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Pattern component modeling: A flexible approach for understanding the representational structure of brain activity patterns
2018
NeuroImage
Representational models specify how complex patterns of neural activity relate to visual stimuli, motor actions, or abstract thoughts. Here we review pattern component modeling (PCM), a practical Bayesian approach for evaluating such models. Similar to encoding models, PCM evaluates the ability of models to predict novel brain activity patterns. In contrast to encoding models, however, the activity of individual voxels across conditions (activity profiles) are not directly fitted. Rather, PCM
doi:10.1016/j.neuroimage.2017.08.051
pmid:28843540
fatcat:dfwsbrqoqzfhtkjznwkmasb5gq