Poster
in
Workshop: New Frontiers in Graph Learning
A deep learning approach to recover conditional independence graphs
Harsh Shrivastava · Urszula Chajewska · Robin Abraham · Xinshi Chen
Keywords: [ Deep Learning ] [ Conditional Independence graphs ] [ Unrolled Algorithms ] [ Graphical Lasso ] [ Sparse graphs ]
Abstract:
Probabilistic Graphical Models are generative models of complex systems. They rely on conditional independence assumptions between variables to learn sparse representations which can be visualized in a form of a graph. Such models are used for domain exploration and structure discovery in poorly understood domains. This work introduces a novel technique to perform sparse graph recovery by optimizing deep unrolled networks. Assuming that the input data $X\in\mathbb{R}^{M\times D}$ comes from an underlying multivariate Gaussian distribution, we apply a deep model on $X$ that outputs the precision matrix $\Theta$. Then, the partial correlation matrix `$\rho$' is calculated which can also be interpreted as the conditional independence graph. Our model, \texttt{uGLAD}, builds upon and extends the state-of-the-art model \texttt{GLAD} to the unsupervised setting. The key benefits of our model are (1) \texttt{uGLAD} automatically optimizes sparsity-related regularization parameters leading to better performance than existing algorithms. (2) We introduce multi-task learning based `consensus' strategy for robust handling of missing data in an unsupervised setting. We evaluate performance on synthetic Gaussian, non-Gaussian data generated from Gene Regulatory Networks, and present a case study in anaerobic digestion.
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