Яндекс Метрика
Языковая модель

LSTM (WT103)

Facebook AI Research
Языковое моделирование

Продвинутая вариация LSTM, обученная на масштабном датасете WikiText-103 для решения сложных задач лингвистического анализа. Благодаря эффективному доступу к истории активаций, эта AI-модель демонстрирует превосходные результаты в глубоком обучении.

We propose an extension to neural network language models to adapt their prediction to the recent history. Our model is a simplified version of memory augmented networks, which stores past hidden activations as memory and accesses them through a dot product with the current hidden activation. This mechanism is very efficient and scales to very large memory sizes. We also draw a link between the use of external memory in neural network and cache models used with count based language models. We demonstrate on several language model datasets that our approach performs significantly better than recent memory augmented networks.

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