Salient Span Masking (SSM) has shown itself to be an effective strategy to improve closed-book question answering performance. SSM extends general masked language model pretraining by creating additional unsupervised training sentences that mask a single entity or date span, thus oversampling factual information. Despite the success of this paradigm, the span types and sampling strategies are relatively arbitrary and not widely studied for other tasks. Thus, we investigate SSM from the perspective of temporal tasks, where learning a good representation of various temporal expressions is important. To that end, we introduce Temporal Span Masking (TSM) intermediate training. First, we find that SSM alone improves the downstream performance on three temporal tasks by an avg. +5.8 points. Further, we are able to achieve additional improvements (avg. +0.29 points) by adding the TSM task. These comprise the new best reported results on the targeted tasks. Our analysis suggests that the effectiveness of SSM stems from the sentences chosen in the training data rather than the mask choice: sentences with entities frequently also contain temporal expressions. Nonetheless, the additional targeted spans of TSM can still improve performance, especially in a zero-shot context.
翻译:显著跨度蒙版(SSM)已经证明是提高闭卷问答性能的有效策略。SSM通过创建额外的无监督训练句子,掩盖单个实体或日期跨度,从而过采样事实信息,扩展了通用掩码语言模型预训练。尽管这种范例非常成功,但跨度类型和采样策略相对任意,没有被广泛研究用于其他任务。因此,我们从时间任务的角度研究SSM,其中学习各种时间表达的良好表示非常重要。为此,我们引入了中间训练任务的“时间跨度掩蔽”(TSM)。首先,我们发现单独使用SSM时,平均可以提高三个时间任务的下游性能5.8分。此外,我们通过添加TSM任务,可以实现进一步改进(平均0.29分),这包括所针对任务的新最佳报告结果。我们的分析表明,SSM的有效性源于训练数据中选择的句子而不是蒙版的选择:包含实体的句子通常也包含时间表达式。尽管如此,TSM的其他目标跨度仍然可以提高性能,特别是在零-shot情况下。