We sample the genetic programming tree search space and show it is smooth, since many mutations on many test cases have little or no fitness impact. We generate uniformly at random high-order polynomials composed of 12,500 and 750,000 additions and multiplications and follow the impact of small changes to them. From information theory, 32 bit floating point arithmetic is dissipative, and even with 1,501 test cases, deep mutations seldom have any impact on fitness. Absolute difference between parent and child evaluation can grow as well as fall further from the code change location, but the number of disrupted fitness tests falls monotonically. In many cases, deeply nested expressions are robust to crossover syntax changes, bugs, errors, run...
Genetic programming (GP) is an evolutionary computation technique to solve problems in an automated,...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...
We evolve floating point Sextic polynomial populations of genetic programming binary trees for up to...
We inject a random value into the evaluation of highly evolved deep integer GP trees 9 743 720 times...
Information theory explains the robustness of deep GP trees, with on average up to 83.3% of crossove...
Limited precision floating point computer implementations of large polynomial arithmetic expressions...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
One serious problem of standard Genetic Programming (GP) is that evolved expressions appear to drift...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...
Using multiobjective genetic programming with a complexity objective to overcome tree bloat is usual...
We evolve floating point Sextic polynomial populations of genetic programming binary trees for up to...
Often GP evolves side effect free trees. These pure functional expressions can be evaluated in any o...
High order mutation analysis of a software engineering benchmark, including schema and local optima ...
High order mutation analysis of a software engineering benchmark, including schema and local optima ...
We present new techniques for synthesizing programs through sequences of mutations. Among these are ...
Genetic programming (GP) is an evolutionary computation technique to solve problems in an automated,...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...
We evolve floating point Sextic polynomial populations of genetic programming binary trees for up to...
We inject a random value into the evaluation of highly evolved deep integer GP trees 9 743 720 times...
Information theory explains the robustness of deep GP trees, with on average up to 83.3% of crossove...
Limited precision floating point computer implementations of large polynomial arithmetic expressions...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
One serious problem of standard Genetic Programming (GP) is that evolved expressions appear to drift...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...
Using multiobjective genetic programming with a complexity objective to overcome tree bloat is usual...
We evolve floating point Sextic polynomial populations of genetic programming binary trees for up to...
Often GP evolves side effect free trees. These pure functional expressions can be evaluated in any o...
High order mutation analysis of a software engineering benchmark, including schema and local optima ...
High order mutation analysis of a software engineering benchmark, including schema and local optima ...
We present new techniques for synthesizing programs through sequences of mutations. Among these are ...
Genetic programming (GP) is an evolutionary computation technique to solve problems in an automated,...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...
We evolve floating point Sextic polynomial populations of genetic programming binary trees for up to...