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Main Authors: Liu, Yachuan, Wei, Xiaochun, Shi, Lin, Li, Xinnuo, Zhang, Bohan, Dhillon, Paramveer, Mei, Qiaozhu
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.19533
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author Liu, Yachuan
Wei, Xiaochun
Shi, Lin
Li, Xinnuo
Zhang, Bohan
Dhillon, Paramveer
Mei, Qiaozhu
author_facet Liu, Yachuan
Wei, Xiaochun
Shi, Lin
Li, Xinnuo
Zhang, Bohan
Dhillon, Paramveer
Mei, Qiaozhu
contents Large language models (LLMs) face significant challenges in ex-ante reasoning, where analysis, inference, or predictions must be made without access to information from future events. Even with explicit prompts enforcing temporal cutoffs, LLMs often generate outputs influenced by internalized knowledge of events beyond the specified cutoff. This paper introduces a novel task and benchmark designed to evaluate the ability of LLMs to reason while adhering to such temporal constraints. The benchmark includes a variety of tasks: stock prediction, Wikipedia event prediction, scientific publication prediction, and Question Answering (QA), designed to assess factual knowledge under temporal cutoff constraints. We use leakage rate to quantify models' reliance on future information beyond cutoff timestamps. Experimental results reveal that LLMs struggle to consistently adhere to temporal cutoffs across common prompting strategies and tasks, demonstrating persistent challenges in ex-ante reasoning. This benchmark provides a potential evaluation framework to advance the development of LLMs' temporal reasoning ability for time-sensitive applications.
format Preprint
id arxiv_https___arxiv_org_abs_2505_19533
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ExAnte: A Benchmark for Ex-Ante Inference in Large Language Models
Liu, Yachuan
Wei, Xiaochun
Shi, Lin
Li, Xinnuo
Zhang, Bohan
Dhillon, Paramveer
Mei, Qiaozhu
Machine Learning
Large language models (LLMs) face significant challenges in ex-ante reasoning, where analysis, inference, or predictions must be made without access to information from future events. Even with explicit prompts enforcing temporal cutoffs, LLMs often generate outputs influenced by internalized knowledge of events beyond the specified cutoff. This paper introduces a novel task and benchmark designed to evaluate the ability of LLMs to reason while adhering to such temporal constraints. The benchmark includes a variety of tasks: stock prediction, Wikipedia event prediction, scientific publication prediction, and Question Answering (QA), designed to assess factual knowledge under temporal cutoff constraints. We use leakage rate to quantify models' reliance on future information beyond cutoff timestamps. Experimental results reveal that LLMs struggle to consistently adhere to temporal cutoffs across common prompting strategies and tasks, demonstrating persistent challenges in ex-ante reasoning. This benchmark provides a potential evaluation framework to advance the development of LLMs' temporal reasoning ability for time-sensitive applications.
title ExAnte: A Benchmark for Ex-Ante Inference in Large Language Models
topic Machine Learning
url https://arxiv.org/abs/2505.19533