Fields- 18th Workshop on Algorithms and Models for Web Graphs

  1. Title:
    The Iterated Local Transitivity model for tournaments

    Speaker:

    Link:

  2. Title:
    The emergence of a giant component in one-dimensional inhomogeneous networks with long-range effects

    Speaker:

    Link:

  3. Title:
    A simple model of influence

    Speaker:

    Link:

  4. Title:
    Graphs, Networks, and Estimation: Statistical and Machine Learning Perspectives

    Speaker:

    Link:

  5. Title:
    Detection of anomalies in digital markets using graph data on the example of cryptocurrency markets and information

    Speaker:

    Link:

  6. Title:
    Outlier detection with community structure on graphs

    Speaker:

    Link:

  7. Title:
    Parallel algorithm for sampling large configuration model graphs in Julia

    Speaker:

    Link:

  8. Title:
    Scalable Embedding-based Graph Generator

    Speaker:

    Link:

  9. Title:
    PageRank Nibble on the sparse directed stochastic block model

    Speaker:

    Link:

  10. Title:
    A Random Graph Model for Clustering Graphs

    Speaker:

    Link:

  11. Title:
    Correcting for Granularity Bias in Modularity-Based Community Detection Methods

    Speaker:

    Link:

  12. Title:
    Local Algorithms to Predict Epidemics on Networks

    Speaker:

    Link:

  13. Title:
    Introduction to Random Walks on Graphs in Julia (Tutorial #4)

    Speaker:

    Link:

  14. Title:
    Graph Embeddings and Their Unsupervised Evaluation (Tutorial #3)

    Speaker:

    Link:

  15. Title:
    Modularity Based Community Detection in Hypergraphs

    Speaker:

    Link:

  16. Title:
    Topological Analysis of Temporal Hypergraphs

    Speaker:

    Link:

  17. Title:
    Multilayer hypergraph clustering using the aggregate similarity matrix

    Speaker:

    Link:

  18. Title:
    It’s hard to kill fake news

    Speaker:

    Link:

  19. Title:
    Introduction to Mining Graphs in Julia

    Speaker:

    Link:

  20. Title:
    A Gentle Introduction to Hypergraph Analytics using HyperNetX

    Speaker:

    Link: