Corpus ID: 27948107

Tuning Chess Evaluation Function Parameters using Differential Evolution Algorithm

@article{Boskovic2011TuningCE,
  title={Tuning Chess Evaluation Function Parameters using Differential Evolution Algorithm},
  author={B. Boskovic and J. Brest},
  journal={Informatica (Slovenia)},
  year={2011},
  volume={35},
  pages={283-284}
}
  • B. Boskovic, J. Brest
  • Published 2011
  • Computer Science
  • Informatica (Slovenia)
  • This article is an extended abstract of a doctoral dissertation on chess evaluation function tuning with differential evolution (DE) algorithm. DE is adopted for efficient chess evaluation function tuning, extended with an opposition-based optimization and a new history mechanism. Experimental results show that the algorithm is efficient and can be applied to the chess evaluation function tuning that has more or less knowledge. 

    Topics from this paper.

    Opposition based learning: A literature review
    • 59
    • Highly Influenced
    • PDF

    References

    Publications referenced by this paper.
    SHOWING 1-7 OF 7 REFERENCES
    Opposition-Based Differential Evolution Algorithms
    • 150
    • PDF
    Opposition-Based Differential Evolution
    • 1,173
    • PDF
    Advances in Differential Evolution
    • 399
    Evolutionary computation: Toward a new philosophy of machine intelligence
    • 1,569
    Differential Evolution: In Search of Solutions (Springer Optimization and Its Applications)
    • 190