Probabilistic circuits (PCs) are a promising avenue for probabilistic modeling, as they permit a wide range of exact and efficient inference routines. Recent “deep-learning-style” implementations of PCs strive for a better scalability, but are still difficult to train on real-world data, due to their sparsely connected computational graphs. In this paper, we propose Einsum Networks (EiNets), a novel implementation design for PCs, improving prior art in several regards. At their core, EiNets combine a large number of arithmetic operations in a single monolithic einsum-operation, leading to speedups and memory savings of up to two orders of magnitude, in comparison to previous implementations. As an algorithmic contribution, we show that the ...
Smart portable applications increasingly rely on edge computing due to privacyand latency concerns. ...
Sigmoid type belief networks, a class of probabilistic neural networks, provide a natural framework ...
Probabilistic circuits (PCs) are a tractable representation of probability distributions allowing fo...
Density estimation could be viewed as a core component in machine learning, since a good estimator c...
On one side, symbolic methods represent our knowledge of the world, and when coupled with probabilis...
The biggest limitation of probabilistic graphical models is the complexity of inference, which is of...
The rising popularity of generative models together with the growing need for flexible and exact inf...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Probabilistic graphical models have been successfully applied to a wide variety of fields such as co...
Probabilistic generating circuits (PGCs) are economical representations of multivariate probability ...
The probabilistic sentential decision diagram (PSDD) was recently introduced as a tractable represen...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Recently much work in Machine Learning has concentrated on representation languages able to combine...
Sum-product networks (SPNs) are expressive probabilistic models with a rich set of exact and efficie...
Graphical models are usually learned without re-gard to the cost of doing inference with them. As a ...
Smart portable applications increasingly rely on edge computing due to privacyand latency concerns. ...
Sigmoid type belief networks, a class of probabilistic neural networks, provide a natural framework ...
Probabilistic circuits (PCs) are a tractable representation of probability distributions allowing fo...
Density estimation could be viewed as a core component in machine learning, since a good estimator c...
On one side, symbolic methods represent our knowledge of the world, and when coupled with probabilis...
The biggest limitation of probabilistic graphical models is the complexity of inference, which is of...
The rising popularity of generative models together with the growing need for flexible and exact inf...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Probabilistic graphical models have been successfully applied to a wide variety of fields such as co...
Probabilistic generating circuits (PGCs) are economical representations of multivariate probability ...
The probabilistic sentential decision diagram (PSDD) was recently introduced as a tractable represen...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Recently much work in Machine Learning has concentrated on representation languages able to combine...
Sum-product networks (SPNs) are expressive probabilistic models with a rich set of exact and efficie...
Graphical models are usually learned without re-gard to the cost of doing inference with them. As a ...
Smart portable applications increasingly rely on edge computing due to privacyand latency concerns. ...
Sigmoid type belief networks, a class of probabilistic neural networks, provide a natural framework ...
Probabilistic circuits (PCs) are a tractable representation of probability distributions allowing fo...