Loading Now

Summary of Learning Sparse High-dimensional Matrix-valued Graphical Models From Dependent Data, by Jitendra K Tugnait


Learning Sparse High-Dimensional Matrix-Valued Graphical Models From Dependent Data

by Jitendra K Tugnait

First submitted to arxiv on: 29 Apr 2024

Categories

  • Main: Machine Learning (stat.ML)
  • Secondary: Machine Learning (cs.LG); Signal Processing (eess.SP)

     Abstract of paper      PDF of paper


GrooveSquid.com Paper Summaries

GrooveSquid.com’s goal is to make artificial intelligence research accessible by summarizing AI papers in simpler terms. Each summary below covers the same AI paper, written at different levels of difficulty. The medium difficulty and low difficulty versions are original summaries written by GrooveSquid.com, while the high difficulty version is the paper’s original abstract. Feel free to learn from the version that suits you best!

Summary difficulty Written by Summary
High Paper authors High Difficulty Summary
Read the original abstract here
Medium GrooveSquid.com (original content) Medium Difficulty Summary
A novel approach is proposed to infer the conditional independence graph (CIG) of high-dimensional, sparse, and stationary matrix-variate Gaussian time series with dependent observations. Unlike previous work in high-dimensional matrix graphical models, which assumes independent and identically distributed (i.i.d.) observations, this method allows for dependent observations. A frequency-domain formulation is developed using a sparse-group lasso-based approach, solved via an alternating direction method of multipliers (ADMM) algorithm. The problem is bi-convex, requiring flip-flop optimization to converge. Sufficient conditions are provided for local convergence in the Frobenius norm of inverse PSD estimators to their true values, along with a rate of convergence. Numerical examples demonstrate the effectiveness of this approach using both synthetic and real data.
Low GrooveSquid.com (original content) Low Difficulty Summary
Inferring the conditional independence graph (CIG) of high-dimensional data is an important problem. Usually, we assume that each observation is independent and identical, but what if they’re not? A new way to solve this problem has been discovered, allowing dependent observations. This method uses a special type of math called sparse-group lasso and solves it using a clever algorithm called ADMM. The result shows that the method works well for both fake and real data.

Keywords

» Artificial intelligence  » Optimization  » Time series