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Semantic Code Classification for Automated Machine Learning

2022-01-25Code Available0· sign in to hype

Polina Guseva, Anastasia Drozdova, Natalia Denisenko, Daria Sapozhnikova, Ivan Pyaternev, Anna Scherbakova, Andrey Ustuzhanin

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Abstract

A range of applications for automatic machine learning need the generation process to be controllable. In this work, we propose a way to control the output via a sequence of simple actions, that are called semantic code classes. Finally, we present a semantic code classification task and discuss methods for solving this problem on the Natural Language to Machine Learning (NL2ML) dataset.

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