If I understand the point you're trying to make, you might try an example with curve fitting. If some data in a scatterplot is well explained by a line plus noise, then that's a better explanation than trying to draw ever more complicated curves that go through all the data exactly. Of course, identifying the very best model that has a few wiggles and less unexplained scatter is actually pretty tricky [c.f. AIC/BIC/cross-validation/splines].
I've had a bit of success with getting people to understand Bayesianism at parties and such, and I'm posting this thought experiment that I came up with to see if it can be improved or if an entirely different thought experiment would be grasped more intuitively in that context:
I originally came up with this idea to explain falsifiability which is why I didn't go with say the example in the better article on Bayesianism (i.e. any other number besides a 3 rolled refutes the possibility that the trick die was picked) and having a hypothesis that explains too much contradictory data, so eventually I increase the sides that the die has (like a hypothetical 50-sided die), the different types of die in the jar (100-sided, 6-sided, trick die), and different distributions of die in the jar (90% of the die are 200-sided but a 3 is rolled, etc.). Again, I've been discussing this at parties where alcohol is flowing and cognition is impaired yet people understand it, so I figure if it works there then it can be understood intuitively by many people.