Who Gets Cited Most? Benchmarking Long-Context Numerical Reasoning on Scientific Articles
Paper • 2509.21028 • Published
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This is the SciTrek data that we used in the ProxyCoT project, and it is based on long-context reasoning (32K-128K tokens).
SciTrek is originally from https://arxiv.org/abs/2509.21028.
To use our dataset, please follow the code below.
train_samples = load_dataset("oaimli/proxycot-scitrek", split="train")
dev_samples = load_dataset("oaimli/proxycot-scitrek", split="val")
test_samples = load_dataset("oaimli/proxycot-scitrek", split="test")
for sample in train_samples:
question = sample["question"]
answer = sample["answer"]
metadata = sample["metadata"]
articles = sample["articles"]
instruction_proxy = sample["instruction_proxy"]
instruction_full = sample["instruction_full"]
instruction_proxy = instruction_proxy.replace("<question>", question)
instruction_proxy = instruction_proxy.replace("<articles>", "\n\n\n".join(metadata))
conversation_proxy = [{"role": "user", "content": instruction_proxy}]
instruction_full = instruction_full.replace("<question>", question)
instruction_full = instruction_full.replace("<articles>", "\n\n\n".join(articles))
conversation_full = [{"role": "user", "content": instruction_full}]