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ERNIE-NLI: Analyzing the Impact of Domain-Specific External Knowledge on Enhanced Representations for NLI

机译:ERNIE-NLI:分析特定领域外部知识对NLI增强表示的影响

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We examine the effect of domain-specific external knowledge variations on deep large scale language model performance. Recent work in enhancing BERT with external knowledge has been very popular, resulting in models such as ERNIE (Zhang et al.. 2019a). Using the ERNIE architecture, we provide a detailed analysis on the types of knowledge that result in a performance increase on the Natural Language Inference (NLI) task, specifically on the Multi-Genre Natural Language Inference Corpus (MNLI). While ERNIE uses general TransE embeddings, we instead train domain-specific knowledge embeddings and insert this knowledge via an information fusion layer in the ERNIE architecture, allowing us to directly control and analyze knowledge input. Using several different knowledge training objectives, sources of knowledge, and knowledge ablations, we find a strong correlation between knowledge and classification labels within the same polarity, illustrating that knowledge polarity is an important feature in predicting entailment. We also perform classification change analysis across different knowledge variations to illustrate the importance of selecting appropriate knowledge input regarding content and polarity, and show representative examples of these changes.
机译:我们研究了特定领域的外部知识变化对深层大规模语言模型性能的影响。最近,利用外部知识增强BERT的工作非常流行,产生了ERNIE等模型(Zhang等人,2019a)。使用ERNIE体系结构,我们详细分析了导致自然语言推理(NLI)任务性能提高的知识类型,特别是多体裁自然语言推理语料库(MNLI)。虽然ERNIE使用一般的TransE嵌入,但我们训练特定领域的知识嵌入,并通过ERNIE体系结构中的信息融合层插入这些知识,使我们能够直接控制和分析知识输入。通过使用几个不同的知识培训目标、知识来源和知识分解,我们发现在同一极性中,知识和分类标签之间存在很强的相关性,说明知识极性是预测蕴涵的一个重要特征。我们还对不同的知识变化进行分类变化分析,以说明选择有关内容和极性的适当知识输入的重要性,并展示这些变化的代表性示例。

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