Program Induction, Complexity and Occam's Razor: The Induction of Computable Functions, Modularity and No Free Lunch Theorems
Created by W.Langdon from
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- @Book{Woodward:book,
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author = "John Woodward",
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title = "Program Induction, Complexity and Occam's Razor: The
Induction of Computable Functions, Modularity and No
Free Lunch Theorems",
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publisher = "LAP Lambert Academic Publishing",
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year = "2010",
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month = "29 " # jul,
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keywords = "genetic algorithms, genetic programming",
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ISBN = "3-8383-8934-4",
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URL = "http://www.amazon.co.uk/Program-Induction-Complexity-Occams-Razor/dp/3838389344",
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abstract = "Search is a broad machine learning method where
solutions are generated and tested. We focus on
evolving computable functions with genetic programming.
The literature reveals the complexity of programs is
small, indicating a limitation of current methods. No
Free Lunch is not valid for machine learning as simpler
functions are represented more frequently which is also
related to Occam's razor. We argue for Occam's razor,
not on grounds of simplicity but probability. The
complexity of a function depends on the primitives
available. If the representation can build new
primitives, then the complexity is independent of the
primitives. We give bounds on these constants and argue
these are the tightest. We examine representation,
genetic operators and fitness functions. A
representation which addresses a general problem is
fruitful as large instances can be solved by evolving
solutions to small instances. Different versions of a
fitness function are compared which take into account
if a program was terminated. A crossover operator is
introduced which acts on modules and increases the
probability of generating correctly terminating
programs.",
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notes = "156 pages",
- }
Genetic Programming entries for
John R Woodward
Citations