Graph neural networks: Variations and applications

Ғылым және технология

Many real-world tasks require understanding interactions between a set of entities. Examples include interacting atoms in chemical molecules, people in social networks and even syntactic interactions between tokens in program source code. Graph structured data types are a natural representation for such systems, and several architectures have been proposed for applying deep learning methods to these structured objects. I will give an overview of the research directions inside Microsoft that have explored different architectures and applications for deep learning on graph structured data.
See more at www.microsoft.com/en-us/resea...

Пікірлер: 36

  • @Mostafa-cv8jc
    @Mostafa-cv8jc3 жыл бұрын

    Give this guy a cookie. Clearly explained, make my life easier as I now refer people to this instead of explaining them for hours and hours

  • @kennys1881
    @kennys18815 жыл бұрын

    Links or no links, this video is far more clear than even the talks of the ones who published the paper...

  • @jimmorrisshen

    @jimmorrisshen

    4 жыл бұрын

    Cannot agree more.

  • @BlakeEdwards333
    @BlakeEdwards3334 жыл бұрын

    Thank you! This is fascinating!

  • @ethanjyx
    @ethanjyx4 жыл бұрын

    Great intro to a bunch of useful resources

  • @KW-md1bq
    @KW-md1bq3 жыл бұрын

    This lecturer is phenomenal

  • @jimmorrisshen
    @jimmorrisshen4 жыл бұрын

    Thanks so much. This is very clear explained. A MUST SEE for GNN beginners.

  • @guilhermehx7159

    @guilhermehx7159

    3 жыл бұрын

    :)

  • @beizhou2488
    @beizhou24884 жыл бұрын

    On the eve of watching this presentation, I gave it a thump up because all the comments say it is phenomenal.

  • @jimbocho660

    @jimbocho660

    10 ай бұрын

    That's a collaborative recommendation.

  • @atwinemugume
    @atwinemugume4 жыл бұрын

    Thank you for the talk, I have good info on this as of now...

  • @jawadch8723
    @jawadch872311 ай бұрын

    A very good and clear explaination.

  • @longliangqu
    @longliangqu5 жыл бұрын

    can you share the great slides? it's so vivid!

  • @taku8751
    @taku87513 жыл бұрын

    I have question in nlp applications, We all know there is graph relationship in a sentence , but we do not know what the relationship(edges) is, so how can we use it in nlp?

  • @ShikhaMallick
    @ShikhaMallick3 жыл бұрын

    Does this method work for dynamic graphs? Since we need information about neighbours of every node, the adjacent nodes should be known prior. Also, in what format the graph is given as input? Is it an adjacency matrix or list?

  • @sofdff

    @sofdff

    3 жыл бұрын

    One can look into SAGE convolutions.

  • @crwhhx
    @crwhhx5 жыл бұрын

    A bit confused about the networks representing edges. Which of the following is true? 1. Each edge is represented by a unique network, or 2. Edges of the same *type* are represented by the same network, each *type* is represented by a unique network?

  • @nerdistry

    @nerdistry

    4 жыл бұрын

    2.

  • @Jirayu.Kaewprateep

    @Jirayu.Kaewprateep

    3 жыл бұрын

    I think it can be both each networks type can create of unique ( for result or next chapter ) and it can be same for same reasons if you talking about targetting outputs like we training some networks.

  • @aixueer4ever
    @aixueer4ever5 жыл бұрын

    The animation of message passing is so cool. Where can I steal the slides? lol

  • @hayleymiller5436

    @hayleymiller5436

    4 жыл бұрын

    for real i need these visuals

  • @xianchen1935
    @xianchen19352 жыл бұрын

    Wait how are they directed? Aren't they bidirectional? If the adjacency matrix is symmetric it is not a directed graph.. but a bidirectional one isn't it?

  • @bharathram3977
    @bharathram39773 жыл бұрын

    How do I make such cool presentations? (Also which tool did he use to make this presentation slides?)

  • @halilibrahimakgun7569
    @halilibrahimakgun7569 Жыл бұрын

    Can you share slides please.

  • @Jirayu.Kaewprateep
    @Jirayu.Kaewprateep3 жыл бұрын

    I am not good about those function parameters and the historical of it but one me interesting I rectangular shape he create to contains object! Anyof shape is diagonal symmetry or they are horizontal and vertical symmetry⁉️ Otherwise people need to do like this all the time they taken pictures 🤸

  • @vcool
    @vcool5 жыл бұрын

    Microsoft has no related software to offer. As of 2018, look at "deepmind/graph_nets" and "dmlc/dgl" instead.

  • @fricklas

    @fricklas

    4 жыл бұрын

    github.com/microsoft/tf-gnn-samples

  • @tomburns5231
    @tomburns52314 жыл бұрын

    A few thoughts: - Their integration algorithm seems like a bad inspiration of what SNNs do. It would make more sense to have time constants and more dynamics. - They should not always look from the "god's eye view" considering in many cases it highly specific features or subgraphs of graphs which are important for a function/ - I notice they didn't compare their method to established graph theoretic methods. They should.

  • @newbie8051

    @newbie8051

    Жыл бұрын

    what are SNN's ? As in the full form. Sorry to sound dumb, started with gnn's a week ago

  • @marat61
    @marat615 жыл бұрын

    As usual very exiting video with no links to recent papers. Very shame microsoft

  • @tanismar84

    @tanismar84

    5 жыл бұрын

    if you go to 10:10 you can see a bunch of references for the most relevant papers. You just need to type them down in your search bar and voi la, links to all the papers.

  • @zinyang8213

    @zinyang8213

    5 жыл бұрын

    Also checkout this talk vimeo.com/238221016 has many references.

  • @user-xc7cy8gs2i
    @user-xc7cy8gs2i4 жыл бұрын

    nick talk.

  • @cy-ti8ln
    @cy-ti8ln3 жыл бұрын

    Why do not you talk a bit clearly ? Has talking been monetized a time ago ? Very bad presentation

Келесі