分析连续时间认知过程的深度学习方法

Q1 Social Sciences
Open Mind Pub Date : 2024-03-01 DOI:10.1162/opmi_a_00126
Cory Shain, William Schuler
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引用次数: 1

摘要

摘要 心理动态是复杂的。心理过程在时间中不断展开,可能对无数相互作用的变量非常敏感,尤其是在自然环境中。但是,用于分析认知实验数据的统计模型往往假设了简单的动力学。深度学习的最新进展使动态认知过程的模拟有了惊人的改进,包括语音理解、视觉感知和目标导向行为。但由于可解释性较差,深度学习一般不用于科学分析。在这里,我们通过证明深度学习不仅可以用于模仿,还可以用于分析复杂过程,在保持可解释性的同时提供灵活的函数逼近,从而弥补了这一差距。为此,我们定义并实现了一个非线性回归模型,在该模型中,通过使用人工神经网络对预测因子随时间变化的历史进行卷积,对响应变量的概率分布进行参数化,从而可以直接从时间序列数据中推断出影响的形状和连续的时间范围。我们的方法放宽了标准简化假设(如线性、平稳性和同方差),这些假设对于许多认知过程来说都是不可信的,可能会严重影响数据的解释。我们对语言处理领域的行为和神经影像数据进行了大量的改进,并证明我们的模型能够在探索性分析中发现新的模式,在确认性分析中控制各种混杂因素,并为认知(神经)科学的研究开辟了新的研究课题,而这些问题在其他情况下是很难研究的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Approach to Analyzing Continuous-Time Cognitive Processes
Abstract The dynamics of the mind are complex. Mental processes unfold continuously in time and may be sensitive to a myriad of interacting variables, especially in naturalistic settings. But statistical models used to analyze data from cognitive experiments often assume simplistic dynamics. Recent advances in deep learning have yielded startling improvements to simulations of dynamical cognitive processes, including speech comprehension, visual perception, and goal-directed behavior. But due to poor interpretability, deep learning is generally not used for scientific analysis. Here, we bridge this gap by showing that deep learning can be used, not just to imitate, but to analyze complex processes, providing flexible function approximation while preserving interpretability. To do so, we define and implement a nonlinear regression model in which the probability distribution over the response variable is parameterized by convolving the history of predictors over time using an artificial neural network, thereby allowing the shape and continuous temporal extent of effects to be inferred directly from time series data. Our approach relaxes standard simplifying assumptions (e.g., linearity, stationarity, and homoscedasticity) that are implausible for many cognitive processes and may critically affect the interpretation of data. We demonstrate substantial improvements on behavioral and neuroimaging data from the language processing domain, and we show that our model enables discovery of novel patterns in exploratory analyses, controls for diverse confounds in confirmatory analyses, and opens up research questions in cognitive (neuro)science that are otherwise hard to study.
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来源期刊
Open Mind
Open Mind Social Sciences-Linguistics and Language
CiteScore
3.20
自引率
0.00%
发文量
15
审稿时长
53 weeks
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