Perhaps you want to use something like Simulated Annealing. Each time you complete a trial of throws, you change the speed/tilt a bit according to a random factor. That random factor would depend on how well you performed during the last trial.
Well I haven't really thought hard about it, but by trials I mean you could throw the ball 100 times with fixed speed and tilt, and count how many times you succeed. You can consider that whole trial of 100 throws to be one iteration, and the percentage of successes is your win rate, analagous to 'energy level' in the Simulated Annealing process.
After one trial, you would then vary the speed or tilt randomly. It could be something simple like 'add 2 to the speed', or 'increase vertical tilt a little bit'. This is a transition from your previous state to the new state. You now measure the energy of your new state (i.e. do another 100 throws with the new inputs). If this new state is worse, then scrap it, go back to the previous state and vary the inputs differently e.g. 'decrease speed by 2'.
Of course you would also need an initial guess, which is where you ought to use your physics to best calculate estimates for the first trial.
I believe that's how the simulated annealing process works, but you ought to read up on it to understand better how to apply it to your situation. I read a nice introduction to it in Steven Skiena's "The Algorithm Design Manual", which describes other machine learning techniques too.