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UnSeenTimeQA: Time-Sensitive Question-Answering Beyond LLMs' Memorization

3 July 2024
Md Nayem Uddin
Amir Saeidi
Divij Handa
Agastya Seth
Tran Cao Son
Eduardo Blanco
Steven Corman
Chitta Baral
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Abstract

This paper introduces UnSeenTimeQA, a novel time-sensitive question-answering (TSQA) benchmark that diverges from traditional TSQA benchmarks by avoiding factual and web-searchable queries. We present a series of time-sensitive event scenarios decoupled from real-world factual information. It requires large language models (LLMs) to engage in genuine temporal reasoning, disassociating from the knowledge acquired during the pre-training phase. Our evaluation of six open-source LLMs (ranging from 2B to 70B in size) and three closed-source LLMs reveal that the questions from the UnSeenTimeQA present substantial challenges. This indicates the models' difficulties in handling complex temporal reasoning scenarios. Additionally, we present several analyses shedding light on the models' performance in answering time-sensitive questions.

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