整合大语言模型和主动推理来理解阅读和阅读障碍中的眼球运动

IF 14.3 1区 生物学 Q1 BIOLOGY
Francesco Donnarumma , Mirco Frosolone , Giovanni Pezzulo
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引用次数: 0

摘要

我们提出了一种新的计算模型,采用分层主动推理来模拟阅读和眼球运动。该模型将语言处理描述为分层生成模型上的推理,促进从音节到句子的各种粒度级别的预测和推理。我们的方法结合了大型语言模型的优势,用于现实文本预测和主动推理,用于引导眼球运动以获取翔实的文本信息,从而能够对预测进行测试。该模型能够熟练地阅读已知和未知的单词和句子,坚持阅读双路径理论中词汇路径和非词汇路径的区分。因此,我们的模型提供了一种在预测处理框架内理解阅读和眼球运动背后的认知过程的新方法。此外,我们的模型可以潜在地帮助理解不适应的预测处理如何产生与阅读障碍相关的阅读缺陷。作为概念的证明,我们表明,在阅读过程中减弱先验的贡献会导致不正确的推理和更碎片化的阅读风格,其特征是更多的短扫视,这与关于阅读困难个体眼球运动的实证研究结果一致。总之,我们的模型在理解与阅读和眼球运动有关的认知过程方面取得了重大进展,对理解阅读障碍的适应不良推理具有潜在的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating large language models and active inference to understand eye movements in reading and dyslexia
We present a novel computational model employing hierarchical active inference to simulate reading and eye movements. The model characterizes linguistic processing as inference over a hierarchical generative model, facilitating predictions and inferences at various levels of granularity, from syllables to sentences. Our approach combines the strengths of large language models for realistic textual predictions and active inference for guiding eye movements to informative textual information, enabling the testing of predictions. The model exhibits proficiency in reading both known and unknown words and sentences, adhering to the distinction between lexical and nonlexical routes in dual route theories of reading. Our model therefore provides a novel approach to understand the cognitive processes underlying reading and eye movements, within a predictive processing framework. Furthermore, our model can potentially aid in understanding how maladaptive predictive processing can produce reading deficits associated with dyslexia. As a proof of concept, we show that attenuating the contribution of priors during the reading process leads to incorrect inferences and a more fragmented reading style, characterized by a greater number of shorter saccades, aligning with empirical findings regarding eye movements in dyslexic individuals. In summary, our model represents a significant advancement in comprehending the cognitive processes involved in reading and eye movements, with potential implications for understanding dyslexia in terms of maladaptive inference.
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来源期刊
Physics of Life Reviews
Physics of Life Reviews 生物-生物物理
CiteScore
20.30
自引率
14.50%
发文量
52
审稿时长
8 days
期刊介绍: Physics of Life Reviews, published quarterly, is an international journal dedicated to review articles on the physics of living systems, complex phenomena in biological systems, and related fields including artificial life, robotics, mathematical bio-semiotics, and artificial intelligent systems. Serving as a unifying force across disciplines, the journal explores living systems comprehensively—from molecules to populations, genetics to mind, and artificial systems modeling these phenomena. Inviting reviews from actively engaged researchers, the journal seeks broad, critical, and accessible contributions that address recent progress and sometimes controversial accounts in the field.
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