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Bayesian modeling of ChIP-chip data using latent variables.
Mingqi Wu, Faming Liang, Yanan Tian
Research output
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Contribution to journal
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Article
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peer-review
5
Scopus citations
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Engineering
Control Sample
100%
Model Parameter
50%
Simple Model
50%
Methylation
50%
Joints (Structural Components)
50%
Posterior Distribution
50%
Binding Site
50%
Deconvolution
50%
Bayesian Model
50%
Site Investigation
50%
Earth and Planetary Sciences
Hidden Markov Models
100%
Deconvolution
50%
Active Sites (Chemistry)
50%
Site Investigation
50%
Methylation
50%
Psychology
Hidden Markov Models
100%
Mixture Model
50%
Hierarchical Model
50%
Model Method
50%
Keyphrases
Gamma Mixture Model
25%
Indicator Variables
25%
Deconvolution Model
25%
Truncated Poisson
25%
Bayesian Latent Class Model
25%
Joint Deconvolution
25%
Indicator Vector
25%
Chip Technology
25%
Chemical Engineering
Methylation
100%