Model-Free Cluster Analysis of Physical Property Data using Information Maximizing Self-Argument Training
classification
⚛️ physics.comp-ph
keywords
dataimsatinformationsemi-supervisedaccelerateadditionalalgorithmanalysis
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We present the semi-supervised IMSAT, a versatile classification method that works without labeled data and can be tuned by little additional information. We demonstrate how semi-supervised IMSAT can classify XRD patterns and thermoelectric hysteresis curves in the same way even though their shape and dimensions are different. Our algorithm will accelerate automation of big data collection and open a way to study artificial intelligent driven material development.
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