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Autores principales: Yan, Yutong, Tang, Raphael, Gao, Zhenyu, Jiang, Wenxi, Lu, Yao
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2603.11838
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author Yan, Yutong
Tang, Raphael
Gao, Zhenyu
Jiang, Wenxi
Lu, Yao
author_facet Yan, Yutong
Tang, Raphael
Gao, Zhenyu
Jiang, Wenxi
Lu, Yao
contents In financial backtesting, large language models pretrained on internet-scale data risk introducing lookahead bias that undermines their forecasting validity, as they may have already seen the true outcome during training. To address this, we present DatedGPT, a family of twelve 1.3B-parameter language models, each trained from scratch on approximately 100 billion tokens of temporally partitioned data with strict annual cutoffs spanning 2013 to 2024. We further enhance each model with instruction fine-tuning on both general-domain and finance-specific datasets curated to respect the same temporal boundaries. Perplexity-based probing confirms that each model's knowledge is effectively bounded by its data cutoff year, while evaluation on standard benchmarks shows competitive performance with existing models of similar scale. We provide an interactive web demo that allows users to query and compare responses from models across different cutoff years.
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publishDate 2026
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spellingShingle DatedGPT: Preventing Lookahead Bias in Large Language Models with Time-Aware Pretraining
Yan, Yutong
Tang, Raphael
Gao, Zhenyu
Jiang, Wenxi
Lu, Yao
Computation and Language
General Finance
In financial backtesting, large language models pretrained on internet-scale data risk introducing lookahead bias that undermines their forecasting validity, as they may have already seen the true outcome during training. To address this, we present DatedGPT, a family of twelve 1.3B-parameter language models, each trained from scratch on approximately 100 billion tokens of temporally partitioned data with strict annual cutoffs spanning 2013 to 2024. We further enhance each model with instruction fine-tuning on both general-domain and finance-specific datasets curated to respect the same temporal boundaries. Perplexity-based probing confirms that each model's knowledge is effectively bounded by its data cutoff year, while evaluation on standard benchmarks shows competitive performance with existing models of similar scale. We provide an interactive web demo that allows users to query and compare responses from models across different cutoff years.
title DatedGPT: Preventing Lookahead Bias in Large Language Models with Time-Aware Pretraining
topic Computation and Language
General Finance
url https://arxiv.org/abs/2603.11838