tbroderick / streaming_vbLinks
This is code associated with the paper: Broderick, T, Boyd, N, Wibisono, A, Wilson, AC, and Jordan, MI. Streaming variational Bayes. Neural Information Processing Systems, 2013. papers.nips.cc/paper/4980-streaming-variational-bayes.pdf
☆41Updated 10 years ago
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