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VIDEO DOI: https://doi.org/10.48448/wvqk-cq21

poster

ACL 2024

August 13, 2024

Bangkok, Thailand

FanOutQA: A Multi-Hop, Multi-Document Question Answering Benchmark for Large Language Models

keywords:

long horizon

long context

large language models

retrieval

question answering

benchmark

One type of question that is commonly found in day-to-day scenarios is "fan-out" questions, complex multi-hop, multi-document reasoning questions that require finding information about a large number of entities. However, there exist few resources to evaluate this type of question-answering capability among large language models. To evaluate complex reasoning in LLMs more fully, we present FanOutQA, a high-quality dataset of fan-out question-answer pairs and human-annotated decompositions with English Wikipedia as the knowledge base. We formulate three benchmark settings across our dataset and benchmark 7 LLMs, including GPT-4, LLaMA 2, Claude-2.1, and Mixtral-8x7B, finding that contemporary models still have room to improve reasoning over inter-document dependencies in a long context. We provide our dataset, along with open-source tools to run models to encourage evaluation.

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SlidesTranscript English (automatic)

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