{n}}

will converge if and only if

i = 1 n b i 2 {\displaystyle \sum _{i=1}^{n}b_{i}^{2}}

is finite.

Then

E f ( a i b i + + a n b n ) E f ( Z ) {\displaystyle Ef(a_{i}b_{i}+\cdots +a_{n}b_{n})\leq Ef(Z)}

for f(x) = | x |p. The case for p ≥ 3 was proved by Whittle[4] and p ≥ 2 was proved by Haagerup.[5]


If f(x) = eλx with λ ≥ 0 then

E f ( a i b i + + a n b n ) inf [ E ( e λ Z ) e λ x ] = e x 2 / 2 {\displaystyle Ef(a_{i}b_{i}+\cdots +a_{n}b_{n})\leq \inf \left[{\frac {E(e^{\lambda Z})}{e^{\lambda x}}}\right]=e^{-x^{2}/2}}

where inf is the infimum.[6]


Let

S n = a i b i + + a n b n {\displaystyle S_{n}=a_{i}b_{i}+\cdots +a_{n}b_{n}}


Then[7]

P ( S n x ) 2 e 3 9 P ( Z x ) {\displaystyle P(S_{n}\geq x)\leq {\frac {2e^{3}}{9}}P(Z\geq x)}

The constant in the last inequality is approximately 4.4634.


An alternative bound is also known:[8]

P ( S n x ) e x 2 / 2 {\displaystyle P(S_{n}\geq x)\leq e^{-x^{2}/2}}

This last bound is related to the Hoeffding's inequality.


In the uniform case where all the bi = n−1/2 the maximum value of Sn is n1/2. In this case van Zuijlen has shown that[9]

P ( | μ σ | ) 0.5 {\displaystyle P(|\mu -\sigma |)\leq 0.5\,} [clarification needed]

where μ is the mean and σ is the standard deviation of the sum.

References

  1. ^ Eaton, Morris L. (1974) "A probability inequality for linear combinations of bounded random variables." Annals of Statistics 2(3) 609–614
  2. ^ Pinelis, I. (1994) "Extremal probabilistic problems and Hotelling's T2 test under a symmetry condition." Annals of Statistics 22(1), 357–368
  3. ^ Dufour, J-M; Hallin, M (1993) "Improved Eaton bounds for linear combinations of bounded random variables, with statistical applications", Journal of the American Statistical Association, 88(243) 1026–1033
  4. ^ Whittle P (1960) Bounds for the moments of linear and quadratic forms in independent variables. Teor Verojatnost i Primenen 5: 331–335 MR0133849
  5. ^ Haagerup U (1982) The best constants in the Khinchine inequality. Studia Math 70: 231–283 MR0654838
  6. ^ Hoeffding W (1963) Probability inequalities for sums of bounded random variables. J Amer Statist Assoc 58: 13–30 MR144363
  7. ^ Pinelis I (1994) Optimum bounds for the distributions of martingales in Banach spaces. Ann Probab 22(4):1679–1706
  8. ^ de la Pena, VH, Lai TL, Shao Q (2009) Self normalized processes. Springer-Verlag, New York
  9. ^ van Zuijlen Martien CA (2011) On a conjecture concerning the sum of independent Rademacher random variables. https://arxiv.org/abs/1112.4988