Golilarz Noorbakhsh Amiri, Hossain Elias, Rahimi Shahram, Karimi Hossein
Department of Computer Science, The University of Alabama, Tuscaloosa, AL, United States.
Department of Computer Science and Engineering, Mississippi State University, Starkville, MS, United States.
Front Psychol. 2025 Jul 23;16:1579259. doi: 10.3389/fpsyg.2025.1579259. eCollection 2025.
Aging is associated with a decline in essential cognitive functions such as language processing, memory, and attention, which significantly impacts the quality of life in later years. Despite the serious consequences of age-related cognitive decline, particularly in the formation of false memories, the underlying mechanisms remain poorly understood. This knowledge gap is partly due to limitations in current methodologies used to examine age-related cognitive changes and their origins.
In the present study, a hybrid approach was developed that combines optimized machine learning techniques with large-scale transformer-based language models to identify behavioral patterns distinguishing true from false memories in both younger and older adults. The best-performing model, a modified version of the Light Gradient Boosting Machine (LightGBM), identified nine key features using permutation importance. Feature interactions with age were further examined to understand their relationship with cognitive decline. Additionally, the modified LightGBM was integrated with a language model to enhance interpretability.
The findings revealed that younger adults benefited from target encoding time during reading, which helped them correctly reject misleading information (lures), whereas older adults were more vulnerable to inference caused by semantic similarity.
These results offer important insights into the mechanisms of false memory in aging populations and demonstrate the utility of hybrid computational methods in uncovering behavioral patterns related to memory decline. The modified LightGBM achieved the highest overall performance with an F1-score of 0.82 and recall of 0.88, outperforming all evaluated deep learning and transformer-based models.
衰老与语言处理、记忆和注意力等基本认知功能的衰退有关,这对晚年的生活质量有重大影响。尽管与年龄相关的认知衰退会产生严重后果,尤其是在错误记忆的形成方面,但其潜在机制仍知之甚少。这一知识差距部分归因于当前用于研究与年龄相关的认知变化及其起源的方法存在局限性。
在本研究中,开发了一种混合方法,将优化的机器学习技术与基于大规模变压器的语言模型相结合,以识别区分年轻人和老年人中真实记忆与错误记忆的行为模式。表现最佳的模型是轻梯度提升机(LightGBM)的改进版本,它使用排列重要性识别出九个关键特征。进一步研究了这些特征与年龄的相互作用,以了解它们与认知衰退的关系。此外,将改进的LightGBM与语言模型集成以增强可解释性。
研究结果表明,年轻人从阅读时的目标编码时间中受益,这有助于他们正确拒绝误导性信息(诱饵),而老年人更容易受到语义相似性引起的推理影响。
这些结果为衰老人群中错误记忆的机制提供了重要见解,并证明了混合计算方法在揭示与记忆衰退相关的行为模式方面的实用性。改进的LightGBM总体表现最佳,F1分数为0.82,召回率为0.88,优于所有评估的深度学习和基于变压器的模型。