Recent advances in neural architectures, such as the Transformer, coupled with the emergence of large-scale pre-trained models such as BERT, have revolutionized the field of Natural Language Processing (NLP), pushing the state-of-the-art for a number of NLP tasks. A rich family of variations of these models has been proposed, such as RoBERTa, ALBERT, and XLNet, but fundamentally, they all remain limited in their ability to model certain kinds of information, and they cannot cope with certain information sources, which was easy for pre-existing models. Thus, here we aim to shed some light on some important theoretical limitations of pre-trained BERT-style models that are inherent in the general Transformer architecture. First, we demonstrate in practice on two general types of tasks -- segmentation and segment labeling -- and four datasets that these limitations are indeed harmful and that addressing them, even in some very simple and naive ways, can yield sizable improvements over vanilla RoBERTa and XLNet. Then, we offer a more general discussion on desiderata for future additions to the Transformer architecture that would increase its expressiveness, which we hope could help in the design of the next generation of deep NLP architectures.
翻译:神经结构(如变异器)的最近进步,加上诸如BERT等大规模预先培训的模型的出现,使得自然语言处理领域发生了革命性的变化,推动了一些NLP任务。提出了这些模型的丰富多样性,如RoBERTA、ALBERTER和XLNet,但从根本上说,这些模型在建模某些类型的信息方面的能力仍然有限,它们都无法应付某些信息源,而对于先前存在的模型来说,这些源源是容易的。因此,我们在这里要说明一下一般变异器结构所固有的预先培训的BERT型模型的一些重要理论局限性。首先,我们在实践中展示了两种一般性任务类型 -- -- 分解和分段标签 -- 和四个数据集,这些限制确实有害,而解决这些问题,即使有些简单和天真,也能带来比Vanilla RoBERTA和XLNet更简单的改进。然后,我们提出一个更一般性的讨论,说明未来对NPLNet结构的增殖,这将增加其深度设计结构的深度设计。