# User:Timothee Flutre/Notebook/Postdoc/2012/08/16

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 Revision as of 16:31, 24 May 2013 (view source) (→Variational Bayes approach for the mixture of Normals: improve notation)← Previous diff Revision as of 17:04, 24 May 2013 (view source)m (→Variational Bayes approach for the mixture of Normals)Next diff → Line 92: Line 92: $\frac{\partial \mathcal{F}_K}{\partial q_{\mathbf{z}}} \bigg|_{q_{\mathbf{z}}^{(t+1)}} = 0 \Longleftrightarrow \forall \, n \; \mathrm{ln} \, q_{z_n}^{(t+1)}(z_n) = \int_\Theta \; q_\Theta(\Theta) \; \mathrm{ln} \, p(\mathbf{y},\mathbf{z}|\Theta,K) \, \mathrm{d}\Theta \; - \; 1 \; + \; C_{z_n}$ $\frac{\partial \mathcal{F}_K}{\partial q_{\mathbf{z}}} \bigg|_{q_{\mathbf{z}}^{(t+1)}} = 0 \Longleftrightarrow \forall \, n \; \mathrm{ln} \, q_{z_n}^{(t+1)}(z_n) = \int_\Theta \; q_\Theta(\Theta) \; \mathrm{ln} \, p(\mathbf{y},\mathbf{z}|\Theta,K) \, \mathrm{d}\Theta \; - \; 1 \; + \; C_{z_n}$ + + Recognizing the expectation and factorizing $q_\Theta(\Theta)$ into $q_\mathbf{w}(\mathbf{w})q_\mathbf{\mu,\tau}(\mathbf{\mu,\tau})$, we get: + + $\mathrm{ln} \, q_{z_n}^{(t+1)}(z_n) = \mathbb{E}_\mathbf{w}[\mathrm{ln} \, p(\mathbf{z}|\mathbf{w},K)] + \mathbb{E}_{\mathbf{\mu,\tau}}[\mathrm{ln} \, p(\mathbf{y}|\mathbf{z},\mathbf{\mu},\mathbf{\tau},K)] \; + \text{constant}$ + + By choosing the same functional forms for the variational distributions

## Revision as of 17:04, 24 May 2013

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## Variational Bayes approach for the mixture of Normals

• Motivation: I have described on another page the basics of mixture models and the EM algorithm in a frequentist context. It is worth reading before continuing. Here I am interested in the Bayesian approach as well as in a specific variational method (nicknamed "Variational Bayes").

• Data: N univariate observations, $y_1, \ldots, y_N$, gathered into the vector $\mathbf{y}$
• Model: mixture of K Normal distributions
• Parameters: K mixture weights (wk), K means (μk) and K precisions (τk), one per mixture component

$\Theta = \{w_1,\ldots,w_K,\mu_1,\ldots,\mu_K,\tau_1,\ldots,\tau_K\}$

• Constraints: $\sum_{k=1}^K w_k = 1$ and $\forall k \; w_k > 0$.
• Observed likelihood: observations assumed exchangeable (independent and identically distributed given the parameters)

$p(\mathbf{y} | \Theta, K) = \prod_{n=1}^N p(y_n|\Theta,K) = \prod_{n=1}^N \sum_{k=1}^K w_k \; \mathcal{N}(y_n;\mu_k,\tau_k^{-1})$

• Latent variables: N hidden variables, $z_1,\ldots,z_N$, each being a vector of length K with a single 1 indicating the component to which the nth observation belongs, and K-1 zeroes.
• Augmented likelihood:

$p(\mathbf{y},\mathbf{z}|\Theta,K) = \prod_{n=1}^N p(y_n,z_n|\Theta,K) = \prod_{n=1}^N p(z_n|\Theta,K) p(y_n|z_n,\Theta,K) = \prod_{n=1}^N \prod_{k=1}^K w_k^{z_{nk}} \; \mathcal{N}(y_n;\mu_k,\tau_k^{-1})^{z_{nk}}$

• Maximum-likelihood estimation: integrate out the latent variables

$\mathrm{ln} \, p(\mathbf{y} | \Theta, K) = \sum_{n=1}^N \mathrm{ln} \, \int_{z_n} p(y_n, z_n | \Theta, K) \, \mathrm{d}{z_n}$

The latent variables induce dependencies between all the parameters of the model. This makes it difficult to find the parameters that maximize the likelihood. An elegant solution is to introduce a variational distribution of parameters and latent variables, which leads to a re-formulation of the classical EM algorithm. But let's show it directly in the Bayesian paradigm.

