SEMQA: Semi-Extractive Multi-Source Question Answering.
CoRR(2023)
摘要
Recently proposed long-form question answering (QA) systems, supported by
large language models (LLMs), have shown promising capabilities. Yet,
attributing and verifying their generated abstractive answers can be difficult,
and automatically evaluating their accuracy remains an ongoing challenge.
In this work, we introduce a new QA task for answering multi-answer questions
by summarizing multiple diverse sources in a semi-extractive fashion.
Specifically, Semi-extractive Multi-source QA (SEMQA) requires models to output
a comprehensive answer, while mixing factual quoted spans -- copied verbatim
from given input sources -- and non-factual free-text connectors that glue
these spans together into a single cohesive passage. This setting bridges the
gap between the outputs of well-grounded but constrained extractive QA systems
and more fluent but harder to attribute fully abstractive answers.
Particularly, it enables a new mode for language models that leverages their
advanced language generation capabilities, while also producing fine in-line
attributions by-design that are easy to verify, interpret, and evaluate.
To study this task, we create the first dataset of this kind, QuoteSum, with
human-written semi-extractive answers to natural and generated questions, and
define text-based evaluation metrics. Experimenting with several LLMs in
various settings, we find this task to be surprisingly challenging,
demonstrating the importance of QuoteSum for developing and studying such
consolidation capabilities.
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关键词
semi-extractive,multi-source
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