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Generalizing Convolutions for Deep Learning 

Microsoft Research
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Arguably, most excitement about deep learning revolves around the performance of convolutional neural networks and their ability to automatically extract useful features from signals. In this talk I will present work from AMLAB where we generalize these convolutions. First we study convolutions on graphs and propose a simple new method to learn embeddings of graphs which are subsequently used for semi-supervised learning and link prediction. We discuss applications to recommender systems and knowledge graphs. Second we propose a new type of convolution on regular grids based on group transformations. This generalizes normal convolutions based on translations to larger groups including the rotation group. Both methods often result in significant improvements relative to the current state of the art.
Joint work with Thomas Kipf, Rianne van den Berg and Taco Cohen.
See more on this video at www.microsoft....

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1 окт 2024

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Комментарии : 5   
@SayanGHD
@SayanGHD 6 лет назад
32:00 for graph convolutions.
@TheAIEpiphany
@TheAIEpiphany 3 года назад
Awesome lecture! Here are the timestamps: 00:00 Intro (explanation of the convolution operation) 03:35 3 interesting healthcare apps (detecting skin cancer in dermatology, tumors, and diabetic retinopathy) 07:50 ConvNets, invariance vs equivariance 14:20 Group CNNs 26:10 Q&A around group CNNs 32:00 GCN 50:00 Conclusion/Q&A
@FlyingOctopus0
@FlyingOctopus0 6 лет назад
I wonder if including further neighbours(distance of 2 edges) and multiplying them by W_2 will change anything. It would make a "kernel" bigger.
@francisking8020
@francisking8020 2 года назад
Hi… kindly help me out in developing a research topic in machine learning
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