MorphTE: Injecting Morphology in Tensorized Embeddings
–Neural Information Processing Systems
In the era of deep learning, word embeddings are essential when dealing with text tasks. However, storing and accessing these embeddings requires a large amount of space. This is not conducive to the deployment of these models on resource-limited devices. Combining the powerful compression capability of tensor products, we propose a word embedding compression method with morphological augmentation, Morphologically-enhanced Tensorized Embeddings (MorphTE). A word consists of one or more morphemes, the smallest units that bear meaning or have a grammatical function.
Neural Information Processing Systems
Jan-19-2025, 00:33:55 GMT
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