Implementation for word2vec using skip-gram architecture and negative sampling.
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Updated
Dec 7, 2021 - Jupyter Notebook
Implementation for word2vec using skip-gram architecture and negative sampling.
Extra tools for working with word embeddings, such as those in Embeddings.jl. However, the compatibility is currently limited.
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Multi-Purpose support library developed during my PhD. It's always Work-In-Progress.
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