Joint Gaussian Graphical Model Estimation: A Survey
- URL: http://arxiv.org/abs/2110.10281v1
- Date: Tue, 19 Oct 2021 21:56:27 GMT
- Title: Joint Gaussian Graphical Model Estimation: A Survey
- Authors: Katherine Tsai, Oluwasanmi Koyejo, Mladen Kolar
- Abstract summary: Graphs from complex systems often share a partial underlying structure across domains while retaining individual features.
Growing evidence shows that the shared structure across domains boosts the estimation power of graphs.
This manuscript surveys recent work on statistical inference of joint Gaussian graphical models.
- Score: 31.811209829224293
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Graphs from complex systems often share a partial underlying structure across
domains while retaining individual features. Thus, identifying common
structures can shed light on the underlying signal, for instance, when applied
to scientific discoveries or clinical diagnoses. Furthermore, growing evidence
shows that the shared structure across domains boosts the estimation power of
graphs, particularly for high-dimensional data. However, building a joint
estimator to extract the common structure may be more complicated than it
seems, most often due to data heterogeneity across sources. This manuscript
surveys recent work on statistical inference of joint Gaussian graphical
models, identifying model structures that fit various data generation
processes. Simulations under different data generation processes are
implemented with detailed discussions on the choice of models.
Related papers
- Dissecting embedding method: learning higher-order structures from data [0.0]
Geometric deep learning methods for data learning often include set of assumptions on the geometry of the feature space.
These assumptions together with data being discrete and finite can cause some generalisations, which are likely to create wrong interpretations of the data and models outputs.
arXiv Detail & Related papers (2024-10-14T08:19:39Z) - Learning Divergence Fields for Shift-Robust Graph Representations [73.11818515795761]
In this work, we propose a geometric diffusion model with learnable divergence fields for the challenging problem with interdependent data.
We derive a new learning objective through causal inference, which can guide the model to learn generalizable patterns of interdependence that are insensitive across domains.
arXiv Detail & Related papers (2024-06-07T14:29:21Z) - Improving embedding of graphs with missing data by soft manifolds [51.425411400683565]
The reliability of graph embeddings depends on how much the geometry of the continuous space matches the graph structure.
We introduce a new class of manifold, named soft manifold, that can solve this situation.
Using soft manifold for graph embedding, we can provide continuous spaces to pursue any task in data analysis over complex datasets.
arXiv Detail & Related papers (2023-11-29T12:48:33Z) - GrannGAN: Graph annotation generative adversarial networks [72.66289932625742]
We consider the problem of modelling high-dimensional distributions and generating new examples of data with complex relational feature structure coherent with a graph skeleton.
The model we propose tackles the problem of generating the data features constrained by the specific graph structure of each data point by splitting the task into two phases.
In the first it models the distribution of features associated with the nodes of the given graph, in the second it complements the edge features conditionally on the node features.
arXiv Detail & Related papers (2022-12-01T11:49:07Z) - Towards a mathematical understanding of learning from few examples with
nonlinear feature maps [68.8204255655161]
We consider the problem of data classification where the training set consists of just a few data points.
We reveal key relationships between the geometry of an AI model's feature space, the structure of the underlying data distributions, and the model's generalisation capabilities.
arXiv Detail & Related papers (2022-11-07T14:52:58Z) - Study of Manifold Geometry using Multiscale Non-Negative Kernel Graphs [32.40622753355266]
We propose a framework to study the geometric structure of the data.
We make use of our recently introduced non-negative kernel (NNK) regression graphs to estimate the point density, intrinsic dimension, and the linearity of the data manifold (curvature)
arXiv Detail & Related papers (2022-10-31T17:01:17Z) - Amortised Inference in Structured Generative Models with Explaining Away [16.92791301062903]
We extend the output of amortised variational inference to incorporate structured factors over multiple variables.
We show that appropriately parameterised factors can be combined efficiently with variational message passing in elaborate graphical structures.
We then fit the structured model to high-dimensional neural spiking time-series from the hippocampus of freely moving rodents.
arXiv Detail & Related papers (2022-09-12T12:52:15Z) - Learning the Evolutionary and Multi-scale Graph Structure for
Multivariate Time Series Forecasting [50.901984244738806]
We show how to model the evolutionary and multi-scale interactions of time series.
In particular, we first provide a hierarchical graph structure cooperated with the dilated convolution to capture the scale-specific correlations.
A unified neural network is provided to integrate the components above to get the final prediction.
arXiv Detail & Related papers (2022-06-28T08:11:12Z) - Amortized Inference for Causal Structure Learning [72.84105256353801]
Learning causal structure poses a search problem that typically involves evaluating structures using a score or independence test.
We train a variational inference model to predict the causal structure from observational/interventional data.
Our models exhibit robust generalization capabilities under substantial distribution shift.
arXiv Detail & Related papers (2022-05-25T17:37:08Z) - Lossless Compression of Structured Convolutional Models via Lifting [14.63152363481139]
We introduce a simple and efficient technique to detect the symmetries and compress the neural models without loss of any information.
We demonstrate through experiments that such compression can lead to significant speedups of structured convolutional models.
arXiv Detail & Related papers (2020-07-13T08:02:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.