Merging multi-view feature models by local rules

Aydin, Elçin Atilgan
Oğuztüzün, Mehmet Halit S.
Doğru, Ali Hikmet
Karataş, Ahmet Serkan
In this paper we consider merging of feature models arising from different viewpoints. We propose a normative procedure to merge basic feature models by applying local rules. Our procedure can merge basic feature models and feature models with cross-tree relationships between sibling features. © 2011 IEEE.


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Citation Formats
E. A. Aydin, M. H. S. Oğuztüzün, A. H. Doğru, and A. S. Karataş, “Merging multi-view feature models by local rules,” 2011, Accessed: 00, 2020. [Online]. Available: