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Autori principali: Ahmed, Imtiaz, Bukkapatnam, Satish, Botcha, Bhaskar, Ding, Yu
Natura: Preprint
Pubblicazione: 2021
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Accesso online:https://arxiv.org/abs/2112.00600
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author Ahmed, Imtiaz
Bukkapatnam, Satish
Botcha, Bhaskar
Ding, Yu
author_facet Ahmed, Imtiaz
Bukkapatnam, Satish
Botcha, Bhaskar
Ding, Yu
contents An autonomous experimentation platform in manufacturing is supposedly capable of conducting a sequential search for finding suitable manufacturing conditions by itself or even for discovering new materials with minimal human intervention. The core of the intelligent control of such platforms is a policy to decide where to conduct the next experiment based on what has been done thus far. Such policy inevitably trades off between exploitation and exploration. Currently, the prevailing approach is to use various acquisition functions in the Bayesian optimization framework. We discuss whether it is beneficial to trade off exploitation versus exploration by measuring the element and degree of surprise associated with the immediate past observation. We devise a surprise-reacting policy using two existing surprise metrics, known as the Shannon surprise and Bayesian surprise. Our analysis shows that the surprise-reacting policy appears to be better suited for quickly characterizing the overall landscape of a response surface under resource constraints. We do not claim that we have a fully autonomous experimentation system but believe that the surprise-reacting capability benefits the automation of sequential decisions in autonomous experimentation.
format Preprint
id arxiv_https___arxiv_org_abs_2112_00600
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Towards Futuristic Autonomous Experimentation--A Surprise-Reacting Sequential Experiment Policy
Ahmed, Imtiaz
Bukkapatnam, Satish
Botcha, Bhaskar
Ding, Yu
Machine Learning
An autonomous experimentation platform in manufacturing is supposedly capable of conducting a sequential search for finding suitable manufacturing conditions by itself or even for discovering new materials with minimal human intervention. The core of the intelligent control of such platforms is a policy to decide where to conduct the next experiment based on what has been done thus far. Such policy inevitably trades off between exploitation and exploration. Currently, the prevailing approach is to use various acquisition functions in the Bayesian optimization framework. We discuss whether it is beneficial to trade off exploitation versus exploration by measuring the element and degree of surprise associated with the immediate past observation. We devise a surprise-reacting policy using two existing surprise metrics, known as the Shannon surprise and Bayesian surprise. Our analysis shows that the surprise-reacting policy appears to be better suited for quickly characterizing the overall landscape of a response surface under resource constraints. We do not claim that we have a fully autonomous experimentation system but believe that the surprise-reacting capability benefits the automation of sequential decisions in autonomous experimentation.
title Towards Futuristic Autonomous Experimentation--A Surprise-Reacting Sequential Experiment Policy
topic Machine Learning
url https://arxiv.org/abs/2112.00600