Fr. 57.50

Divided Cube Difference Cordial Labeling of Graphs - Divided Cube Difference Cordial Labeling of Staircase Graphs and Aztec Diamond Graphs. DE

English · Paperback / Softback

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Graph Labeling is one of the fastest developing and largest applied field in higher level Mathematical research. This book opens a horizon of a new labeling technique named as "Divided Cube Difference Cordial Labeling" and investigates the family of staircase graphs, Aztec diamond graphs for possible results. Paths, stars, bistars, corona graphs, trees, complement of complete bipartite graphs are proved to satisfy this new labeling method. Arbitrary subdivisions of a tree Tn are examined and shown to be divided cube difference cordial. This research work throughs open the opportunity for further investigation of possible other graphs which are still not explored with respect to this new labeling technique..

About the author










Dr. M. Antony Arockiasamy has eighteen years of teaching experience and fourteen years of research experience in Graph Theory. His area of interest includes graph labeling, coding theory, cryptography, probability theory, DNA Computing etc. At present, he is working as faculty of Mathematics at Sacred Heart College, Tirupattur, Tamilnadu, India. 

Product details

Authors M. Antony Arockiasamy, P. Thirupathi
Publisher LAP Lambert Academic Publishing
 
Languages English
Product format Paperback / Softback
Released 05.08.2022
 
EAN 9786205489239
ISBN 9786205489239
No. of pages 76
Subject Natural sciences, medicine, IT, technology > Mathematics > Miscellaneous

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