• Priors: conjuguate
• $\forall k \; \tau_k \sim \mathcal{G}a(\alpha,\beta)$ and $\forall k \; \mu_k | \tau_k \sim \mathcal{N}(\mu_0,(\tau_0 \tau_k)^{-1})$
• $\forall n \; z_n \sim \mathcal{M}ult_K(1,\mathbf{w})$ and $\mathbf{w} \sim \mathcal{D}ir(\gamma)$

• Variational Bayes: let's focus here on calculating the marginal log-likelihood of our data set in order to perform model comparison:

$\mathrm{ln} \, p(\mathbf{y} | K) = \mathrm{ln} \, \int_\mathbf{z} \int_\Theta \; p(\mathbf{y}, \mathbf{z}, \Theta | K) \, \mathrm{d}\mathbf{z} \, \mathrm{d}\Theta$

We can now introduce a distribution $q_{\mathbf{z}, \Theta}$:

$\mathrm{ln} \, p(\mathbf{y} | K) = \mathrm{ln} \, \left( \int_\mathbf{z} \int_\Theta \; q_{\mathbf{z}, \Theta}(\mathbf{z}, \Theta) \; \frac{p(\mathbf{y}, \mathbf{z}, \Theta | K)}{q_{\mathbf{z}, \Theta}(\mathbf{z}, \Theta)} \, \mathrm{d}\mathbf{z} \, \mathrm{d}\Theta \right) + C_{\mathbf{z}, \Theta}$

The constant $C_{\mathbf{z}, \Theta}$ is here to remind us that $q_{\mathbf{z}, \Theta}$ has the constraint of being a distribution, ie. of summing to 1, which can be enforced by a Lagrange multiplier.

We can then use the concavity of the logarithm (Jensen's inequality) to derive a lower bound of the marginal log-likelihood:

$\mathrm{ln} \, p(\mathbf{y} | K) \ge \int_\mathbf{z} \int_\Theta \; q_{\mathbf{z}, \Theta}(\mathbf{z}, \Theta) \; \mathrm{ln} \, \frac{p(\mathbf{y}, \mathbf{z}, \Theta | K)}{q_{\mathbf{z}, \Theta}(\mathbf{z}, \Theta)} \, \mathrm{d}\mathbf{z} \, \mathrm{d}\Theta + C_{\mathbf{z}, \Theta} = \mathcal{F}_K(q)$

Let's call this lower bound $\mathcal{F}_K(q)$ as it is a functional, ie. a function of functions. To gain some intuition about the impact of introducing q, let's expand $\mathcal{F}_K$:

$\mathcal{F}_K(q) = \int_\mathbf{z} \int_\Theta \; q_{\mathbf{z}, \Theta}(\mathbf{z}, \Theta) \; \mathrm{ln} \, p(\mathbf{y} | \mathbf{z}, \Theta, K) \, \mathrm{d}\mathbf{z} \, \mathrm{d}\Theta \; + \; \int_\mathbf{z} \int_\Theta \; q_{\mathbf{z}, \Theta}(\mathbf{z}, \Theta) \; \mathrm{ln} \, \frac{p(\mathbf{z}, \Theta | K)}{q_{\mathbf{z}, \Theta}(\mathbf{z}, \Theta)} \, \mathrm{d}\mathbf{z} \, \mathrm{d}\Theta \; + \; C_{\mathbf{z}, \Theta}$

$\mathcal{F}_K(q) = \mathrm{ln} \, p(\mathbf{y} | \mathbf{z}, \Theta, K) - D_{KL}(q || p)$

From this, it is clear that $\mathcal{F}_K$ (ie. a lower-bound of the marginal log-likelihood) is the conditional log-likelihood minus the Kullback-Leibler divergence between the variational distribution q and the joint posterior of latent variables and parameters. As a side note, minimizing DKL(p | | q) is used in the expectation-propagation technique.

