- Goal
- Introduction to dynamic (=temporal) Latent Variable Models, including the Hidden Markov Model and Kalman filter.

- Materials
- Mandatory
- These lecture notes

- Optional
- Bishop pp.605-615 on Hidden Markov Models
- Bishop pp.635-641 on Kalman filters
- Faragher (2012), Understanding the Basis of the Kalman Filter
- Minka (1999), From Hidden Markov Models to Linear Dynamical Systems

- Mandatory

We consider a one-dimensional cart position tracking problem, see Faragher 2012.

The hidden states are the position $z_t$ and velocity $\dot z_t$. We can apply an external acceleration/breaking force $u_t$. (Noisy) observations are represented by $x_t$.

The equations of motions are given by

- Infer the position after 10 time steps.

- Consider the
*ordered*observation sequence $x^T \triangleq \left(x_1,x_2,\ldots,x_T\right)$.

- We wish to develop a generative model $$ p( x^T \,|\, \theta)$$ that 'explains' the time series $x^T$.

- We cannot use the IID assumption $p( x^T | \theta) = \prod_t p(x_t \,|\, \theta)$. In general, we
*can*use the**chain rule**(a.k.a. the general product rule)

- Generally, we will want to limit the depth of dependencies on previous observations. For example, the $M$th-order linear
**Auto-Regressive**(AR) model $$\begin{align*} p(x_t|x^{t-1}) = \mathcal{N}\left( \sum_{m=1}^M a_m x_{t-m}\,,\sigma^2\,\right) \end{align*}$$ limits the dependencies to the past $M$ samples.

- A limitation of AR models is that they need a lot of parameters in order to create a flexible model. E.g., if $x_t$ is an $K$-dimensional discrete variable, then an $M$th-order AR model will have $K^{M-1}(K-1)$ parameters.

- Similar to our work on Gaussian Mixture models and latent Factor models, we can create a flexible dynamic system by introducing
*latent*(unobserved) variables $z^T \triangleq \left(z_1,z_2,\dots,z_T\right)$ (one $z_t$ for each observation $x_t$). In dynamic systems, the latent variables $z_t$ are usually called*state variables*.

- A general
**state space model**is defined by

- A very common computational assumption is to let state transitions be ruled by a
*first-order Markov chain*as $$ p(z_t\,|\,z^{t-1}) = p(z_t\,|\,z_{t-1}) $$

- The Markov assumption leads to the following joint probability distribution for the state-space model: $$ p(x^T,z^T) = \underbrace{p(z_1)}_{\text{initial state}} \prod_{t=2}^T \underbrace{p(z_t\,|\,z_{t-1})}_{\text{state transitions}}\,\prod_{t=1}^T \underbrace{p(x_t\,|\,z_t)}_{\text{observations}} $$

- The Forney-style factor graph for a state-space model:

- Exercise: Show that in a state-space model $x_t$ is not a first-order Markov chain in the observations, i.e., show that $$p(x_t\,|\,x_{t-1},x_{t-2}) \neq p(x_t\,|\,x_{t-1})\,.$$

- A
**Hidden Markov Model**(HMM) is a state-space model with discrete-valued state variables $Z_t$.

- E.g., $Z_t$ is a $K$-dimensional hidden binary 'class indicator' with transition probabilities $A_{jk} \triangleq p(z_{tk}=1\,|\,z_{t-1,j}=1)$, or equivalently $$p(z_t|z_{t-1}) = \prod_{k=1}^K \prod_{j=1}^K A_{jk}^{z_{t-1,j}z_{tk}}$$ which is usually accompanied by an initial state distribution $\pi_k \triangleq p(z_{1k}=1)$.

- The classical HMM has also discrete-valued observations but in pratice any (probabilistic) observation model $p(x_t|z_t)$ may be coupled to the hidden Markov chain.

- Another well-known state-space model with continuous-valued state variables $Z_t$ is the
**(Linear) Gaussian Dynamical System**(LGDS), which is defined as

- Note that the joint distribution over $\{(x_1,z_1),\ldots,(x_t,z_t)\}$ is a (large-dimensional) Gaussian distribution. This means that, in principle, every inference problem on the LGDS model also leads to a Gaussian distribution.

- HMM's and LGDS's (and variants thereof) are at the basis of a wide range of complex information processing systems, such as speech and language recognition, robotics and automatic car navigation, and even processing of DNA sequences.

- Technically, a
**Kalman filter**is the solution to the recursive estimation (inference) of the hidden state $z_t$ based on past observations in an LGDS, i.e., Kalman filtering solves the problem $p(z_t\,|\,x^t)$ based on the previous estimate $p(z_{t-1}\,|\,x^{t-1})$ and a new observation $x_t$ (in the context of the given model specification of course).

- Let's infer the Kalman filter for a scalar linear Gaussian dynamical system: $$\begin{align*} p(z_t\,|\,z_{t-1}) &= \mathcal{N}(z_t\,|\,a z_{t-1},\sigma_z^2) \tag{state transition} \\ p(x_t\,|\,z_t) &= \mathcal{N}(x_t\,|\,c z_t,\sigma_x^2) \tag{observation} \end{align*}$$

- Kalman filtering comprises inferring $p(z_t\,|\,x^t)$ from a given prior estimate $p(z_{t-1}\,|\,x^{t-1})$ and a new observation $x_t$. Let us assume that $$\begin{align} p(z_{t-1}\,|\,x^{t-1}) = \mathcal{N}(z_{t-1} \,|\, \mu_{t-1}, \sigma_{t-1}^2) \tag{prior} \end{align}$$

- Note that everything is Gaussian, so this is
*in principle*possible to execute inference problems analytically and the result will be a Gaussian posterior:

with $$\begin{align*} \rho_t^2 &= \sigma_z^2 + a^2 \sigma_{t-1}^2 \tag{auxiliary variable}\\ K_t &= \frac{c \rho_t^2}{c^2 \rho_t^2 + \sigma_x^2} \tag{'Kalman gain'} \\ \mu_t &= a \mu_{t-1} + K_t \cdot \left( x_t - c a \mu_{t-1}\right) \tag{posterior mean}\\ \sigma_t^2 &= \left( 1 - K_t \right) \rho_t^2 \tag{posterior variance} \end{align*}$$

- Kalman filtering consists of computing these four equations for each new observation ($x_t$).

