We consider a basic problem in unsupervised learning: learning an unknown \emph{Poisson Binomial Distribution}. A Poisson Binomial Distribution (PBD) over {0,1,…,n} is the distribution of a sum of n independent Bernoulli random variables which may have arbitrary, potentially non-equal, expectations. These distributions were first studied by S. Poisson in 1837 \cite{Poisson:37} and are a natural n-parameter generalization of the familiar Binomial Distribution. Surprisingly, prior to our work this basic learning problem was poorly understood, and known results for it were far from optimal. We essentially settle the complexity of the learning problem for this basic class of distributions. As our first main result we give a highly efficient al...
A probability distribution over the Boolean cube is monotone if flipping the value of a coordinate f...
A probability distribution is a statistical function that describes the probability of possible outc...
The random variable X taking values 0,1,2,…,x,… with probabilities pλ(x) = e−λλx/x!, where λ∈R0+ is ...
An (n, k)-Poisson Multinomial Distribution (PMD) is the distribution of the sum of n independent ran...
A Poisson Binomial distribution over n variables is the distribution of the sum of n independent Ber...
A Poisson Binomial distribution over n variables is the distribution of the sum of n independent Ber...
Let S = X[subscript 1]+···+X[subscript n] be a sum of n independent integer random variables X[subsc...
We give several examples for Poisson approximation of quantities of interest in the analysis of algo...
If a coin that comes up heads with probability p is tossed n times, the number of heads observed fol...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Let C be a class of probability distributions over the discrete domain [n] = {1,..., n}. We show th...
The Poisson's binomial (PB) is the probability distribution of the number of successes in independen...
The Poisson's binomial (PB) is the probability distribution of the number of successes in independen...
The Poisson's binomial (PB) is the probability distribution of the number of successes in independen...
We derive upper bounds for the total variation distance, d, between the distributions of two random ...
A probability distribution over the Boolean cube is monotone if flipping the value of a coordinate f...
A probability distribution is a statistical function that describes the probability of possible outc...
The random variable X taking values 0,1,2,…,x,… with probabilities pλ(x) = e−λλx/x!, where λ∈R0+ is ...
An (n, k)-Poisson Multinomial Distribution (PMD) is the distribution of the sum of n independent ran...
A Poisson Binomial distribution over n variables is the distribution of the sum of n independent Ber...
A Poisson Binomial distribution over n variables is the distribution of the sum of n independent Ber...
Let S = X[subscript 1]+···+X[subscript n] be a sum of n independent integer random variables X[subsc...
We give several examples for Poisson approximation of quantities of interest in the analysis of algo...
If a coin that comes up heads with probability p is tossed n times, the number of heads observed fol...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Let C be a class of probability distributions over the discrete domain [n] = {1,..., n}. We show th...
The Poisson's binomial (PB) is the probability distribution of the number of successes in independen...
The Poisson's binomial (PB) is the probability distribution of the number of successes in independen...
The Poisson's binomial (PB) is the probability distribution of the number of successes in independen...
We derive upper bounds for the total variation distance, d, between the distributions of two random ...
A probability distribution over the Boolean cube is monotone if flipping the value of a coordinate f...
A probability distribution is a statistical function that describes the probability of possible outc...
The random variable X taking values 0,1,2,…,x,… with probabilities pλ(x) = e−λλx/x!, where λ∈R0+ is ...