Яндекс Метрика
Языковая модель

LSTM(large)+Sememe+cell

Tsinghua University,Beijing University of Posts and Telecommunications,Huawei Noah's Ark Lab
Языковое моделирование

Продвинутая нейросеть архитектуры LSTM, усиленная семемами — минимальными единицами смысла человеческого языка. Интеграция семем в структуру RNN значительно повышает качество языкового моделирования и понимание контекста. Модель демонстрирует, как глубокое обучение может эффективнее работать с семантикой.

Sememes, the minimum semantic units of human languages, have been successfully utilized in various natural language processing applications. However, most existing studies exploit sememes in specific tasks and few efforts are made to utilize sememes more fundamentally. In this paper, we propose to incorporate sememes into recurrent neural networks (RNNs) to improve their sequence modeling ability, which is beneficial to all kinds of downstream tasks. We design three different sememe incorporation methods and employ them in typical RNNs including LSTM, GRU and their bidirectional variants. In evaluation, we use several benchmark datasets involving PTB and WikiText-2 for language modeling, SNLI for natural language inference and another two datasets for sentiment analysis and paraphrase detection. Experimental results show evident and consistent improvement of our sememe-incorporated models compared with vanilla RNNs, which proves the effectiveness of our sememe incorporation methods. Moreover, we find the sememe-incorporated models have higher robustness and outperform adversarial training in defending adversarial attack. All the code and data of this work can be obtained at this https URL.

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