Cantelli's inequality
In probability theory, Cantelli's inequality (also called the Chebyshev-Cantelli inequality and the one-sided Chebyshev inequality) is an improved version of Chebyshev's inequality for one-sided tail bounds.[1][2][3] The inequality states that, for
where
- is a real-valued random variable,
- is the probability measure,
- is the expected value of ,
- is the variance of .
Applying the Cantelli inequality to gives a bound on the lower tail,
While the inequality is often attributed to Francesco Paolo Cantelli who published it in 1928,[4] it originates in Chebyshev's work of 1874.[5] When bounding the event random variable deviates from its mean in only one direction (positive or negative), Cantelli's inequality gives an improvement over Chebyshev's inequality. The Chebyshev inequality has "higher moments versions" and "vector versions", and so does the Cantelli inequality.
Comparison to Chebyshev's inequality[]
For one-sided tail bounds, Cantelli's inequality is better, since Chebyshev's inequality can only get
On the other hand, for two-sided tail bounds, Cantelli's inequality gives
which is always worse than Chebyshev's inequality (when ; otherwise, both inequalities bound a probability by a value greater than one, and so are trivial).
Proof[]
Let be a real-valued random variable with finite variance and expectation , and define (so that and ).
Then, for any , we have
the last inequality being a consequence of Markov's inequality. As the above holds for any choice of , we can choose to apply it with the value that minimizes the function . By differentiating, this can be seen to be , leading to
- if
Generalizations[]
Using more moments, various stronger inequalities can be shown. He, Zhang and Zhang and showed,[6] when and :
See also[]
References[]
- ^ Boucheron, Stéphane (2013). Concentration inequalities : a nonasymptotic theory of independence. Gábor Lugosi, Pascal Massart. Oxford: Oxford University Press. ISBN 978-0-19-953525-5. OCLC 829910957.
- ^ "Tail and Concentration Inequalities" by Hung Q. Ngo
- ^ "Concentration-of-measure inequalities" by Gábor Lugosi
- ^ Cantelli, F. P. (1928), "Sui confini della probabilita," Atti del Congresso Internazional del Matematici, Bologna, 6, 47-5
- ^ Ghosh, B.K., 2002. Probability inequalities related to Markov's theorem. The American Statistician, 56(3), pp.186-190
- ^ He, S.; Zhang, J.; Zhang, S. (2010). "Bounding probability of small deviation: A fourth moment approach". Mathematics of Operations Research. 35 (1): 208–232. doi:10.1287/moor.1090.0438. S2CID 11298475.
- Probabilistic inequalities