When I've implemented genetic algorithms in the past, what I've done is to pick the parents always probabilistically - that is, you don't necessarily pick the winners, but you will pick the winners with a probability depending on how much better they are than everyone else (based on the fitness function).
I cannot remember the name of the paper to back it up, but there is a mathematical proof that "ranking" selection converges faster than "proportional" selection. If you try looking around for "genetic algorithm selection strategy" you may find something about this.
EDIT:
Just to be more specific, since pedalpete asked, there are two kinds of selection algorithms: one based on rank, one based on fitness proportion. Consider a population with 6 solutions and the following fitness values:
Solution Fitness Value
A 5
B 4
C 3
D 2
E 1
F 1
In ranking selection, you would take the top k (say, 2 or 4) and use those as the parents for your next generation. In proportional ranking, to form each "child", you randomly pick the parent with a probability based on fitness value:
Solution Probability
A 5/16
B 4/16
C 3/16
D 2/16
E 1/16
F 1/16
In this scheme, F may end up being a parent in the next generation. With a larger population size (100 for example - may be larger or smaller depending on the search space), this will mean that the bottom solutions will end up being a parent some of the time. This is OK, because even "bad" solutions have some "good" aspects.