I'm doing some work with hidden markov models. More specifically, the forward and backward algorithms for filtering and smoothing. I've settled on a representation and have a working forward fn that takes the previous probability distribution for the hidden variable and the model and returns the new probability distribution. Now I want a filtering function that takes a sequence of sensor states and a model and returns a sequence consisting of

- The initial state (contained within the model)
- The result of using forward on the previous state in the return sequence, the next sensor state and the model.
- Repeat 2 until no more sensor states remain.

I've managed to get this working by recursion, but since it's not a tail-position recursion it breaks recur and seems non-idiomatic and generally a bad solution. I've tried to formulate it to work with for, reductions and iterate but I can't seem to make any of them fit. Any way to improve it?

```
(defn filtering
"Perform filtering to decide the likely state based on evidence.
Returns a sequence of state probabilities given a sequence of evidence."
[evidence {:keys [transition sense initial state-map] :as model}]
(if (empty? evidence)
(vector initial)
(let [reading (first evidence)
history (filtering (drop 1 evidence) model)
previous-state (vector (peek history))
fwd (forward previous-state reading model) ]
(conj history fwd)
)
)
)
```