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Genetic Programming and Evolvable Machines, Volume 21
Volume 21, Number 1-2, June 2020
- Lee Spector:
Editorial introduction. 1-2 - Nicholas Freitag McPhee, William B. Langdon:
GP+EM 20th anniversary editorial. 3-9 - Lourdes Araujo:
Genetic programming for natural language processing. 11-32 - Anthony Brabazon, Michael Kampouridis, Michael O'Neill:
Applications of genetic programming to finance and economics: past, present, future. 33-53 - Róisín Loughran, Michael O'Neill:
Evolutionary music: applying evolutionary computation to the art of creating music. 55-85 - Nelishia Pillay:
The impact of genetic programming in education. 87-97 - Miha Kovacic, Uros Zuperl:
Genetic programming in the steelmaking industry. 99-128 - Julian Francis Miller:
Cartesian genetic programming: its status and future. 129-168 - Moshe Sipper, Jason H. Moore:
Genetic programming theory and practice: a fifteen-year trajectory. 169-179 - Andrea De Lorenzo, Alberto Bartoli, Mauro Castelli, Eric Medvet, Bing Xue:
Genetic programming in the twenty-first century: a bibliometric and content-based analysis from both sides of the fence. 181-204 - William B. Langdon:
Genetic programming and evolvable machines at 20. 205-217 - Una-May O'Reilly, Jamal Toutouh, Marcos A. Pertierra, Daniel Prado Sanchez, Dennis Garcia, Anthony Erb Lugo, Jonathan Kelly, Erik Hemberg:
Adversarial genetic programming for cyber security: a rising application domain where GP matters. 219-250 - Michael O'Neill, Lee Spector:
Automatic programming: The open issue? 251-262 - Beatrice M. Ombuki:
Juan C. Burguillo: Self-organizing coalitions for managing complexity. 263-264 - Rosa Leonor Ulloa-Cazarez:
Joseph E. Aoun: Robot-proof: higher education at the age of artificial intelligence. 265-267 - Alberto Tonda:
Inspyred: Bio-inspired algorithms in Python. 269-272 - Amir H. Gandomi, Ehsan Atefi:
Software review: the GPTIPS platform. 273-280 - Lee Spector:
Acknowledgment to reviewers (2019). 281-282
Volume 21, Number 3, September 2020
- Ting Hu, Miguel Nicolau, Lukás Sekanina:
Special issue on highlights of genetic programming 2019 events. 283-285 - Jitka Kocnová, Zdenek Vasícek:
EA-based resynthesis: an efficient tool for optimization of digital circuits. 287-319 - Timothy Atkinson, Detlef Plump, Susan Stepney:
Horizontal gene transfer for recombining graphs. 321-347 - Thomas Helmuth, Edward R. Pantridge, Lee Spector:
On the importance of specialists for lexicase selection. 349-373 - Ting Hu, Marco Tomassini, Wolfgang Banzhaf:
A network perspective on genotype-phenotype mapping in genetic programming. 375-397 - Andrew Lensen, Mengjie Zhang, Bing Xue:
Multi-objective genetic programming for manifold learning: balancing quality and dimensionality. 399-431 - William G. La Cava, Jason H. Moore:
Learning feature spaces for regression with genetic programming. 433-467 - Anna Isabel Esparcia-Alcázar, Leonardo Trujillo:
Special Issue on Integrating numerical optimization methods with genetic programming. 469-470 - Michael Kommenda, Bogdan Burlacu, Gabriel Kronberger, Michael Affenzeller:
Parameter identification for symbolic regression using nonlinear least squares. 471-501 - Rogerio C. B. L. Povoa, Adriano S. Koshiyama, Douglas Mota Dias, Patricia L. Souza, Bruno A. C. Horta:
Unimodal optimization using a genetic-programming-based method with periodic boundary conditions. 503-523 - Anna Olszewska:
Arthur I. Miller: The artist in the machine: the world of AI-powered creativity. 525-527
Volume 21, Number 4, December 2020
- Luis Muñoz, Leonardo Trujillo, Sara Silva:
Transfer learning in constructive induction with Genetic Programming. 529-569 - Jingsong He, Jin Yin:
Evolutionary design model of passive filter circuit for practical application. 571-604 - Tiantian Dou, Yuri Kaszubowski Lopes, Peter I. Rockett, Elizabeth A. Hathway, Esmail M. Saber:
GPML: an XML-based standard for the interchange of genetic programming trees. 605-627 - Irene Azzali, Leonardo Vanneschi, Andrea Mosca, Luigi Bertolotti, Mario Giacobini:
Towards the use of genetic programming in the ecological modelling of mosquito population dynamics. 629-642
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