Semantic Valued Schema Theory of Genetic Programming in Symbolic Regression
Created by W.Langdon from
gp-bibliography.bib Revision:1.8787
- @Unpublished{Liu:2025:researchsquare,
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author = "Yilin Liu and Zhengwen Huang",
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title = "Semantic Valued Schema Theory of Genetic Programming
in Symbolic Regression",
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year = "2025",
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note = "under review",
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month = "23 " # dec,
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keywords = "genetic algorithms, genetic programming, Schema
Theory, Evolutionary Dynamics, Symbolic Regression",
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URL = "
https://www.researchsquare.com/article/rs-8316711/v1",
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DOI = "
10.21203/rs.3.rs-8316711/v1",
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abstract = "Schema Theory offers a principled lens for analyzing
the dynamics of Evolutionary Algorithms (EAs), yet its
extension to Genetic Programming (GP) is obstructed by
the nonlinear structure of GP trees and the irregular
correspondence between syntax and semantics. These
characteristics prevent classical, structure-based
schema formulations from capturing the mechanisms that
determine how information is preserved, disrupted, and
propagated during GP evolution. Motivated by the
significant role of semantics in GP, this study
introduces Valued Schema Theory (VST), which
characterizes a schema through both its semantic output
and the quantity of effective genetic material it
carries. Beyond providing a semantic definition of
schemata, the proposed theory models the flow of value
through GP populations. It describes schema dynamics
through a pessimistic survival inequality that
integrates selection pressure, crossover-induced
structural disruption, and the differing robustness of
significant meaning and zero-valued regions. This
formulation yields a tractable account of how
meaningful information spreads while non-informative
regions function as protective buffers. Empirical
evaluation across four representative benchmark tasks
covering Boolean regression, numerical symbolic
regression, and symbolic-regression-like classification
shows that VST achieves consistently high accuracy in
predicting schema-frequency transitions. These results
indicate that VST captures the microscopic mechanisms
through which semantic information is redistributed
during GP evolution, providing a coherent account of GP
underlying search dynamics.",
- }
Genetic Programming entries for
Yilin Liu
Zhengwen Huang
Citations