Few-Shot Text Classification with Pre-Trained Word Embeddings and a Human in the Loop

5 Apr 2018 Katherine Bailey Sunny Chopra

Most of the literature around text classification treats it as a supervised learning problem: given a corpus of labeled documents, train a classifier such that it can accurately predict the classes of unseen documents. In industry, however, it is not uncommon for a business to have entire corpora of documents where few or none have been classified, or where existing classifications have become meaningless... (read more)

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