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Main Authors: Gill, Alexander, Ravichander, Abhilasha, Marasović, Ana
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.22830
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author Gill, Alexander
Ravichander, Abhilasha
Marasović, Ana
author_facet Gill, Alexander
Ravichander, Abhilasha
Marasović, Ana
contents Large language models (LLMs) are increasingly used for data generation. However, creating evaluation benchmarks raises the bar for this emerging paradigm. Benchmarks must target specific phenomena, penalize exploiting shortcuts, and be challenging. Through two case studies, we investigate whether LLMs can meet these demands by generating reasoning over-text benchmarks and comparing them to those created through careful crowdsourcing. Specifically, we evaluate both the validity and difficulty of LLM-generated versions of two high-quality reading comprehension datasets: CondaQA, which evaluates reasoning about negation, and DROP, which targets reasoning about quantities. We find that prompting LLMs can produce variants of these datasets that are often valid according to the annotation guidelines, at a fraction of the cost of the original crowdsourcing effort. However, we show that they are less challenging for LLMs than their human-authored counterparts. This finding sheds light on what may have been lost by generating evaluation data with LLMs, and calls for critically reassessing the immediate use of this increasingly prevalent approach to benchmark creation.
format Preprint
id arxiv_https___arxiv_org_abs_2505_22830
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle What Has Been Lost with Synthetic Evaluation?
Gill, Alexander
Ravichander, Abhilasha
Marasović, Ana
Computation and Language
Artificial Intelligence
Large language models (LLMs) are increasingly used for data generation. However, creating evaluation benchmarks raises the bar for this emerging paradigm. Benchmarks must target specific phenomena, penalize exploiting shortcuts, and be challenging. Through two case studies, we investigate whether LLMs can meet these demands by generating reasoning over-text benchmarks and comparing them to those created through careful crowdsourcing. Specifically, we evaluate both the validity and difficulty of LLM-generated versions of two high-quality reading comprehension datasets: CondaQA, which evaluates reasoning about negation, and DROP, which targets reasoning about quantities. We find that prompting LLMs can produce variants of these datasets that are often valid according to the annotation guidelines, at a fraction of the cost of the original crowdsourcing effort. However, we show that they are less challenging for LLMs than their human-authored counterparts. This finding sheds light on what may have been lost by generating evaluation data with LLMs, and calls for critically reassessing the immediate use of this increasingly prevalent approach to benchmark creation.
title What Has Been Lost with Synthetic Evaluation?
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2505.22830