Limits of Lamarckian Evolution Under Pressure of Morphological Novelty
arXiv cs.RO / 4/20/2026
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Key Points
- The study investigates whether Lamarckian inheritance remains effective when evolving both robot morphology and controllers under high morphological novelty and variance.
- In modular robot experiments, Lamarckian evolution clearly outperforms Darwinian evolution when selection is based only on task performance.
- When selection also rewards morphological diversity, overall locomotion performance drops significantly, and the decline is much larger for the Lamarckian approach than for the Darwinian one.
- The research attributes the reduced Lamarckian advantage to decreased parent-offspring morphological similarity, which undermines the value of inheriting controllers learned by parents.
- Overall, the findings expose a fundamental trade-off in Lamarckian evolution between inheritance-driven exploitation and diversity-driven exploration.
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