Яндекс Метрика
Языковая модель

TCAN (WT2)

Nanjing University,Ant Group
Языковое моделирование

Архитектура TCAN предлагает инновационный подход к моделированию последовательностей, заменяя привычные рекуррентные сети. Сочетая сверточные слои и механизмы внимания, эта ИИ-модель демонстрирует впечатляющую эффективность в задачах обработки естественного языка.

With the development of feed-forward models, the default model for sequence modeling has gradually evolved to replace recurrent networks. Many powerful feed-forward models based on convolutional networks and attention mechanism were proposed and show more potential to handle sequence modeling tasks. We wonder that is there an architecture that can not only achieve an approximate substitution of recurrent network, but also absorb the advantages of feed-forward models. So we propose an exploratory architecture referred to Temporal Convolutional Attention-based Network (TCAN) which combines temporal convolutional network and attention mechanism. TCAN includes two parts, one is Temporal Attention (TA) which captures relevant features inside the sequence, the other is Enhanced Residual (ER) which extracts shallow layer's important information and transfers to deep layers. We improve the state-of-the-art results of bpc/perplexity to 30.28 on word-level PTB, 1.092 on character-level PTB, and 9.20 on WikiText-2.

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