Learning a Concept Hierarchy from Multi-labeled Documents Viet-An Nguyen 1, Jordan Boyd-Graber
–Neural Information Processing Systems
While topic models can discover patterns of word usage in large corpora, it is difficult to meld this unsupervised structure with noisy, human-provided labels, especially when the label space is large.
Neural Information Processing Systems
Mar-13-2024, 08:47:04 GMT
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