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Clustering in Generalized Linear Mixed Model Using Dirichlet Process Mixtures

Clustering in Generalized Linear Mixed Model Using Dirichlet Process Mixtures. Ya Xue Xuejun Liao April 1, 2005. Introduction. Concept drift is in the framework of generalized linear mixed model, but brings new question of exploiting the structuring of auxiliary data.

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Clustering in Generalized Linear Mixed Model Using Dirichlet Process Mixtures

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  1. Clustering in Generalized Linear Mixed Model Using Dirichlet Process Mixtures Ya Xue Xuejun Liao April 1, 2005

  2. Introduction • Concept drift is in the framework of generalized linear mixed model, but brings new question of exploiting the structuring of auxiliary data. • Mixtures with a countably infinite number of components can be handled in a Bayesian framework by employing Dirichlet process priors.

  3. Outline • Part I: generalized linear mixed model • Generalized linear model (GLM) • Generalized linear mixed model (GLMM) • Advanced applications • Bayesian feature selection in GLMM • Part II: nonparametric method • Chinese restaurant process • Dirichlet process (DP) • Dirichlet process mixture models • Variational inference for Dirichlet process mixtures

  4. Part I Generalized Linear Mixed Model

  5. Generalized Linear Model (GLM) • A linear model specifies the relationship between a dependent (or response) variable Y, and a set of predictor variables, Xs, so that • GLM is a generalization of normal linear regression models to exponential family (normal, Poisson, Gamma, binomial, etc).

  6. Generalized Linear Model (GLM) GLM differs from linear model in two major respects: • The distribution of Y can be non-normal, and does not have to be continuous. • Y still can be predicted from a linear combination of Xs, but they are "connected" via a link function.

  7. Generalized Linear Model(GLM) DDE Example: binomial distribution • Scientific interest: does DDE exposure increase the risk of cancer? Test on rats. Let i index rat. • Dependent variables: • Independent variable: dose of DDE exposure, denoted by xi.

  8. Generalized Linear Model(GLM) • Likelihood function of yi: • Choosing the canonical link , the likelihood function becomes

  9. GLMM – Basic Model Returning to the DDE example, 19 labs all over the world participated this bioassay. • There are unmeasured factors that vary between the different labs. • For example, rodent diet. • GLMM is an extension of the generalized linear model by adding random effects to the linear predictor (Schall 1991).

  10. GLMM – Basic Model • The previous linear predictor is modified as: , where index lab, index rat within lab . • are “fixed” effects - parameters common to all rats. • are “random” effects - deviations for lab i.

  11. GLMM – Basic Model • If we choose xij = zij , then all the regression coefficients are assumed to vary for the different labs. • If we choose zij = 1, then only the intercept varies for the different labs (random intercept model).

  12. GLMM - Implementation • Gibbs sampling Disadvantage: slow convergence. Solution: hierarchical centering reparametrisation (Gelfand 1994; Gelfand 1995) • Deterministic methods are only available for logit and probit models. • EM algorithm (Anderson 1985) • Simplex method (Im 1988)

  13. GLMM – Advanced Applications • Nested GLMM: within each lab, rats were group housed with three cats per cage. let i index lab, j index cage and k index rat. • Crossed GLMM: for all labs, four dose protocols were applied on different rats. let i index lab, j index rat and k indicate the protocol applied on rat i,j.

  14. GLMM – Advanced Applications • Nested GLMM: within each lab, rats were group housed with three cats per cage. Two-level GLMM: level I – lab, level II – cage. • Crossed GLMM: for all labs, four dose protocols were applied on different rats. • Rats are sorted into 19 groups by lab. • Rats are sorted into 4 groups by protocol.

  15. GLMM – Advanced Applications • Temporal/spatial statistics: Account for correlation between the random effects at different times/locations. • Dynamic latent variable model (Dunson 2003) Let i index patient and t index follow-up time,

  16. GLMM – Advanced Applications • Spatially varying coefficient processes (Gelfand 2003): random effects are modeled as spatially correlated process. Possible application: A landmine field where landmines tend to be close together.

  17. Bayesian Feature Selection in GLMM Simultaneous selection of fixed and random effects in GLMM (Cai and Dunson 2005) • Mixture prior:

  18. Bayesian Feature Selection in GLMM • Fixed effects: choose mixture priors for the fixed effects coefficients. • Random effects: reparameterization • LDU decomposition of the random effect covariance • Choose mixture prior for the elements in the diagonal matrix.

