I have some suggestions.
Firstly, take a look at AnySoftKeyboard source code. This is basic but full-featured with text prediction and dictionaries. The code is clean and would make a good platform for extensions. Check out the Suggest, WordComposer and BinaryDictionary classes for functionality relating to word prediction. It has a dictionary with word frequency which tells you how frequently a word is found in 'real life'.
Secondly for the swipe algorithm. What you know for sure when a user swipes is what characters they started and finished on. This is a great start for prediction. I played with Swype a bit and it seems to always respect the start and end character.
In between the start and end characters, you have the ones the swipe passed over. These are possible characters to fill in the blanks. Now you can start taking guesses by making combinations of those chars and checking the dictionary for likely words. You'd always start your guess with the starting character, fill in some of the candidates from the swipe, and end with the finishing character. Show the user the best (highest frequency) matches from the dictionary.
That could be a lot of combinations to try, say 2^(n-2) where n is the number of characters under the swipe. So I'd suggest using a 'greedy' search and successively add characters from the start, keeping them if they match words in the dictionary otherwise discard them. Some refinements to this approach are probably necessary.
Another source of information you can use is when the swipe slows or changes direction on a particular character. You can detect this by calculating the speed (or acceleration) of the touch gesture. Points where the speed is low (or high deceleration) are likely to be characters the user wants.
So as an example, someone has swiped 'the'. They started on t, changed direction on h, and finished on e. These are your known points. Then you start guessing: the, tyhe, thge, thgfe, and so on and pick the words from the dictionary with the highest frequency count, which is obviously 'the' in this case.
Taking that algorithm and combining it with the prediction built into AnySoftKeyboard should yield something that works.
Hope that helps... tell us if you build it!