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American Journal of Multidisciplinary Research & Development (AJMRD)
Volume 03, Issue 07 (July- 2021), PP 40-44
ISSN: 2360-821X
www.ajmrd.com
Multidisciplinary Journal www.ajmrd.com Page | 40
Research Paper Open Access
Anti-domination Number of a Graph
MallikarjunBasannaKattimani
Department of Mathematics, The Oxford College of Engineering,
Bangalore-560 068, Karnataka State-INDIA,
Corresponding Author: MallikarjunBasannaKattimani
Abstract: Let be a graph, a set is a of , if every vertex in
is adjacent to at least one vertex in . The of is the minimum
cardinality of a dominating set [1] and [6].
We define, Let be a minimum dominating set of . A set of vertices in of is an
with respect to , if every vertex in is adjacent to at least one vertex in . The
of is the minimum cardinality of an is well
defined. In this paper we obtained exact values of of for some standard graphs and also we
establish some general results and Nordhus and Guddamm type result on this new parameter.
Key words: Dominating set, Anti-dominating set.
Subject Classification: 05C69
I. Introduction
The Graph considered here are finite, connected, nontrivial, undirected, without loops or multiple
edges. Any undefined term in this paper may be found in Harary [4].
A vertex in a graph is said to be dominate every vertex adjacent to it. A set of
vertices in is a , if every vertex in is dominated by at least one vertex in .
Dominating sets were defined by Berge [1] (Where they are called externally stable sets) and Ore [6].
The of a graph is the smallest number of vertices in any minimal
dominating set. It appears in various puzzle questions. In a regular chessboard and the five chess pieces: Rook,
Bishop. Knight, King and Queen all these must tour the board using only legal moves, landing on every square
exactly once. One instance is the so called Five queens problem on the chessboard: It is required to place five
queens on the board in such positions that they dominate each square as shown in (fig.1), no smaller number of
queens will suffice, so that . In 1850’s five is the minimum number of queens that can dominate all
of the squares of chessboard. The five queen’s Problem is to find a dominating set of five queens, [1] and
[6].
Anti-domination Number of a Graph
Multidisciplinary Journal www.ajmrd.com Page | 41
(a) (b)
Figure 1.
Among the many solutions to this problem, the two in Fig.1 are particularly interesting. In the first
solution (Fig.1a) no queen is dominated by any other queen, while in the second solution (fig.1b) the opposite is
essentially true, every queen is dominated by at least one other queen. The second solution suggests the
following definition: A set of vertices in is a , if every vertex in is
dominated by at least one vertex in . The were first defined and studied by
Cockayne, Dawes and Hedetniemi [3].
Connecting to the above five-queens problem, five queens are placed in such places in a chessboard as
shown in fig.1 that all remaining 59 squares are attacked or occupied by a queen. Hence, every square is
dominated by at least one of the five queens. A set of five queens is called a .
But in fig.1 the queen is placed in such a way that it poses threat for all 59 squares, hence it can rightly
be termed as , so the problem arises in front of us is How to safeguard the 59 squares? by
five queens. Contrary to this in fig.1 the rook is placed in particular places out of 59 squares before the queen
placed, in such a way that Rook poses threat to queen, hence it can rightly be termed as
, and denoted by .
Then, our solution is, before occupying five particular places by a queen (fig.1), we place a smallest
possible number than five in different particular places out of 59 squares by rooks, which poses threat to the
queens. Having this done we can protect all 59 squares as shown in (fig.2a) or (fig.3a) with the initial
arrangement of rooks in a particular position (fig.2a) or (fig.3a). Hence we say that every queen is dominated by
at least one of the three rooks in (fig.2a) or (fig.3a). We call it as over the chessboard.
Similarly, we can use bishop (fig.2b) and (Fig.3b) or knight in (fig. 2c) and (Fig. 3c) and knight instead
of rook as mentioned in the following
Q
Q
Q
Q
Q
Q
Q
Q
Q
Q
Anti-domination Number of a Graph
Multidisciplinary Journal www.ajmrd.com Page | 42
5-Q-queen 5-Q-queen 5-Q-queen
3-R-rook 3-B-bishop 3-K-knight
(a) (b) (c)
Figure 2
5-Q-queen 5-Q-queen 5-Q-queen
3-R-rook 3-B-bishop 4-K-knight
(a) (b) (c)
Figure 3
In our discussion, three is the minimum number of rooks that can dominate all of the five queens of
chessboard. The three-rook problem is to find an . Hence it motivates.
