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An Unsupervised Joint System for Text Generation from Knowledge Graphs and Semantic Parsing

机译:知识图和语义解析的文本生成的无监督联合系统

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Knowledge graphs (KGs) can vary greatly from one domain to another. Therefore supervised approaches to both graph-to-text generation and text-to-graph knowledge extraction (semantic parsing) will always suffer from a shortage of domain-specific parallel graph-text data; at the same time, adapting a model trained on a different domain is often impossible due to little or no overlap in entities and relations. This situation calls for an approach that (1) does not need large amounts of annotated data and thus (2) does not need to rely on domain adaptation techniques to work well in different domains. To this end, we present the first approach to unsupervised text generation from KGs and show simultaneously how it can be used for unsupervised semantic parsing. We evaluate our approach on WebNLG v2.1 and a new benchmark leveraging scene graphs from Visual Genome. Our system outperforms strong baselines for both tex ←→ graph conversion tasks without any manual adaptation from one dataset to the other. In additional experiments, we investigate the impact of using different unsupervised objectives.
机译:知识图(KGS)可以从一个域到另一个域的大大变化。因此,对图形到文本生成和文本到图表知识提取(语义解析)的监督方法将始终遭受域特定的并行图形文本数据的短缺;与此同时,由于实体和关系中很少或根本没有重叠,调整在不同域上培训的模型通常是不可能的。这种情况调用了一种方法(1)不需要大量的注释数据,因此(2)不需要依赖于域适应技术在不同的域中运行良好。为此,我们介绍了从kgs的无监督文本生成的第一种方法,同时显示它如何用于无监督的语义解析。我们评估我们在WebnLG v2.1上的方法和来自视觉基因组的新基准。我们的系统优于TEX←→图表转换任务的强大基线,而无需从一个数据集到另一个数据集的任何手动调整。在额外的实验中,我们研究了使用不同无监督目标的影响。

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