时间问题:检验生物医学语言模型的时间效应。

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2025-05-22 eCollection Date: 2024-01-01
Weisi Liu, Zhe He, Xiaolei Huang
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引用次数: 0

摘要

将语言模型应用于生物医学应用的时间根源:模型是根据历史数据进行训练的,并将用于新的或未来的数据,这些数据可能与训练数据不同。虽然越来越多的生物医学任务采用了最先进的语言模型,但很少有研究检查了数据通常在开发和部署期间发生变化时对生物医学模型的时间影响。本研究通过统计探索语言模型性能与三种生物医学任务数据转移之间的关系,填补了这一空白。我们使用了不同的指标来评估模型的性能,距离方法来测量数据漂移,以及统计方法来量化生物医学语言模型的时间效应。我们的研究表明,时间对部署生物医学语言模型很重要,而性能下降的程度因生物医学任务和统计量化方法而异。我们相信这项研究可以建立一个坚实的基准来评估和评估生物医学语言模型的时间效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Matters: Examine Temporal Effects on Biomedical Language Models.

Time roots in applying language models for biomedical applications: models are trained on historical data and will be deployed for new or future data, which may vary from training data. While increasing biomedical tasks have employed state-of-the-art language models, there are very few studies have examined temporal effects on biomedical models when data usually shifts across development and deployment. This study fills the gap by statistically probing relations between language model performance and data shifts across three biomedical tasks. We deploy diverse metrics to evaluate model performance, distance methods to measure data drifts, and statistical methods to quantify temporal effects on biomedical language models. Our study shows that time matters for deploying biomedical language models, while the degree of performance degradation varies by biomedical tasks and statistical quantification approaches. We believe this study can establish a solid benchmark to evaluate and assess temporal effects on deploying biomedical language models.

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