Multiway data often naturally occurs in a tensorial format which can be approximately represented by a low-rank tensor decomposition. This is useful because complexity can be significantly reduced and the treatment of large-scale data sets can be facilitated. In this paper, we find a low-rank representation for a given tensor by solving a Bayesian inference problem. This is achieved by dividing the overall inference problem into subproblems where we sequentially infer the posterior distribution of one tensor decomposition component at a time. This leads to a probabilistic interpretation of the well-known iterative algorithm alternating linear scheme (ALS). In this way, the consideration of measurement noise is enabled, as well as the incorp...
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 ...
summary:We propose a new additive decomposition of probability tables – tensor rank-one decompositio...
Multiway data often naturally occurs in a tensorial format which can be approximately represented by...
We present a scalable Bayesian framework for low-rank decomposition of multiway tensor data with mis...
Abstract—We propose a generative model for robust tensor factorization in the presence of both missi...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
Bayesian networks are a popular model for reasoning under uncertainty. We study the problem of effic...
Vector data are normally used for probabilistic graphical models with Bayesian inference. However, t...
It has become routine to collect data that are structured as multiway arrays (tensors). There is an ...
factors capturing the tensor’s rank is proposed in this paper, as the key enabler for completion of ...
The rising computational and memory demands of machine learning models, particularly in resource-con...
The rising computational and memory demands of machine learning models, particularly in resource-con...
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 ...
summary:We propose a new additive decomposition of probability tables – tensor rank-one decompositio...
Multiway data often naturally occurs in a tensorial format which can be approximately represented by...
We present a scalable Bayesian framework for low-rank decomposition of multiway tensor data with mis...
Abstract—We propose a generative model for robust tensor factorization in the presence of both missi...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
Bayesian networks are a popular model for reasoning under uncertainty. We study the problem of effic...
Vector data are normally used for probabilistic graphical models with Bayesian inference. However, t...
It has become routine to collect data that are structured as multiway arrays (tensors). There is an ...
factors capturing the tensor’s rank is proposed in this paper, as the key enabler for completion of ...
The rising computational and memory demands of machine learning models, particularly in resource-con...
The rising computational and memory demands of machine learning models, particularly in resource-con...
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 ...
summary:We propose a new additive decomposition of probability tables – tensor rank-one decompositio...