Having derived the update equation for gate means, we now turn our attention to the gate covariances. We bound the Q function with logarithms of Gaussians. Maximizing this bound (a sum of log-Gaussians) reduces to the maximum-likelihood estimation of a covariance matrix. The bound for a Qim sub-component is shown in Equation 14. Once again, we assume the data has been appropriately whitened with respect to the gate's previous parameters (the gate's previous mean is 0 and previous covariance is identity). Equation 15 solves for the log-Gaussian parameters (again ).
The computation for the minimal wim simplifies to . The g function is derived and plotted in Figure 2(c). An example of a log-Gaussian bound is shown in Figure 2(d) a sub-component of the Qfunction. Each sub-component corresponds to a single data point as we vary one gate's covariance. All log-Gaussian bounds are computed (one for each data point and gate combination) and are summed to bound the Q function in its entirety.
To obtain a final answer for the update of the gate covariances we simply maximize the sum of log Gaussians (parametrized by ). The update is . This covariance is subsequently unwhitened, inverting the whitening transform applied to the data.