2 research outputs found
The use of an analytic quotient operator in genetic programming
We propose replacing the division operator used in genetic programming with an analytic quotient operator.We demonstrate that this analytic quotient operator systematically yields lower mean squared errors over a range of regression tasks, due principally to removing the discontinuities or singularities that can often result from using either protected or unprotected division. Further, the analytic quotient operator is differentiable. We also show that the new analytic quotient operator stabilizes the variance of the intermediate quantities in the tree.</p
The use of an analytic quotient operator in genetic programming
We propose replacing the division operator used in genetic programming with an analytic quotient operator.We demonstrate that this analytic quotient operator systematically yields lower mean squared errors over a range of regression tasks, due principally to removing the discontinuities or singularities that can often result from using either protected or unprotected division. Further, the analytic quotient operator is differentiable. We also show that the new analytic quotient operator stabilizes the variance of the intermediate quantities in the tree.</p
