Word2Fun: Modelling Words as Functions for Diachronic Word Representation
–Neural Information Processing Systems
Word meaning may change over time as a reflection of changes in human society. Therefore, modeling time in word representation is necessary for some diachronic tasks. Most existing diachronic word representation approaches train the embeddings separately for each pre-grouped time-stamped corpus and align these embeddings, e.g., by orthogonal projections, vector initialization, temporal referencing, and compass. However, not only does word meaning change in a short time, word meaning may also be subject to evolution over long timespans, thus resulting in a unified continuous process. A recent approach called DiffTime' models semantic evolution as functions parameterized by multiple-layer nonlinear neural networks over time.
Neural Information Processing Systems
Oct-9-2024, 15:14:49 GMT
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