Gaussian Bayesian networks (a.k.a. linear Gaussian structural equation models) are widely used to model causal interactions among continuous variables. In this work, we study the problem of learning a fixed-structure Gaussian Bayesian network up to a bounded error in total variation distance. We analyze the commonly used node-wise least squares regression (LeastSquares) and prove that it has a near-optimal sample complexity. We also study a couple of new algorithms for the problem: - BatchAvgLeastSquares takes the average of several batches of least squares solutions at each node, so that one can interpolate between the batch size and the number of batches. We show that BatchAvgLeastSquares also has near-optimal sample complexity. - Cau...
One of the main research topics in machine learning nowadays is the improvement of the inference an...
Learning the structure of a graphical model from data is a common task in a wide range of practical ...
Bayesian Networks are increasingly popular methods of modeling uncertainty in artificial intelligenc...
We commonly assume that data are a homogeneous set of observations when learning the structure of Ba...
We study the problem of learning the structure of an optimal Bayesian network when additional constr...
Learning the structure of Bayesian networks from data is known to be a computationally challenging, ...
Learning the structure of Bayesian networks from data is known to be a computationally challenging, ...
Abstract—Bayesian networks (BNs) are popular for modeling conditional distributions of variables and...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Gaussian processes are now widely used to perform key machine learning tasks such as nonlinear regr...
In this paper, we provide new complexity results for algorithms that learn discrete-variable Bayesia...
We propose and justify a better-than-frequentist approach for bayesian network parametrization, and ...
Modern exact algorithms for structure learning in Bayesian networks first compute an exact local sco...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
One of the main research topics in machine learning nowa- days is the improvement of the inference ...
One of the main research topics in machine learning nowadays is the improvement of the inference an...
Learning the structure of a graphical model from data is a common task in a wide range of practical ...
Bayesian Networks are increasingly popular methods of modeling uncertainty in artificial intelligenc...
We commonly assume that data are a homogeneous set of observations when learning the structure of Ba...
We study the problem of learning the structure of an optimal Bayesian network when additional constr...
Learning the structure of Bayesian networks from data is known to be a computationally challenging, ...
Learning the structure of Bayesian networks from data is known to be a computationally challenging, ...
Abstract—Bayesian networks (BNs) are popular for modeling conditional distributions of variables and...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Gaussian processes are now widely used to perform key machine learning tasks such as nonlinear regr...
In this paper, we provide new complexity results for algorithms that learn discrete-variable Bayesia...
We propose and justify a better-than-frequentist approach for bayesian network parametrization, and ...
Modern exact algorithms for structure learning in Bayesian networks first compute an exact local sco...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
One of the main research topics in machine learning nowa- days is the improvement of the inference ...
One of the main research topics in machine learning nowadays is the improvement of the inference an...
Learning the structure of a graphical model from data is a common task in a wide range of practical ...
Bayesian Networks are increasingly popular methods of modeling uncertainty in artificial intelligenc...