Яндекс Метрика
Языковая модель

GL-LWGC-AWD-MoS-LSTM + dynamic evaluation (PTB)

Ben-Gurion University
Языковое моделирование

Эта рекуррентная нейросеть эффективно решает проблему переобучения RNN с помощью послойного градиентного обучения. Благодаря динамической оценке, ИИ точнее улавливает структуру языка, демонстрируя отличные результаты на датасете PTB.

Recurrent Neural Networks (RNNs) achieve state-of-the-art results in many sequence-to-sequence modeling tasks. However, RNNs are difficult to train and tend to suffer from overfitting. Motivated by the Data Processing Inequality (DPI), we formulate the multi-layered network as a Markov chain, introducing a training method that comprises training the network gradually and using layer-wise gradient clipping. We found that applying our methods, combined with previously introduced regularization and optimization methods, resulted in improvements in state-of-the-art architectures operating in language modeling tasks.

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