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A New Sentence Ordering Method using BERT Pretrained Model

机译:一种新的句子排序方法使用BERT净化模型

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Building systems with capability of natural language understanding (NLU) has been one of the oldest areas of AI. An essential component of NLU is to detect logical succession of events contained in a text. The task of sentence ordering is proposed to learn succession of events with applications in AI tasks. The performance of previous works employing statistical methods is poor, while the neural networks-based approaches are in serious need of large corpora for model learning. In this paper, we propose a method for sentence ordering which does not need a training phase and consequently a large corpus for learning. To this end, we generate sentence embedding using BERT pre-trained model and measure sentence similarity using cosine similarity score. We suggest this score as an indicator of sequential events' level of coherence. We finally sort the sentences through brute-force search to maximize overall similarities of the sequenced sentences. Our proposed method outperformed other baselines on ROCStories, a corpus of 5-sentence human-made stories. The method is specifically more efficient than neural network-based methods when no huge corpus is available. Among other advantages of this method are its interpretability and needlessness to linguistic knowledge.
机译:建筑系统具有自然语言理解的能力(NLU)是AI最古老的地区之一。 NLU的一个基本组成部分是检测文本中包含的事件的逻辑连续。提出了句子排序的任务,以便在AI任务中学习具有应用程序的事件的继承。采用统计方法的先前作品的表现较差,而基于神经网络的方法是严重需要大公司进行模型学习。在本文中,我们提出了一种句子订购的方法,这不需要培训阶段,从而进行大型学习语料库。为此,我们使用BERT预先训练的模型生成句子嵌入,并使用余弦相似分数测量句子相似度。我们建议这个分数作为连续事件相干水平的指标。我们终于通过蛮力搜索对句子进行排序,以最大限度地提高测序句子的整体相似性。我们所提出的方法优于陶动因子的其他基线,这是5句人造故事的语料库。当没有可用的巨大的语料库时,该方法比基于神经网络的方法更有效。这种方法的其他优点是其对语言知识的可解释性和不必要性。

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