LaBSE-Malach-Multilabel

A multilabel text classification model fine-tuned on a the Visual History Archive in 6 languages. Input text segments consisted of ~350 words on average.

Given an input string, the model predicts probablites for 2800 subject keyword IDs from the VHA ontology.

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