  19. …… Berlin 1 0.01 0.00 34.10 40.90 37.50 Berlin 1 0.01 0.00 35.70 35.60 32.10 Tokyo 0 0.01 0.00 56.50 28.90 27.10 Tokyo 1 0.01 0.00 51.50 29.90 25.90 …… Missing Identification in GLMM • Data table of DDE bioassay • What if the first column is missing? • Unusual case in statistics, so few people work on it. • But this is the problem we have to solve for concept drift.

  20. Concept Drift • Primary data Auxiliary data • If we treat the drift variable as random variable, concept drift is a random intercept model - a special case of GLMM.

  21. Clustering in Concept Drift K = 51 clusters (including 0) out of 300 auxiliary data points Bin resolution = 1

  22. Clustering in Concept Drift • There are intrinsic clusters in auxiliary data with respect to drift value. • “The simplest explanation is best.” Occam Razor Why don’t we instead give each cluster a random effect variable?

  23. Clustering in Concept Drift • In usual statistics applications, we know which individuals share the same random effect . • However, in concept drift, we do not know which individuals (data points or features) share the same random-intercept. • Can we train the classifier and cluster the auxiliary data simultaneously? This is a new problem we aim to solve.

  24. Clustering in Concept Drift • How many clusters (K) should we include in our model? • Does choosing K actually make sense? • Is there a better way?

  25. Part II Nonparametric Method

  26. Nonparametric method • Parametric method: the forms of the underlying density functions were known. • Nonparametric method is a wide category, e.g. NN, minmax, bootstrapping... • Nonparametric Bayesian method: make use of the Bayesian calculus without prior parameterized knowledge.

  27. Cornerstones of NBM • Dirichlet process (DP) allow flexible structures to be learned and allow sharing of statistical strength among sets of related structures. • Gaussian process (GP) allow sharing in the context of multiple nonparametric regressions (suggest to have a separate seminar on GP)

  28. Chinese Restaurant Process • Chinese restaurant process (CRP) is a distribution on partitions of integers. • CRP is used to represent uncertainty over the number of components in a mixture model.

  29. Chinese Restaurant Process • Unlimited number of tables • Each table has an unlimited capacity to seat customers.

  30. Chinese Restaurant Process The (m+1)th subsequent customer sits at a table drawn from the following distribution: where mi is the number of previous customers at table i and is a parameter.

  31. Chinese Restaurant Process Example: The probability that next customer sits at table

  32. Chinese Restaurant Process • CRP yields an exchangeable distribution on partitions of integers, i.e., the specific ordering of the customers is irrelevant. • An infinite set of random variables is said to be infinitely exchangeable if for every finite subset , we have for any permutation .

  33. Dirichlet Process G0: any probability measure on the reals, : partition. A process is a Dirichlet process if the following equation holds for all partitions: where is a concentration parameter. Note: Dir– Dirichlet distribution, DP - Dirichlet process.

  34. Dirichlet Process • Denote a sample from the Dirichlet process as • G is a distribution. • Denote a sample from the distribution G as Graphical model for a DP generating the parameters .

  35. Dirichlet Process Properties of DP:

  36. Dirichlet Process The marginal probabilities for a new This is Chinese restaurant process.

  37. DP Mixtures If F is a normal distribution, this is the a Gaussian mixture model.

  38. Applications of DP • Infinite Gaussian Mixture Model (Rasmussen 2000) • Infinite Hidden Markov Model (Beal 2002) • Hierarchical Topic Models and the Nested Chinese Restaurant Process (Blei 2004)

  39. Implementation of DP Gibbs sampling • If G0 is a conjugate prior for the likelihood given by F: (Escobar 1995) • Non-conjugate prior: (Neal 1998)

  40. Variational Inference for DPM • The goal is to compute the predictive density under DP mixture • Also, we minimized the KL distance between p and a variational distribution q. • This algorithm is based on the stick-breaking representation of DP. (I would suggest to have a separate seminar on stick-breaking view of DP and variational DP.)

  41. Open Questions • Can we apply ideas of infinite models beyond identifying the number of states or components in a mixture? • Under what conditions can we expect these models to give consistent estimates of densities? • ... • Specified to our problem: Non conjugate due to sigmoid function

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