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|Abstract=Using a simple simulation model of evolution and learning, this paper provides some evolutionary arguments on why Lamarckian-like inheritance - the direct transfer of lifetime learning results from parent to offspring - does rarely exist in nature. Lamarckian inheritance allows quicker genetic adaptation to new environmental conditions than non-lamarckian inheritance. While this may be an advantage in the short term, it may be detrimental in the long term, since the population may be less well prepared for future environmental changes than in the absence of Lamarckianism.
 
|Abstract=Using a simple simulation model of evolution and learning, this paper provides some evolutionary arguments on why Lamarckian-like inheritance - the direct transfer of lifetime learning results from parent to offspring - does rarely exist in nature. Lamarckian inheritance allows quicker genetic adaptation to new environmental conditions than non-lamarckian inheritance. While this may be an advantage in the short term, it may be detrimental in the long term, since the population may be less well prepared for future environmental changes than in the absence of Lamarckianism.
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Aktuelle Version vom 24. September 2009, 21:05 Uhr


On the Adaptive Disadvantage of Lamarckianism in Rapidly Changing Environments


On the Adaptive Disadvantage of Lamarckianism in Rapidly Changing Environments



Published: 2007
Herausgeber: F. Almeida e Costa et al.
Buchtitel: Advances in Artificial Life, 9th European Conference on Artificial Life
Ausgabe: 4648
Reihe: LNCS
Seiten: 355-364
Verlag: Springer

Referierte Veröffentlichung

BibTeX

Kurzfassung
Using a simple simulation model of evolution and learning, this paper provides some evolutionary arguments on why Lamarckian-like inheritance - the direct transfer of lifetime learning results from parent to offspring - does rarely exist in nature. Lamarckian inheritance allows quicker genetic adaptation to new environmental conditions than non-lamarckian inheritance. While this may be an advantage in the short term, it may be detrimental in the long term, since the population may be less well prepared for future environmental changes than in the absence of Lamarckianism.

Download: Media:2007_1484_Paenke_On_the_Adaptive_1.pdf,Media:2007_1484_Paenke_On_the_Adaptive_2.pdf

Projekt

EVOLEARN



Forschungsgruppe

Effiziente Algorithmen


Forschungsgebiet

Evolutionäre Algorithmen, Evolutionäre Optimierung veränderlicher Probleme, Computational Biology