TAVAE:一种具有自适应先验的变分自编码器,用于解释视觉皮层中的上下文调制 / TAVAE: A VAE with Adaptable Priors Explains Contextual Modulation in the Visual Cortex
1️⃣ 一句话总结
这篇论文提出了一种名为TAVAE的新型生成模型,它通过让视觉系统快速学习特定任务所需的先验知识,解释了大脑初级视觉皮层如何根据任务需求灵活调整对视觉信息的处理方式,从而更好地理解外界。
The brain interprets visual information through learned regularities, a computation formalized as probabilistic inference under a prior. The visual cortex establishes priors for this inference, some delivered through established top-down connections that inform low-level cortices about statistics represented at higher levels in the cortical hierarchy. While evidence shows that adaptation leads to priors reflecting the structure of natural images, it remains unclear whether similar priors can be flexibly acquired when learning a specific task. To investigate this, we built a generative model of V1 optimized for a simple discrimination task and analyzed it together with large-scale recordings from mice performing an analogous task. In line with recent approaches, we assumed that neuronal activity in V1 corresponds to latent posteriors in the generative model, enabling investigation of task-related priors in neuronal responses. To obtain a flexible test bed, we extended the VAE formalism so that a task can be acquired efficiently by reusing previously learned representations. Task-specific priors learned by this Task-Amortized VAE were used to investigate biases in mice and model when presenting stimuli that violated trained task statistics. Mismatch between learned task statistics and incoming sensory evidence produced signatures of uncertainty in stimulus category in the TAVAE posterior, reflecting properties of bimodal response profiles in V1 recordings. The task-optimized generative model accounted for key characteristics of V1 population activity, including within-day updates to population responses. Our results confirm that flexible task-specific contextual priors can be learned on demand by the visual system and deployed as early as the entry level of visual cortex.
TAVAE:一种具有自适应先验的变分自编码器,用于解释视觉皮层中的上下文调制 / TAVAE: A VAE with Adaptable Priors Explains Contextual Modulation in the Visual Cortex
这篇论文提出了一种名为TAVAE的新型生成模型,它通过让视觉系统快速学习特定任务所需的先验知识,解释了大脑初级视觉皮层如何根据任务需求灵活调整对视觉信息的处理方式,从而更好地理解外界。
源自 arXiv: 2602.11956