2021
DOI: 10.48550/arxiv.2106.14613
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An evaluation of template and ML-based generation of user-readable text from a knowledge graph

Zola Mahlaza,
C. Maria Keet,
Jarryd Dunn
et al.

Abstract: Typical user-friendly renderings of knowledge graphs are visualisations and natural language text. Within the latter HCI solution approach, data-driven natural language generation systems receive increased attention, but they are often outperformed by template-based systems due to suffering from errors such as content dropping, hallucination, or repetition. It is unknown which of those errors are associated significantly with low quality judgements by humans who the text is aimed for, which hampers addressing … Show more

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