Some Remarks on a Class of Finite Projective Klingenberg Planes
Journal Title: JOURNAL OF ADVANCES IN MATHEMATICS - Year 2018, Vol 14, Issue 2
Abstract
In this article, we deal with a class of projective Klingenberg planes constructed over a plural algebra of order m. Thanks to this, the incidence matrices for some special cases of the class are obtained. Next, the number of collineations of the certain classes are found. Besides, an example of a collineation for these classes are given. Finally, we achieve to carry the obtained results to more general case.
Authors and Affiliations
Atilla Akpinar, Isa Dogan, Elif Demirci, Zeynep Sena Gurel, Bercem Boztemur
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