Learning over sets, subgraphs, and streams: How to accurately incorporate graph context
MSR AI Distinguished Talk Series: Learning over sets, subgraphs, and streams: How to accurately incorporate graph context in network models
Although deep learning methods have been successfully applied in structured domains comprised of images and natural language, it is still difficult to apply the methods directly to graph and network domains due to issues of heterogeneity and long range dependence. In this talk, I will discuss some of our recent work developing neural network methods for complex network domains, including node classification, motif prediction, and knowledge graph inference. The key insights include incorporating dependencies from graph context into both the input features and the model architectures, employing randomization to learn permutation invariant functions over sets, and using graph-aware attention mechanisms to offset noise when incorporating higher-order patterns. Experiments on real work social network data shows that our methods produce significant gains compared to other state-of-the-art methods, but only when we think carefully about how to integrate relational inductive biases into the process.
- Date:
- Speakers:
- Jennifer Neville, Paul Bennett, Debadeepta Dey, Sean Andrist
- Affiliation:
- Purdue University, Microsoft Research
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Debadeepta Dey
Principal Researcher
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Paul Bennett
Partner Research Manager
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Sean Andrist
Principal Researcher
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Series: MSR AI Distinguished Lectures and Fireside Chats
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Frontiers in Machine Learning: Fireside Chat
Speakers:- Christopher Bishop,
- Peter Lee,
- Sandy Blyth
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Learning over sets, subgraphs, and streams: How to accurately incorporate graph context
Speakers:- Debadeepta Dey,
- Paul Bennett,
- Sean Andrist
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Fireside Chat with Anca Dragan
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Conversations Based on Search Engine Result Pages
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The Ethical Algorithm
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Fireside Chat with Stefanie Jegelka
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Fireside Chat with Peter Stone
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Efficient Robot Skill Learning: Grounded Simulation Learning and Imitation Learning from Observation
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Building Neural Network Models That Can Reason
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Fireside Chat with David Blei
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The Blessings of Multiple Causes
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As We May Program
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Fireside Chat with Peter Norvig
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- Peter Norvig
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An Optimization-Based Theory of Mind for Human-Robot Interaction
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Fireside Chat with Manuel Blum
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Towards a Conscious AI: A Computer Architecture inspired by Neuroscience
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Fireside Chat with Dario Amodei
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Super-Human AI for Strategic Reasoning
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