© 2020 ACM. We study the problem, introduced by Qiao and Valiant, of learning from untrusted batches. Here, we assume m users, all of whom have samples from some underlying distribution over 1, ..., n. Each user sends a batch of k i.i.d. samples from this distribution; however an "-fraction of users are untrustworthy and can send adversarially chosen responses. The goal of the algorithm is to learn in total variation distance. When k = 1 this is the standard robust univariate density estimation setting and it is well-understood that (") error is unavoidable. Suprisingly, Qiao and Valiant gave an estimator which improves upon this rate when k is large. Unfortunately, their algorithms run in time which is exponential in either n or k. We firs...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We study the problem of learning from unlabeled samples very general statistical mixture models on l...
© 2020 ACM. We study the problem, introduced by Qiao and Valiant, of learning from untrusted batches...
We consider the problem of learning a discrete distribution in the presence of an epsilon fraction o...
Modern machine learning methods often require more data for training than a single expert can provid...
Modern machine learning methods often require more data for training than a single expert can provid...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
from Special Section of the SIAM Journal on Computing. "Special Section on the Fifty-Seventh Annual...
Presented on September 18, 2017 at 11:00 a.m. in the Klaus Advanced Computing Building, Room 1116E.I...
We study the problem of high-dimensional sparse mean estimation in the presence of an $\epsilon$-fra...
We design a new, fast algorithm for agnostically learning univariate probability distributions whose...
We consider PAC learning of probability distributions (a.k.a. density estimation), where we are give...
We consider a general statistical learning problem where an unknown fraction of the training data is...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We study the problem of learning from unlabeled samples very general statistical mixture models on l...
© 2020 ACM. We study the problem, introduced by Qiao and Valiant, of learning from untrusted batches...
We consider the problem of learning a discrete distribution in the presence of an epsilon fraction o...
Modern machine learning methods often require more data for training than a single expert can provid...
Modern machine learning methods often require more data for training than a single expert can provid...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
from Special Section of the SIAM Journal on Computing. "Special Section on the Fifty-Seventh Annual...
Presented on September 18, 2017 at 11:00 a.m. in the Klaus Advanced Computing Building, Room 1116E.I...
We study the problem of high-dimensional sparse mean estimation in the presence of an $\epsilon$-fra...
We design a new, fast algorithm for agnostically learning univariate probability distributions whose...
We consider PAC learning of probability distributions (a.k.a. density estimation), where we are give...
We consider a general statistical learning problem where an unknown fraction of the training data is...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We study the problem of learning from unlabeled samples very general statistical mixture models on l...