Conditional probability tables (CPTs) of discrete valued random variables may achieve high dimensions and Bayesian networks defined as the product of these CPTs may become intractable by conventional methods of BN inference because of their dimensionality. In many cases, however, these probability tables constitute tensors of relatively low rank. Such tensors can be written in the so-called Kruskal form as a sum of rank-one components. Such representation would be equivalent to adding one artificial parent to all random variables and deleting all edges between the variables. The most difficult task is to find such a representation given a set of marginals or CPTs of the random variables under consideration. In the former case, it is a problem...
Recently several researchers have investi-gated techniques for using data to learn Bayesian networks...
Bayesian networks (BNs) have proven to be a modeling framework capable of capturing uncertain knowle...
In this paper we demonstrate how Grobner bases and other algebraic techniques can be used to explore...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
Bayesian networks are a popular model for reasoning under uncertainty. We study the problem of effic...
We apply tensor rank-one decomposition (Savicky and Vomlel, 2005) to conditional probability tables ...
We apply tensor rank-one decomposition (Savicky and Vomlel, 2005) to conditional probability tables ...
In this article, we introduce a dynamic generative model, the Bayesian allocation model (BAM), for m...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
summary:We propose a new additive decomposition of probability tables – tensor rank-one decompositio...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
Publisher Copyright: © 2021 The AuthorsThis paper advances the use of the ranked nodes method (RNM) ...
AbstractIn this paper we demonstrate how Gröbner bases and other algebraic techniques can be used to...
AbstractIn this paper we demonstrate how Gröbner bases and other algebraic techniques can be used to...
Recently several researchers have investi-gated techniques for using data to learn Bayesian networks...
Bayesian networks (BNs) have proven to be a modeling framework capable of capturing uncertain knowle...
In this paper we demonstrate how Grobner bases and other algebraic techniques can be used to explore...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
Bayesian networks are a popular model for reasoning under uncertainty. We study the problem of effic...
We apply tensor rank-one decomposition (Savicky and Vomlel, 2005) to conditional probability tables ...
We apply tensor rank-one decomposition (Savicky and Vomlel, 2005) to conditional probability tables ...
In this article, we introduce a dynamic generative model, the Bayesian allocation model (BAM), for m...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
summary:We propose a new additive decomposition of probability tables – tensor rank-one decompositio...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
Publisher Copyright: © 2021 The AuthorsThis paper advances the use of the ranked nodes method (RNM) ...
AbstractIn this paper we demonstrate how Gröbner bases and other algebraic techniques can be used to...
AbstractIn this paper we demonstrate how Gröbner bases and other algebraic techniques can be used to...
Recently several researchers have investi-gated techniques for using data to learn Bayesian networks...
Bayesian networks (BNs) have proven to be a modeling framework capable of capturing uncertain knowle...
In this paper we demonstrate how Grobner bases and other algebraic techniques can be used to explore...