We define, let be minimum of . A set of vertices in of is an
with respect to , if every vertex in is adjacent to at least one vertex in . The
of is the minimum cardinality of an .
Results
Exact values of for some standard graph are given in Theorem 1.
R Q
Q
Q R
Q
R Q
Q B
Q
Q
B Q
Q B
Q
Q K K
Q
K Q
Q
Q R
Q R
Q R
Q
Q
Q
B
Q B
Q
Q
B
Q
Q
K Q
Q
K Q K
K
Q
Anti-domination Number of a Graph
Multidisciplinary Journal www.ajmrd.com Page | 43
Theorem 1.
(i) (1)
(ii) (2)
(iii) (3)
(iv) (4)
(v) (5)
(vi) (6)
Where, is the greatest positive integer not greater than
Theorem 2. For any graph , (7)
Proof. (7) follows from the definition of and
Theorem 3. For any graph , (8)
Proof. Since and from (7), we have . Hence the result.
Theorem 4. For any graph , (9)
Proof. We know that any graph and also therefore and from (7), we
get Hence the result.
The following results are strait forward.
Theorem 5. If is a or or , then
Theorem 6. For any graph , and is a pendent vertex, then , where
is a cut vertex.
Theorem 7. If is connected and then
Proof. Since, we know that [2] and from (9), we get
Anti-domination Number of a Graph
Multidisciplinary Journal www.ajmrd.com Page | 44
Theorem 8. Let be a tree such that every cut vertex is adjacent to at least two end vertices. Then
.
Proof. Since, every cut vertex is belongs to and is an end vertex, therefore
Hence the result.
Theorem 9. Let be a graph with vertices, edges and maximum degree , then
.
Proof. We know that , [2]. And from (7) upper bound holds true. Clearly is connected, we
have and . Hence the result.
Theorem 10. Let be a complete bipartite graph. Then
Proof. Let be a complete bipartite graph on vertex sets and such that and . Let D
be a minimum dominating set in . Suppose . Then is adjacent with at least vertices of . And
is adjacent with at least vertices of . Thus Hence Then is dominated by
one vertex of and is dominated by one vertex of . Thus Hence the result.
Reference
[1] C. Berge; Graph and Hypergraphs, North Holland, Amsterdam, 1973.
[2] E. J. Cockayne and S. T. Hedetniemi; Towards a theory of domination in graphs, , 7, 247-
261 (1977).
[3] E. J.Cockayne, R. M. Dawes and S. T. Hedetniemi; Total domination in graphs ,10, 211-
215 (1980).
[4] F. Harary; Addison-Wesley, Reading, Mass. (1969).
[5] J. W.Glaisher, On the problem of Eight Queens, The Phil. Mag., Series 4, 457.[216].
[6] O. Ore; Theory of Graphs, Am Soc. Colloq. Publ., 38, Providence, R1, 1962.

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G374044.pdf

  • 1. American Journal of Multidisciplinary Research & Development (AJMRD) Volume 03, Issue 07 (July- 2021), PP 40-44 ISSN: 2360-821X www.ajmrd.com Multidisciplinary Journal www.ajmrd.com Page | 40 Research Paper Open Access Anti-domination Number of a Graph MallikarjunBasannaKattimani Department of Mathematics, The Oxford College of Engineering, Bangalore-560 068, Karnataka State-INDIA, Corresponding Author: MallikarjunBasannaKattimani Abstract: Let be a graph, a set is a of , if every vertex in is adjacent to at least one vertex in . The of is the minimum cardinality of a dominating set [1] and [6]. We define, Let be a minimum dominating set of . A set of vertices in of is an with respect to , if every vertex in is adjacent to at least one vertex in . The of is the minimum cardinality of an is well defined. In this paper we obtained exact values of of for some standard graphs and also we establish some general results and Nordhus and Guddamm type result on this new parameter. Key words: Dominating set, Anti-dominating set. Subject Classification: 05C69 I. Introduction The Graph considered here are finite, connected, nontrivial, undirected, without loops or multiple edges. Any undefined term in this paper may be found in Harary [4]. A vertex in a graph is said to be dominate every vertex adjacent to it. A set of vertices in is a , if every vertex in is dominated by at least one vertex in . Dominating sets were defined by Berge [1] (Where they are called externally stable sets) and Ore [6]. The of a graph is the smallest number of vertices in any minimal dominating set. It appears in various puzzle questions. In a regular chessboard and the five chess pieces: Rook, Bishop. Knight, King and Queen all these must tour the board using only legal moves, landing on every square exactly once. One instance is the so called Five queens problem on the chessboard: It is required to place five queens on the board in such positions that they dominate each square as shown in (fig.1), no smaller number of queens will suffice, so that . In 1850’s five is the minimum number of queens that can dominate all of the squares of chessboard. The five queen’s Problem is to find a dominating set of five queens, [1] and [6].
