Robust Design Discovery and Exploration in Bayesian Optimization

Subscribers:
348,000
Published on ● Video Link: https://www.youtube.com/watch?v=iEUnh-3qGQw



Duration: 52:55
1,755 views
27


A Google TechTalk, presented by Ilija Bogunovic, 2022/10/04
BayesOpt Speaker Series - ABSTRACT: Whether in biological design, causal discovery, material production, or physical sciences, one often faces decisions regarding which new data to collect or which experiments to perform. There is thus a pressing need for adaptive algorithms and sampling strategies that make intelligent decisions about data collection processes and allow for data-efficient and robust learning. In this talk, I will discuss some of the core questions related to these requirements. For instance, how can we use data-driven methods to quantify uncertainty in our optimization objective and efficiently learn and discover robust designs? How can we design learning-based decision-making methods that are robust against input perturbations, data shifts, and adversarial attacks? How can we efficiently search for policies that are robust to various forms of uncertainties? In the context of previous questions, I will discuss the key statistical and robustness challenges through the lens of Bayesian optimization. I will show the limitations of existing Bayesian optimization and bandit approaches in failing to simultaneously achieve robustness and data efficiency and discuss algorithms that effectively overcome these challenges. These algorithms are robust, data-efficient, and attain rigorous theoretical guarantees. I will also demonstrate their robust performance in several applications by using real-world data sets and popular benchmarks.

Ilija Bogunovic is an Assistant Professor in the Electrical Engineering Department at the University College London. Before that, he was a postdoctoral researcher in the Machine Learning Institute and Learning and Adaptive Systems group at ETH Zurich. He received a Ph.D. in Computer and Communication Sciences from EPFL and an MSc in Computer Science from ETH Zurich.

His research interests are centered around data-efficient interactive machine learning, sequential decision making under uncertainty, reliability and robustness considerations in data-driven algorithms, experimental design and active learning methods, and are motivated by a range of emerging real-world applications. He co-founded a recurring ICML workshop on “Adaptive Experimental Design and Active Learning in the Real World”.




Other Videos By Google TechTalks


2022-10-27Geoff Renaud | CMO & Co-founder of Invisible North & Renaud Partners | web3 talks | June 2nd 2022
2022-10-27Chris Nunes, Scott Clark & BC Biermann | IMMUSE Founders | web3 talks | June 9th 2022 | Raphael Hyde
2022-10-27Alex Connolly | CTO and Co-founder at Immutable | web3 talks | July 26th 2022 | MC: Raphael Hyde
2022-10-27Graham Friedman | Sir Director at Republic Crypto | web3 talks | Aug 4th 2022 | MC: Raphael Hyde
2022-10-27Chris Tramount | CEO and Co-Founder of Scare.City | web3 talks | Aug 25th 2022 | MC: Raphael Hyde
2022-10-25Daniel Johnsen | Chief Creative Officer at Playchain | web3 talks | Sep 1st 2022 | MC: Raphael Hyde
2022-10-25Brandon Tory | CEO & Co-Founder of Formless | web3 talks | Sep 8th 2022 | MC: Raphael Hyde
2022-10-25Raullen Chai | CEO & Co-founder of IoTex | web3 talks | Oct 6th 2022 | Hosted by Raphael Hyde
2022-10-25Peter Schiff | CEO & Chief global strategist of Euro Pacific Cap Inc | web3 talks | Sep 29th 2022
2022-10-25Raoul Pal | CEO of RealVision, GMI, etc. | web3 talks | Sep 29th 2022 | Hosted by Raphael Hyde
2022-10-20Robust Design Discovery and Exploration in Bayesian Optimization
2022-09-20Master Equation for Discrete-Time Stackelberg Mean Field Games
2022-09-12Graph Attention Retrospective
2022-09-09Bayesian Optimization in the Wild: Risk-Averse Decisions and Budget Constraints
2022-07-16Fast Linear Algebra for Distance Matrices
2022-07-12Deep Learning 2.0: How Bayesian Optimization May Power the Next Generation of DL by Frank Hutter
2022-06-13Expressing High Performance Irregular Computations on the GPU
2022-05-24Building Developer Assistants that Think Fast and Slow
2022-05-052022 Blockly Developers Summit: Bad Blocks
2022-05-052022 Blockly Developers Summit: Debugging in Blockly
2022-05-052022 Blockly Developers Summit: Year in Review and Roadmap