We consider the problem of estimating the causal effect of a treatment o...
Causal relationships among a set of variables are commonly represented b...
We study the performance of Stochastic Cubic Regularized Newton (SCRN) o...
We study experiment design for the unique identification of the causal g...
The variance reduced gradient estimators for policy gradient methods has...
Imitation learning is a powerful approach for learning autonomous drivin...
One of the key objectives in many fields in machine learning is to disco...
We consider the problem of federated learning in a one-shot setting in w...
We consider the problem of recovering channel code parameters over a
can...
Given a social network modeled as a weighted graph G, the influence
maxi...
We study the problem of experiment design to learn causal structures fro...
The causal relationships among a set of random variables are commonly
re...
We consider distributed statistical optimization in one-shot setting, wh...
In this paper, we propose two distributed algorithms, named Distributed
...
It is known that from purely observational data, a causal DAG is identif...
We propose two nonlinear regression methods, named Adversarial Orthogona...
We consider the problem of learning causal models from observational dat...
We consider the problem of multi-choice majority voting in a network of ...
The graph matching problem refers to recovering the node-to-node
corresp...
We consider a distributed system of m machines and a server. Each machin...
The main goal in many fields in empirical sciences is to discover causal...
We propose an exact solution for the problem of finding the size of a Ma...
We study the problem of causal structure learning when the experimenter ...
We study causal inference in a multi-environment setting, in which the
f...
In distributed function computation, each node has an initial value and ...
We study the problem of learning the support of transition matrix betwee...
We study the problem of causal structure learning over a set of random
v...