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Learning to Plan and Generate Text with Citations

About

The increasing demand for the deployment of LLMs in information-seeking scenarios has spurred efforts in creating verifiable systems, which generate responses to queries along with supporting evidence. In this paper, we explore the attribution capabilities of plan-based models which have been recently shown to improve the faithfulness, grounding, and controllability of generated text. We conceptualize plans as a sequence of questions which serve as blueprints of the generated content and its organization. We propose two attribution models that utilize different variants of blueprints, an abstractive model where questions are generated from scratch, and an extractive model where questions are copied from the input. Experiments on long-form question-answering show that planning consistently improves attribution quality. Moreover, the citations generated by blueprint models are more accurate compared to those obtained from LLM-based pipelines lacking a planning component.

Constanza Fierro, Reinald Kim Amplayo, Fantine Huot, Nicola De Cao, Joshua Maynez, Shashi Narayan, Mirella Lapata• 2024

Related benchmarks

TaskDatasetResultRank
Long-form Question Answering with CitationsASQA--
37
Citation-based Question AnsweringALCE-ASQA v1 (test)
EM Recall33.8
14
Citation-aware Question AnsweringALCE ASQA
EM Recall33.8
13
Citation-based Question AnsweringALCE-ELI5 v1 (test)
EM Rec.5.2
13
Citation-aware Question AnsweringALCE ELI5
EM Recall5.2
12
List-based Question Answering with CitationsQAMPARI
Correctness12.9
8
Long-form Question Answering with CitationsELI5
Correctness0.052
8
SummarizationAquaMuSe
ROUGE-L72.98
6
Attributed Question AnsweringASQA ALCE (dev)
FSupp88.58
3
Attributed Question AnsweringELI5 ALCE (dev)
FSupp87.42
3
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