Literature DB >> 31108681

Data-driven inference of hidden nodes in networks.

Danh-Tai Hoang1,2, Junghyo Jo3,4, Vipul Periwal1.   

Abstract

The explosion of activity in finding interactions in complex systems is driven by availability of copious observations of complex natural systems. However, such systems, e.g., the human brain, are rarely completely observable. Interaction network inference must then contend with hidden variables affecting the behavior of the observed parts of the system. We present an effective approach for model inference with hidden variables. From configurations of observed variables, we identify the observed-to-observed, hidden-to-observed, observed-to-hidden, and hidden-to-hidden interactions, the configurations of hidden variables, and the number of hidden variables. We demonstrate the performance of our method by simulating a kinetic Ising model, and show that our method outperforms existing methods. Turning to real data, we infer the hidden nodes in a neuronal network in the salamander retina and a stock market network. We show that predictive modeling with hidden variables is significantly more accurate than that without hidden variables. Finally, an important hidden variable problem is to find the number of clusters in a dataset. We apply our method to classify MNIST handwritten digits. We find that there are about 60 clusters which are roughly equally distributed among the digits.

Entities:  

Year:  2019        PMID: 31108681      PMCID: PMC7459390          DOI: 10.1103/PhysRevE.99.042114

Source DB:  PubMed          Journal:  Phys Rev E        ISSN: 2470-0045            Impact factor:   2.529


  14 in total

1.  Irregularity, volatility, risk, and financial market time series.

Authors:  Steve Pincus; Rudolf E Kalman
Journal:  Proc Natl Acad Sci U S A       Date:  2004-09-09       Impact factor: 11.205

2.  Using the principle of entropy maximization to infer genetic interaction networks from gene expression patterns.

Authors:  Timothy R Lezon; Jayanth R Banavar; Marek Cieplak; Amos Maritan; Nina V Fedoroff
Journal:  Proc Natl Acad Sci U S A       Date:  2006-11-30       Impact factor: 11.205

3.  Network inference in stochastic systems from neurons to currencies: Improved performance at small sample size.

Authors:  Danh-Tai Hoang; Juyong Song; Vipul Periwal; Junghyo Jo
Journal:  Phys Rev E       Date:  2019-02       Impact factor: 2.529

4.  Maximum likelihood reconstruction for Ising models with asynchronous updates.

Authors:  Hong-Li Zeng; Mikko Alava; Erik Aurell; John Hertz; Yasser Roudi
Journal:  Phys Rev Lett       Date:  2013-05-20       Impact factor: 9.161

5.  Network inference with hidden units.

Authors:  Joanna Tyrcha; John Hertz
Journal:  Math Biosci Eng       Date:  2014-02       Impact factor: 2.080

Review 6.  Inference of gene regulatory networks using boolean-network inference methods.

Authors:  Graham J Hickman; T Charlie Hodgman
Journal:  J Bioinform Comput Biol       Date:  2009-12       Impact factor: 1.122

Review 7.  Studying and modelling dynamic biological processes using time-series gene expression data.

Authors:  Ziv Bar-Joseph; Anthony Gitter; Itamar Simon
Journal:  Nat Rev Genet       Date:  2012-07-18       Impact factor: 53.242

8.  Learning and inference in a nonequilibrium Ising model with hidden nodes.

Authors:  Benjamin Dunn; Yasser Roudi
Journal:  Phys Rev E Stat Nonlin Soft Matter Phys       Date:  2013-02-20

9.  Studying Brain Circuit Function with Dynamic Causal Modeling for Optogenetic fMRI.

Authors:  David Bernal-Casas; Hyun Joo Lee; Andrew J Weitz; Jin Hyung Lee
Journal:  Neuron       Date:  2017-01-26       Impact factor: 17.173

10.  Imaging large-scale neural activity with cellular resolution in awake, mobile mice.

Authors:  Daniel A Dombeck; Anton N Khabbaz; Forrest Collman; Thomas L Adelman; David W Tank
Journal:  Neuron       Date:  2007-10-04       Impact factor: 17.173

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  2 in total

1.  Inference of stochastic time series with missing data.

Authors:  Sangwon Lee; Vipul Periwal; Junghyo Jo
Journal:  Phys Rev E       Date:  2021-08       Impact factor: 2.707

2.  Genome-wide covariation in SARS-CoV-2.

Authors:  Evan Cresswell-Clay; Vipul Periwal
Journal:  Math Biosci       Date:  2021-08-13       Impact factor: 2.144

  2 in total

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