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YouTube

Single View and Multiview Signed Graph Learning - Applications to Gene Regulatory Network Inference

IEEE Signal Processing Society via YouTube

Overview

Explore signed graph learning techniques and their applications in gene regulatory network inference in this IEEE Signal Processing Society webinar. Delve into single-view and multi-view approaches, focusing on smoothness-based graph learning and its implementation in single-cell RNA sequencing data analysis. Examine the framework, sensitivity, and time complexity of these methods, and learn about data curation processes. Investigate multi-view signed graph learning, its applications, and hyperparameter selection. Compare results across different approaches and discuss potential extensions. Gain insights into computational issues and participate in a Q&A session to deepen your understanding of this cutting-edge topic in data science and graph theory.

Syllabus

Introduction
Applications of graphs
Smoothnessbased graph learning
Single cell RNA sequencing data
Goal
Framework
Sensitivity
Time Complexity
Data Curated
Multiview Signed Graph Learning
Applications
Multiview graph learning framework
Hyperparameter selection
Comparison
Multiview
Results
Extensions
Acknowledgements
Questions
Smoothness
Computational issues

Taught by

IEEE Signal Processing Society

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