RTify: Aligning Deep Neural Networks with Human Behavioral Decisions.

ArXiv Pub Date : 2024-12-26
Yu-Ang Cheng, Ivan Felipe Rodriguez, Sixuan Chen, Kohitij Kar, Takeo Watanabe, Thomas Serre
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Abstract

Current neural network models of primate vision focus on replicating overall levels of behavioral accuracy, often neglecting perceptual decisions' rich, dynamic nature. Here, we introduce a novel computational framework to model the dynamics of human behavioral choices by learning to align the temporal dynamics of a recurrent neural network (RNN) to human reaction times (RTs). We describe an approximation that allows us to constrain the number of time steps an RNN takes to solve a task with human RTs. The approach is extensively evaluated against various psychophysics experiments. We also show that the approximation can be used to optimize an "ideal-observer" RNN model to achieve an optimal tradeoff between speed and accuracy without human data. The resulting model is found to account well for human RT data. Finally, we use the approximation to train a deep learning implementation of the popular Wong-Wang decision-making model. The model is integrated with a convolutional neural network (CNN) model of visual processing and evaluated using both artificial and natural image stimuli. Overall, we present a novel framework that helps align current vision models with human behavior, bringing us closer to an integrated model of human vision.

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RTify:将深度神经网络与人类行为决策相结合。
目前灵长类动物视觉的神经网络模型专注于复制行为准确性的整体水平,往往忽略了感知决策的丰富和动态性质。在这里,我们引入了一个新的计算框架,通过学习将递归神经网络(RNN)的时间动态与人类反应时间(RTs)对齐,来模拟人类行为选择的动态。我们描述了一个近似值,它允许我们约束RNN解决人类RTs任务所需的时间步数。该方法被广泛地评估与各种心理物理学实验。我们还表明,近似可以用于优化“理想观测器”RNN模型,以在没有人工数据的情况下实现速度和精度之间的最佳权衡。结果发现模型很好地解释了人类RT数据。最后,我们使用近似来训练流行的Wong-Wang决策模型的深度学习实现。该模型与卷积神经网络(CNN)视觉处理模型相结合,并使用人工和自然图像刺激进行评估。总的来说,我们提出了一个新的框架,有助于将当前的视觉模型与人类行为结合起来,使我们更接近人类视觉的综合模型。
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