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Generalized Correspondence-LDA Models (GC-LDA) for Identifying Functional Regions in the Brain
2016
Neural Information Processing Systems
This paper presents Generalized Correspondence-LDA (GC-LDA), a generalization of the Correspondence-LDA model that allows for variable spatial representations to be associated with topics, and increased flexibility in terms of the strength of the correspondence between data types induced by the model. We present three variants of GC-LDA, each of which associates topics with a different spatial representation, and apply them to a corpus of neuroimaging data. In the context of this dataset, each
dblp:conf/nips/RubinKJY16
fatcat:obczvxn6avdpxcq2ezkgrqhpmi