Systematic Search for Optimal Hyper-parameters of the Tsetlin Machine on MNIST Dataset

2023 INTERNATIONAL SYMPOSIUM ON THE TSETLIN MACHINE, ISTM(2023)

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摘要
Modern Machine Learning (ML) models have a significant number of hyper-parameters that need adjusting to leverage performance and energy efficiency for a given model configuration during training. This becomes a considerable design challenge with increasing complexity requiring larger models. This paper explores the Tsetlin Machine (TM) - a new logic-based ML approach with only four hyper-parameters regardless of the problem space. Two of these hyper-parameters influence the TM architecture while the remaining two impact the learning efficacy. This work focuses on the systematic search for optimal hyper-parameters for the TM and aims to understand how hyper-parameter values affect performance and prediction accuracy using MNIST dataset as a case study.
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关键词
Machine learning,logic-based artificial intelligence,learning automaton,Tsetlin Machine,hyperparameters,optimization
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