Attention Improves Population Codes by Warping Neural Manifolds in Human Visual Cortex
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Decades of research on visual attention have revealed its numerous effects on neural responses. Two competing models have been proposed for how these effects lead to improved population representations: one highlights changes in neural tuning, while the other points towards changes in trial-by-trial noise correlations. Here, we develop a neural population manifold framework that interprets changes in neural responses as geometric transformations in high-dimensional neural space, allowing us to disentangle and quantify the effects of tuning changes and correlation changes induced by attention. Applying this framework to extensive measurements of cortical responses during different attentional tasks, we find that tuning changes are the primary driver of improved population representations. In contrast, correlation changes, though present, have minimal—or even detrimental—effects to information content due to its strong interactions with other changes (e.g., tuning, variability). Our results support the “tuning change” model of visual attention and demonstrate a general framework for adjudicating how different aspects of neural coding affect information processing.