An algorithm for Bayesian optimization for categorical variables informed by physical intuition with

Published on ● Video Link: https://www.youtube.com/watch?v=Tk8Ye7Dv0jQ



Duration: 58:21
540 views
16


For slides and more information on the paper, visit https://ai.science/e/gryffin-an-algorithm-for-bayesian-optimization-for-categorical-variables-informed-by-physical-intuition-with-applications-to-chemistry--aWczEkSySHhkHI19ApMz

Speaker: Florian Hase; Host: Shahrzad Hosseini

Motivation:
Designing functional molecules and advanced materials requires complex interdependent design choices: tuning continuous process parameters such as temperatures or flow rates, while simultaneously selecting categorical variables like catalysts or solvents. To date, the development of data-driven experiment planning strategies for autonomous experimentation has largely focused on continuous process parameters despite the urge to devise efficient strategies for the selection of categorical variables to substantially accelerate scientific discovery. We introduce Gryffin, as a general purpose optimization framework for the autonomous selection of categorical variables driven by expert knowledge. Gryffin augments Bayesian optimization with kernel density estimation using smooth approximations to categorical distributions. Leveraging domain knowledge from physicochemical descriptors to characterize categorical options, Gryffin can significantly accelerate the search for promising molecules and materials. Gryffin can further highlight relevant correlations between the provided descriptors to inspire physical insights and foster scientific intuition. In addition to comprehensive benchmarks, we demonstrate the capabilities and performance of Gryffin on three examples in materials science and chemistry: (i) the discovery of non-fullerene acceptors for organic solar cells, (ii) the design of hybrid organic-inorganic perovskites for light-harvesting, and (iii) the identification of ligands and process parameters for Suzuki-Miyaura reactions. Our observations suggest that Gryffin, in its simplest form without descriptors, constitutes a competitive categorical optimizer compared to state-of-the-art approaches. However, when leveraging domain knowledge provided via descriptors, Gryffin can optimize at considerable higher rates and refine this domain knowledge to spark scientific understanding.




Other Videos By LLMs Explained - Aggregate Intellect - AI.SCIENCE


2021-01-06Explaining image classifiers by removing input features using generative models | AISC
2020-12-24An Introduction to the Quantum Tech Ecosystem | AISC
2020-12-23Explaining by Removing: A Unified Framework for Model Explanation | AISC
2020-12-18The AI Economist: Improving Equality and Productivity with AI-Driven Tax Policies
2020-12-18Dirichlet Pruning for Neural Network Compression | AISC
2020-12-17Breaking Speed Limits with Simultaneous Ultra-Fast MRI Reconstruction and Tissue Segmentation | AISC
2020-12-16How to Track Objects in Videos with Self-supervised Techniques | AISC
2020-12-15Practical Transformers - Natural Language Processing | Learning Package Overview
2020-12-11AI for a Sustainable Future: Think Globally, Act Locally! | AISC
2020-12-11Steve Brunton: Machine Learning for Fluid Dynamics
2020-12-10An algorithm for Bayesian optimization for categorical variables informed by physical intuition with
2020-12-09Artificial Intelligence, Ethics and Bias | AISC
2020-12-08Agora: Working Remotely with Ease
2020-12-08GNN-TOX: Graph Neural Nets to Make Drug Discovery Cheaper
2020-12-08Logeo: Automatically Transform 2D Designs to 3D
2020-12-08PatentNet: Search for the Next Best Invention with Confidence
2020-12-08AlphaFold 2, Is Protein Folding Solved? | AISC
2020-12-04Computer vision to deeply phenotype human diseases across physiological, tissue and molecular scales
2020-12-04Serina Chang: Understanding the spread of COVID-19 using Social Network Models
2020-12-03The Importance of Strategy in AI Product Management | AISC
2020-12-02What is Wrong with Explainable AI? | AISC