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New methods for metastimuli: architecture, embeddings, and neural network optimization

2021-02-14 07:28:40
Rico A.R. Picone, Dane Webb, Finbarr Obierefu, Jotham Lentz

Abstract

Six significant new methodological developments of the previously-presented "metastimuli architecture" for human learning through machine learning of spatially correlated structural position within a user's personal information management system (PIMS), providing the basis for haptic metastimuli, are presented. These include architectural innovation, recurrent (RNN) artificial neural network (ANN) application, a variety of atom embedding techniques (including a novel technique we call "nabla" embedding inspired by linguistics), ANN hyper-parameter (one that affects the network but is not trained, e.g. the learning rate) optimization, and meta-parameter (one that determines the system performance but is not trained and not a hyper-parameter, e.g. the atom embedding technique) optimization for exploring the large design space. A technique for using the system for automatic atom categorization in a user's PIMS is outlined. ANN training and hyper- and meta-parameter optimization results are presented and discussed in service of methodological recommendations.

Abstract (translated)

URL

https://arxiv.org/abs/2102.07090

PDF

https://arxiv.org/pdf/2102.07090.pdf


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