In practice, we have to make the following crucial assumption of independence on $q_{\mathbf{z}, \Theta}$ in order for the calculations to be analytically tractable:

$q_{\mathbf{z}, \Theta}(\mathbf{z}, \Theta) = q_{\mathbf{z}}(\mathbf{z}) q_\Theta(\Theta)$

This means that $q_\mathbf{z} q_\Theta$ approximates the joint posterior, and therefore the lower-bound will be tight if and only if this approximation is exact and the KL divergence is zero.

As we ultimately aim at inferring the parameters and latent variables that maximize the marginal log-likelihood, we will use the calculus of variations to find the functions $q_\mathbf{z}$ and qΘ that maximize the functional $\mathcal{F}_K$.

$\mathcal{F}_K(q_\mathbf{z}, q_\Theta) = \int_\Theta \; q_\Theta(\Theta) \; \left( \int_\mathbf{z} \; q_\mathbf{z}(\mathbf{z}) \; \mathrm{ln} \, \frac{p(\mathbf{y}, \mathbf{z} | \Theta, K)}{q_\mathbf{z}(\mathbf{z})} \, \mathrm{d}\mathbf{z} + \mathrm{ln} \, \frac{p(\Theta | K)}{q_\Theta(\Theta)} \right) \, \mathrm{d}\Theta \; + \; C_{\mathbf{z}} \; + \; C_{\Theta}$

This naturally leads to a procedure very similar to the EM algorithm where, at the E step, we calculate the expectations of the parameters with respect to the variational distributions $q_\mathbf{z}$ and qΘ, and, at the M step, we recompute the variational distributions over the parameters.

• Updates for $q_\mathbf{z}$:

We start by writing the functional derivative of $\mathcal{F}_K$ with respect to $q_{\mathbf{z}}$:

$\frac{\partial \mathcal{F}_K}{\partial q_{\mathbf{z}}} = \int_\Theta \; q_\Theta(\Theta) \; \frac{\partial}{\partial q_{\mathbf{z}}} \left( \int_\mathbf{z} \; \left( q_{\mathbf{z}}(\mathbf{z}) \mathrm{ln} \, p(\mathbf{y},\mathbf{z}|\Theta,K) - q_{\mathbf{z}}(\mathbf{z}) \mathrm{ln} \, q_{\mathbf{z}}(\mathbf{z}) \right) \, \mathrm{d}\mathbf{z} \right) \, \mathrm{d}\Theta \; + \; C_{\mathbf{z}}$

$\frac{\partial \mathcal{F}_K}{\partial q_{\mathbf{z}}} = \int_\Theta \; q_\Theta(\Theta) \; \left( \mathrm{ln} \, p(\mathbf{y},\mathbf{z}|\Theta,K) - \mathrm{ln} \, q_{\mathbf{z}}(\mathbf{z}) - 1 \right) \, \mathrm{d}\Theta \; + \; C_{\mathbf{z}}$

Then we set this functional derivative to zero. We also make use of a frequent assumption, namely that the variational distribution fully factorizes over each individual latent variables (mean-field assumption):

$\frac{\partial \mathcal{F}_K}{\partial q_{\mathbf{z}}} \bigg|_{q_{\mathbf{z}}^{(t+1)}} = 0 \Longleftrightarrow \forall \, n \; \mathrm{ln} \, q_{z_n}^{(t+1)}(z_n) = \int_\Theta \; q_\Theta(\Theta) \; \mathrm{ln} \, p(\mathbf{y},\mathbf{z}|\Theta,K) \, \mathrm{d}\Theta \; - \; 1 \; + \; C_{z_n}$

Recognizing the expectation and factorizing qΘ(Θ) into $q_\mathbf{w}(\mathbf{w})q_\mathbf{\mu,\tau}(\mathbf{\mu,\tau})$, we get:

$\mathrm{ln} \, q_{z_n}^{(t+1)}(z_n) = \mathbb{E}_\mathbf{w}[\mathrm{ln} \, p(\mathbf{z}|\mathbf{w},K)] + \mathbb{E}_{\mathbf{\mu,\tau}}[\mathrm{ln} \, p(\mathbf{y}|\mathbf{z},\mathbf{\mu},\mathbf{\tau},K)] \; + \text{constant}$

By choosing the same functional forms for the variational distributions <mathq[/itex] than the distributions p, we get:

$\mathrm{ln} \, q_{z_n}^{(t+1)}(z_n) = \sum_{k=1}^K z_{nk}$

TODO

• Updates for qΘ:

TODO

• Choice of K:

TODO