- In short, it is possible to analytically derive the Kalman filter for a linear dynamical system with Gaussian state and observation noise (eventhough it is not a fun exercise).

- If anything changes in the model, e.g., the state noise is not Gaussian, then you have to re-derive the inference equations again from scratch and it may not lead to an analytically pleasing answer.

- $\Rightarrow$ Generally, we will want to automate the inference process.

- Once the (state-space) models have been specified, we can define state and parameter estimation problems as inference tasks on the generative model.

- In principle, for linear Gaussian models these inference tasks can be analytically solved, see e.g. Faragher, 2012
- These derivations quickly become quite laborious

- Alternatively, we could specify the generative model in a (Forney-style) factor graph and use automated message passing to infer the posterior over the hidden variables. E.g., the message passing schedule for Kalman filtering looks like this:

We can solve the cart tracking problem by sum-product message passing in a factor graph like the one depicted above. All we have to do is create factor nodes for the state-transition model $p(z_t|z_{t-1})$ and the observation model $p(x_t|z_t)$. Then we just build the factor graph and let ForneyLab (factor graph toolbox) perform message passing.

We'll implement the following model:

$$\begin{align*} \begin{bmatrix} z_t \\ \dot{z_t}\end{bmatrix} &= \begin{bmatrix} 1 & \Delta t \\ 0 & 1\end{bmatrix} \begin{bmatrix} z_{t-1} \\ \dot z_{t-1}\end{bmatrix} + \begin{bmatrix} (\Delta t)^2/2 \\ \Delta t\end{bmatrix} u_t + \mathcal{N}(0,\Sigma_z) \\ \mathbf{x}_t &= \begin{bmatrix} z_t \\ \dot{z_t}\end{bmatrix} + \mathcal{N}(0,\Sigma_x) \end{align*}$$In [1]:

```
using ForneyLab
include("scripts/cart_tracking_helpers.jl") # implements required factor nodes + helper functions
# Specify the model parameters
Δt = 1.0 # assume the time steps to be equal in size
A = [1.0 Δt;
0.0 1.0]
b = [0.5*Δt^2; Δt]
Σz = diagm([0.2*Δt; 0.1*Δt]) # process noise covariance
Σx = diagm([1.0; 2.0]) # observation noise covariance;
# Generate noisy observations
n = 10 # perform 10 timesteps
z_start = [10.0; 2.0] # initial state
u = 0.2 * ones(n) # constant input u
noisy_x = generateNoisyMeasurements(z_start, u, A, b, Σz, Σx);
```

Since the factor graph is just a concatination of $n$ identical "sections", we only have to specify a single section. When running the message passing algorithm we will explictly use the posterior of the previous timestep as prior in the next one. Let's build a section of the factor graph:

In [2]:

```
fg = FactorGraph()
z_prev_m = Variable(id=:z_prev_m); placeholder(z_prev_m, :z_prev_m, dims=(2,))
z_prev_v = Variable(id=:z_prev_v); placeholder(z_prev_v, :z_prev_v, dims=(2,2))
bu = Variable(id=:bu); placeholder(bu, :bu, dims=(2,))
@RV z_prev ~ GaussianMeanVariance(z_prev_m, z_prev_v, id=:z_prev) # p(z_prev)
@RV noise_z ~ GaussianMeanVariance(constant(zeros(2), id=:noise_z_m), constant(Σz, id=:noise_z_v)) # process noise
@RV z = constant(A, id=:A) * z_prev + bu + noise_z; z.id = :z # p(z|z_prev) (state transition model)
@RV x ~ GaussianMeanVariance(z, constant(Σx, id=:Σx)) # p(x|z) (observation model)
placeholder(x, :x, dims=(2,));
# ForneyLab.draw(fg)
```

Now that we've built the factor graph, we can perform Kalman filtering by inserting measurement data into the factor graph and performing message passing.

In [3]:

```
eval(parse(sumProductAlgorithm(z))) # build message passing algorithm
marginals = Dict()
messages = Array{Message}(6)
data = Dict(:x => noisy_x[1], :bu => b*u[1], :z_prev_m => zeros(2), :z_prev_v => 1e8*eye(2))
for t=1:n
step!(data, marginals, messages) # perform msg passing (single timestep)
# Posterior of z becomes prior of z in the next timestep:
ForneyLab.ensureParameters!(marginals[:z], (:m, :v))
data[:z_prev_m] = marginals[:z].params[:m]
data[:z_prev_v] = marginals[:z].params[:v]
end
# Collect prediction p(z[n]|z[n-1]), measurement p(z[n]|x[n]), corrected prediction p(z[n]|z[n-1],x[n])
prediction = messages[5].dist # the message index is found by manual inspection of the schedule
measurement = messages[6].dist
corr_prediction = marginals[:z]
# Make a fancy plot of the prediction, noisy measurement, and corrected prediction after n timesteps
plotCartPrediction(prediction, measurement, corr_prediction);
```

*The cell below loads the style file*

In [4]:

```
open("../../styles/aipstyle.html") do f
display("text/html", readstring(f))
end
```