Metadata
Title
Learning Mesh and Multiple Conserved Networks From Data
Category
general
UUID
fb558b7b70e547b39986b6afa7e5636a
Source URL
https://wsai.iitm.ac.in/projects/learning-mesh-and-multiple-conserved-networks-f...
Parent URL
https://wsai.iitm.ac.in/projects/
Crawl Time
2026-03-23T19:05:02+00:00
Rendered Raw Markdown

Learning Mesh and Multiple Conserved Networks From Data

Source: https://wsai.iitm.ac.in/projects/learning-mesh-and-multiple-conserved-networks-from-data/ Parent: https://wsai.iitm.ac.in/projects/

Learning Mesh and Multiple Conserved Networks From Data

Investigators

Nirav Bhatt Shankar Narasimhan

Tags

network science network construction data mining graph theory

Reconstruction of network topology from data is one of the important problem in network science. Earlier, it has been shown that conserved tree-type (or radial) networks can be reconstructed from flow data exactly by combining learning method with graph realization problem [1]. However, the current approach in [1] allows to reconstruct meshed (looped) networks up to 2-isomorphism. Then, the following question arises for reconstruction of meshed networks (Q1) “Is it possible to exactly reconstruct meshed networks? If the answer to Question Q1 is positive, then, the next question is: (Q2) What information do we need to specify to exactly reconstruct these networks? Further, in [1], it is assumed that measured data are collected from one underlying network. However, measured data are collected from several networks. Then, the question is: (Q3) “How do we reconstruct several networks from measured data? In this proposal, we will investigate these three questions.