Despite the successes of neural attention models for natural language generation tasks, the quadratic memory complexity of the self-attention module with respect to the input length hinders their applications in long text summarization. Instead of designing more efficient attention modules, we approach this problem by investigating if models with a restricted context can have competitive performance compared with the memory-efficient attention models that maintain a global context by treating the input as an entire sequence. Our model is applied to individual pages, which contain parts of inputs grouped by the principle of locality, during both encoding and decoding stages. We empirically investigated three kinds of localities in text summarization at different levels, ranging from sentences to documents. Our experimental results show that our model can have better performance compared with strong baseline models with efficient attention modules, and our analysis provides further insights of our locality-aware modeling strategy.
翻译:尽管自然语言生成任务的神经关注模式取得了成功,但投入长度方面的自我注意模块的二次记忆复杂性阻碍了其在长文本汇总中的应用。我们不是设计更有效的关注模块,而是通过调查有限背景下的模型是否与保持全球背景的记忆高效关注模式相比具有竞争性性能,通过将输入作为整个顺序处理,来解决这一问题。我们的模式适用于单个页面,其中含有按地点原则分类的部分投入,在编码和解码阶段都是如此。我们从经验上对从句子到文件等不同层次的文字汇总的三个地点进行了调查。我们的实验结果表明,与强有力的基线模型相比,我们的模式与高效关注模块可以有更好的业绩,我们的分析提供了我们对地方认知模型战略的进一步见解。