Яндекс Метрика
Языковая модель

VD-LSTM+REAL Large

Salesforce Research,Stanford University
Языковое моделирование

Модель VD-LSTM+REAL Large от Salesforce и Стэнфорда предлагает новый взгляд на обучение языковых моделей. Этот ИИ уходит от стандартной классификации слов, повышая эффективность предсказания текстовых последовательностей и качество понимания языка.

Recurrent neural networks have been very successful at predicting sequences of words in tasks such as language modeling. However, all such models are based on the conventional classification framework, where the model is trained against one-hot targets, and each word is represented both as an input and as an output in isolation. This causes inefficiencies in learning both in terms of utilizing all of the information and in terms of the number of parameters needed to train. We introduce a novel theoretical framework that facilitates better learning in language modeling, and show that our framework leads to tying together the input embedding and the output projection matrices, greatly reducing the number of trainable variables. Our framework leads to state of the art performance on the Penn Treebank with a variety of network models.

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