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Representational Similarity Analysis – Connecting the Branches of Systems Neuroscience

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TLDR
A new experimental and data-analytical framework called representational similarity analysis (RSA) is proposed, in which multi-channel measures of neural activity are quantitatively related to each other and to computational theory and behavior by comparing RDMs.
Abstract
A fundamental challenge for systems neuroscience is to quantitatively relate its three major branches of research: brain-activity measurement, behavioral measurement, and computational modeling. Using measured brain-activity patterns to evaluate computational network models is complicated by the need to define the correspondency between the units of the model and the channels of the brain-activity data, e.g. single-cell recordings or voxels from functional magnetic resonance imaging (fMRI). Similar correspondency problems complicate relating activity patterns between different modalities of brain-activity measurement, and between subjects and species. In order to bridge these divides, we suggest abstracting from the activity patterns themselves and computing representational dissimilarity matrices, which characterize the information carried by a given representation in a brain or model. We propose a new experimental and data-analytical framework called representational similarity analysis (RSA), in which multi-channel measures of neural activity are quantitatively related to each other and to computational theory and behavior by comparing representational dissimilarity matrices. We demonstrate RSA by relating representations of visual objects as measured with fMRI to computational models spanning a wide range of complexities. We argue that these ideas, which have deep roots in psychology and neuroscience, will allow the integrated quantitative analysis of data from all three branches, thus contributing to a more unified systems neuroscience.

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Citations
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Journal ArticleDOI

Deconstructing Visual Scenes in Cortex: Gradients of Object and Spatial Layout Information

TL;DR: The results suggest that LOC, PPA, and RSC have distinct representations, emphasizing different aspects of scenes, and the specific representations in each region are predictable from their patterns of connectivity.
Journal ArticleDOI

Similarity-Based Fusion of MEG and fMRI Reveals Spatio-Temporal Dynamics in Human Cortex During Visual Object Recognition

TL;DR: An integration approach that uses representational similarities to combine measurements of magnetoencephalography and functional magnetic resonance imaging to yield a spatially and temporally integrated characterization of neuronal activation provides a novel and comprehensive, spatio-temporally resolved view of the rapid neural dynamics during the first few hundred milliseconds of object vision.
Proceedings ArticleDOI

How Cosmopolitan Are Emojis?: Exploring Emojis Usage and Meaning over Different Languages with Distributional Semantics

TL;DR: The results suggest that the overall semantics of the subset of the emojis the authors studied is preserved across all the languages they analysed, however, some emoj is interpreted in a different way from language to language, and this could be related to socio-geographical differences.
Journal ArticleDOI

Arithmetic in the developing brain: A review of brain imaging studies.

TL;DR: The nascent body of brain imaging studies reveals that arithmetic recruits a large set of interconnected areas, including prefrontal, posterior parietal, occipito-temporal and hippocampal areas, which undergoes developmental changes in its function, connectivity and structure, which are not yet fully understood.
Journal ArticleDOI

Idiosynchrony: From shared responses to individual differences during naturalistic neuroimaging.

TL;DR: It is argued that naturalistic neuroimaging paradigms have the potential to reveal meaningful individual differences above and beyond those observed during traditional tasks or at rest.
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