Constant-specified and exponential concentration inequalities play an essential role in the finite-sample theory of machine learning and high-dimensional statistics area. We obtain sharper and constants-specified concentration inequalities for the sum of independent sub-Weibull random variables, which leads to a mixture of two tails: sub-Gaussian for small deviations and sub-Weibull for large deviations from the mean. These bounds are new and improve existing bounds with sharper constants. In addition, a new sub-Weibull parameter is also proposed, which enables recovering the tight concentration inequality for a random variable (vector). For statistical applications, we give an ℓ2-error of estimated coefficients in negative binomial regress...
If a random variable is not exponentially integrable, it is known that no concentration inequality h...
In the modern era of high and infinite dimensional data, classical statistical methodology is often ...
If a random variable is not exponentially integrable, it is known that no concentration inequality h...
Constant-specified and exponential concentration inequalities play an essential role in the finite-s...
Known Bernstein-type upper bounds on the tail probabilities for sums of independent zero-mean sub-ex...
We prove analogues of the popular bounded difference inequality (also called McDiarmid’s inequality)...
We obtain concentration and large deviation for the sums of independent and identically distributed ...
International audienceWe propose the notion of sub-Weibull distributions, which are characterised by...
We establish a new concentration-of-measure inequality for the sum of independent random variables w...
Götze F, Sambale H, Sinulis A. Concentration inequalities for polynomials in alpha-sub-exponential r...
We present a new general concentration-of-measure inequality and illustrate its power by applicatio...
Abstract. In this expository note, we give a modern proof of Hanson-Wright inequality for quadratic ...
We derive Concentration of Measure (CoM) inequalities for randomized Toeplitz matrices. These inequa...
The Maximum Likelihood Estimator (MLE) serves an important role in statistics and machine learning. ...
We study the question of whether submodular functions of random variables satisfying various notions...
If a random variable is not exponentially integrable, it is known that no concentration inequality h...
In the modern era of high and infinite dimensional data, classical statistical methodology is often ...
If a random variable is not exponentially integrable, it is known that no concentration inequality h...
Constant-specified and exponential concentration inequalities play an essential role in the finite-s...
Known Bernstein-type upper bounds on the tail probabilities for sums of independent zero-mean sub-ex...
We prove analogues of the popular bounded difference inequality (also called McDiarmid’s inequality)...
We obtain concentration and large deviation for the sums of independent and identically distributed ...
International audienceWe propose the notion of sub-Weibull distributions, which are characterised by...
We establish a new concentration-of-measure inequality for the sum of independent random variables w...
Götze F, Sambale H, Sinulis A. Concentration inequalities for polynomials in alpha-sub-exponential r...
We present a new general concentration-of-measure inequality and illustrate its power by applicatio...
Abstract. In this expository note, we give a modern proof of Hanson-Wright inequality for quadratic ...
We derive Concentration of Measure (CoM) inequalities for randomized Toeplitz matrices. These inequa...
The Maximum Likelihood Estimator (MLE) serves an important role in statistics and machine learning. ...
We study the question of whether submodular functions of random variables satisfying various notions...
If a random variable is not exponentially integrable, it is known that no concentration inequality h...
In the modern era of high and infinite dimensional data, classical statistical methodology is often ...
If a random variable is not exponentially integrable, it is known that no concentration inequality h...