Adaptive Gaussian Processes on Graphs via Spectral Graph Wavelets
- đ¤ Speaker: Felix Opolka
- đ Date & Time: Tuesday 08 February 2022, 13:15 - 14:15
- đ Venue: Zoom
Abstract
Graph-based models require aggregating information in the graph from neighbourhoods of different sizes. In particular, when the data exhibit varying levels of smoothness on the graph, a multi-scale approach is required to capture the relevant information. In this work, we propose a Gaussian process model using spectral graph wavelets, which can naturally aggregate neighbourhood information at different scales. Through maximum likelihood optimisation of the model hyperparameters, the wavelets automatically adapt to the different frequencies in the data, and as a result our model goes beyond capturing low frequency information. We achieve scalability to larger graphs by using a spectrum-adaptive polynomial approximation of the filter function, which is designed to yield a low approximation error in dense areas of the graph spectrum. Synthetic and real-world experiments demonstrate the ability of our model to infer scales accurately and produce competitive performances against state-of-the-art models in graph-based learning tasks.
Series This talk is part of the Artificial Intelligence Research Group Talks (Computer Laboratory) series.
Included in Lists
- All Talks (aka the CURE list)
- Artificial Intelligence Research Group Talks (Computer Laboratory)
- bld31
- Cambridge Centre for Data-Driven Discovery (C2D3)
- Cambridge Forum of Science and Humanities
- Cambridge Language Sciences
- Cambridge talks
- Chris Davis' list
- Department of Computer Science and Technology talks and seminars
- Guy Emerson's list
- Hanchen DaDaDash
- Interested Talks
- Martin's interesting talks
- ndk22's list
- ob366-ai4er
- PhD related
- rp587
- School of Technology
- Speech Seminars
- Trust & Technology Initiative - interesting events
- yk373's list
- yk449
- Zoom
Note: Ex-directory lists are not shown.
![[Talks.cam]](/static/images/talkslogosmall.gif)


Tuesday 08 February 2022, 13:15-14:15