Nutri-bullets: Summarizing health studies by composing segments
Proceedings of the AAAI Conference on Artificial Intelligence, 2021•ojs.aaai.org
We introduce Nutri-bullets, a multi-document summarization task for health and nutrition.
First, we present two datasets of food and health summaries from multiple scientific studies.
Furthermore, we propose a novel extract-compose model to solve the problem in the regime
of limited parallel data. We explicitly select key spans from several abstracts using a policy
network, followed by composing the selected spans to present a summary via a task specific
language model. Compared to state-of-the-art methods, our approach leads to more faithful …
First, we present two datasets of food and health summaries from multiple scientific studies.
Furthermore, we propose a novel extract-compose model to solve the problem in the regime
of limited parallel data. We explicitly select key spans from several abstracts using a policy
network, followed by composing the selected spans to present a summary via a task specific
language model. Compared to state-of-the-art methods, our approach leads to more faithful …
Abstract
We introduce Nutri-bullets, a multi-document summarization task for health and nutrition. First, we present two datasets of food and health summaries from multiple scientific studies. Furthermore, we propose a novel extract-compose model to solve the problem in the regime of limited parallel data. We explicitly select key spans from several abstracts using a policy network, followed by composing the selected spans to present a summary via a task specific language model. Compared to state-of-the-art methods, our approach leads to more faithful, relevant and diverse summarization--properties imperative to this application. For instance, on the BreastCancer dataset our approach gets a more than 50% improvement on relevance and faithfulness.
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