In this paper we prove the so-called “Meek Conjecture”. In particular, we show that if a DAG H is an independence map of another DAG G, then there exists a finite sequence of edge additions and covered edge reversals in G such that (1) after each edge modification H remains an independence map of G and (2) after all modifications G = H. As shown by Meek (1997), this result has an important consequence for Bayesian approaches to learning Bayesian networks from data: in the limit of large sample size, there exists a two-phase greedy search algorithm that—when applied to a particular sparsely-connected search space—provably identifies a perfect map of the generative distribution if that perfect map is a DAG. We provide a new implementation of ...
Bayesian networks are frequently used to model statistical dependencies in data. Without prior knowl...
Learning the structure of a graphical model from data is a common task in a wide range of practical ...
Structure learning via MCMC sampling is known to be very challenging because of the enormous search ...
In this paper we prove the so-called “Meek Conjecture”. In particular, we show that if a DAG H is an...
In this paper, we derive optimality results for greedy Bayesian-network search algo-rithms that perf...
In 2017, Dai, Khalil, Zhang, Dilkina, and Song introduced a machine learning framework for finding g...
This paper proposes and evaluates the k-greedy equivalence search algorithm (KES) for learning Bayes...
Greedy algorithms (also called “Hill Climbing”) are algorithms that are iterative in nature and choo...
Finding a directed acyclic graph (DAG) that best encodes the conditional independence statements obs...
peer reviewedChordal graphs can be used to encode dependency models that are representable by both d...
Previous work has shown that the problem of learning the optimal structure of a Bayesian network can...
The MAP (maximum a posteriori hypothesis) problem in Bayesian networks is to find the most likely st...
AbstractWe recall the basic idea of an algebraic approach to learning Bayesian network (BN) structur...
The minimum-degree greedy algorithm, or Greedy for short, is a simple and well-studied method for fi...
Recently, Tsamardinos et al. [2006] presented an algorithm for Bayesian network structure learning t...
Bayesian networks are frequently used to model statistical dependencies in data. Without prior knowl...
Learning the structure of a graphical model from data is a common task in a wide range of practical ...
Structure learning via MCMC sampling is known to be very challenging because of the enormous search ...
In this paper we prove the so-called “Meek Conjecture”. In particular, we show that if a DAG H is an...
In this paper, we derive optimality results for greedy Bayesian-network search algo-rithms that perf...
In 2017, Dai, Khalil, Zhang, Dilkina, and Song introduced a machine learning framework for finding g...
This paper proposes and evaluates the k-greedy equivalence search algorithm (KES) for learning Bayes...
Greedy algorithms (also called “Hill Climbing”) are algorithms that are iterative in nature and choo...
Finding a directed acyclic graph (DAG) that best encodes the conditional independence statements obs...
peer reviewedChordal graphs can be used to encode dependency models that are representable by both d...
Previous work has shown that the problem of learning the optimal structure of a Bayesian network can...
The MAP (maximum a posteriori hypothesis) problem in Bayesian networks is to find the most likely st...
AbstractWe recall the basic idea of an algebraic approach to learning Bayesian network (BN) structur...
The minimum-degree greedy algorithm, or Greedy for short, is a simple and well-studied method for fi...
Recently, Tsamardinos et al. [2006] presented an algorithm for Bayesian network structure learning t...
Bayesian networks are frequently used to model statistical dependencies in data. Without prior knowl...
Learning the structure of a graphical model from data is a common task in a wide range of practical ...
Structure learning via MCMC sampling is known to be very challenging because of the enormous search ...