Search Results for author: Maria I. Gorinova

Found 6 papers, 4 papers with code

Program Analysis of Probabilistic Programs

no code implementations14 Apr 2022 Maria I. Gorinova

The techniques analyse a probabilistic program and adapt it to make inference more efficient, sometimes in a way that would have been tedious or impossible to do by hand.

Probabilistic Programming

On the Unreasonable Effectiveness of Feature propagation in Learning on Graphs with Missing Node Features

1 code implementation23 Nov 2021 Emanuele Rossi, Henry Kenlay, Maria I. Gorinova, Benjamin Paul Chamberlain, Xiaowen Dong, Michael Bronstein

While Graph Neural Networks (GNNs) have recently become the de facto standard for modeling relational data, they impose a strong assumption on the availability of the node or edge features of the graph.

Node Classification

Conditional independence by typing

1 code implementation22 Oct 2020 Maria I. Gorinova, Andrew D. Gordon, Charles Sutton, Matthijs Vákár

The resulting program can be seen as a hybrid inference algorithm on the original program, where continuous parameters can be drawn using efficient gradient-based inference methods, while the discrete parameters are inferred using variable elimination.

Probabilistic Programming

Automatic Reparameterisation of Probabilistic Programs

1 code implementation ICML 2020 Maria I. Gorinova, Dave Moore, Matthew D. Hoffman

Probabilistic programming has emerged as a powerful paradigm in statistics, applied science, and machine learning: by decoupling modelling from inference, it promises to allow modellers to directly reason about the processes generating data.

Probabilistic Programming

Effect Handling for Composable Program Transformations in Edward2

no code implementations15 Nov 2018 Dave Moore, Maria I. Gorinova

Algebraic effects and handlers have emerged in the programming languages community as a convenient, modular abstraction for controlling computational effects.

Probabilistic Programming

Probabilistic Programming with Densities in SlicStan: Efficient, Flexible and Deterministic

1 code implementation2 Nov 2018 Maria I. Gorinova, Andrew D. Gordon, Charles Sutton

Stan is a probabilistic programming language that has been increasingly used for real-world scalable projects.

Probabilistic Programming

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