Using local knowledge graph construction to scale seq2seq models to multi-document inputs

A Fan, C Gardent, C Braud, A Bordes - arXiv preprint arXiv:1910.08435, 2019 - arxiv.org
A Fan, C Gardent, C Braud, A Bordes
arXiv preprint arXiv:1910.08435, 2019arxiv.org
Query-based open-domain NLP tasks require information synthesis from long and diverse
web results. Current approaches extractively select portions of web text as input to
Sequence-to-Sequence models using methods such as TF-IDF ranking. We propose
constructing a local graph structured knowledge base for each query, which compresses the
web search information and reduces redundancy. We show that by linearizing the graph into
a structured input sequence, models can encode the graph representations within a …
Query-based open-domain NLP tasks require information synthesis from long and diverse web results. Current approaches extractively select portions of web text as input to Sequence-to-Sequence models using methods such as TF-IDF ranking. We propose constructing a local graph structured knowledge base for each query, which compresses the web search information and reduces redundancy. We show that by linearizing the graph into a structured input sequence, models can encode the graph representations within a standard Sequence-to-Sequence setting. For two generative tasks with very long text input, long-form question answering and multi-document summarization, feeding graph representations as input can achieve better performance than using retrieved text portions.
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