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.
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.
; otherwise, both inequalities bound a probability by a value greater than one, and so are trivial).
this matches a bound in Berger's "The Fourth Moment Method",[7] This improves over Cantelli's inequality in that we can get a non-zero lower bound, even when