MACHINE LEARNING MODEL TRAINING

A method includes receiving spectral data of a substrate and metrology data corresponding to the spectral data of the substrate. The method further includes determining a plurality of feature model configurations for each of a plurality of feature models, each of the plurality of feature model confi...

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Hauptverfasser: Nottrott, Anders Andelman, Jang, MiHyun, Hong, Jeong Jin, Li, Thomas Ho Fai, Cheon, Sejune, Kim, Sang Hong, Zhu, Zhaozhao
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creator Nottrott, Anders Andelman
Jang, MiHyun
Hong, Jeong Jin
Li, Thomas Ho Fai
Cheon, Sejune
Kim, Sang Hong
Zhu, Zhaozhao
description A method includes receiving spectral data of a substrate and metrology data corresponding to the spectral data of the substrate. The method further includes determining a plurality of feature model configurations for each of a plurality of feature models, each of the plurality of feature model configurations including one or more feature model conditions. The method further includes determining a plurality of feature model combinations, where each feature model combination of the plurality of feature model combinations includes a subset of the plurality of feature model configurations. The method further includes generating a plurality of input datasets, where each input dataset of the plurality of input datasets is generated based on application of the spectral data to a respective feature model combination of the plurality of feature model combinations. The method further includes training a plurality of machine learning models, where each machine learning model is trained to generate an output using an input dataset of the plurality of input datasets and the metrology data. The method further includes selecting a trained machine learning model from the plurality of trained machine learning models satisfying one or more selection criteria.
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subjects CALCULATING
COMPUTING
COUNTING
IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
INVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIRCHEMICAL OR PHYSICAL PROPERTIES
MEASURING
PHYSICS
TESTING
title MACHINE LEARNING MODEL TRAINING
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