  • 2. Anti-domination Number of a Graph Multidisciplinary Journal www.ajmrd.com Page | 41 (a) (b) Figure 1. Among the many solutions to this problem, the two in Fig.1 are particularly interesting. In the first solution (Fig.1a) no queen is dominated by any other queen, while in the second solution (fig.1b) the opposite is essentially true, every queen is dominated by at least one other queen. The second solution suggests the following definition: A set of vertices in is a , if every vertex in is dominated by at least one vertex in . The were first defined and studied by Cockayne, Dawes and Hedetniemi [3]. Connecting to the above five-queens problem, five queens are placed in such places in a chessboard as shown in fig.1 that all remaining 59 squares are attacked or occupied by a queen. Hence, every square is dominated by at least one of the five queens. A set of five queens is called a . But in fig.1 the queen is placed in such a way that it poses threat for all 59 squares, hence it can rightly be termed as , so the problem arises in front of us is How to safeguard the 59 squares? by five queens. Contrary to this in fig.1 the rook is placed in particular places out of 59 squares before the queen placed, in such a way that Rook poses threat to queen, hence it can rightly be termed as , and denoted by . Then, our solution is, before occupying five particular places by a queen (fig.1), we place a smallest possible number than five in different particular places out of 59 squares by rooks, which poses threat to the queens. Having this done we can protect all 59 squares as shown in (fig.2a) or (fig.3a) with the initial arrangement of rooks in a particular position (fig.2a) or (fig.3a). Hence we say that every queen is dominated by at least one of the three rooks in (fig.2a) or (fig.3a). We call it as over the chessboard. Similarly, we can use bishop (fig.2b) and (Fig.3b) or knight in (fig. 2c) and (Fig. 3c) and knight instead of rook as mentioned in the following Q Q Q Q Q Q Q Q Q Q
  • 3. Anti-domination Number of a Graph Multidisciplinary Journal www.ajmrd.com Page | 42 5-Q-queen 5-Q-queen 5-Q-queen 3-R-rook 3-B-bishop 3-K-knight (a) (b) (c) Figure 2 5-Q-queen 5-Q-queen 5-Q-queen 3-R-rook 3-B-bishop 4-K-knight (a) (b) (c) Figure 3 In our discussion, three is the minimum number of rooks that can dominate all of the five queens of chessboard. The three-rook problem is to find an . Hence it motivates. We define, let be minimum of . A set of vertices in of is an with respect to , if every vertex in is adjacent to at least one vertex in . The of is the minimum cardinality of an . Results Exact values of for some standard graph are given in Theorem 1. R Q Q Q R Q R Q Q B Q Q B Q Q B Q Q K K Q K Q Q Q R Q R Q R Q Q Q B Q B Q Q B Q Q K Q Q K Q K K Q
  • 4. Anti-domination Number of a Graph Multidisciplinary Journal www.ajmrd.com Page | 43 Theorem 1. (i) (1) (ii) (2) (iii) (3) (iv) (4) (v) (5) (vi) (6) Where, is the greatest positive integer not greater than Theorem 2. For any graph , (7) Proof. (7) follows from the definition of and Theorem 3. For any graph , (8) Proof. Since and from (7), we have . Hence the result. Theorem 4. For any graph , (9) Proof. We know that any graph and also therefore and from (7), we get Hence the result. The following results are strait forward. Theorem 5. If is a or or , then Theorem 6. For any graph , and is a pendent vertex, then , where is a cut vertex. Theorem 7. If is connected and then Proof. Since, we know that [2] and from (9), we get
  • 5. Anti-domination Number of a Graph Multidisciplinary Journal www.ajmrd.com Page | 44 Theorem 8. Let be a tree such that every cut vertex is adjacent to at least two end vertices. Then . Proof. Since, every cut vertex is belongs to and is an end vertex, therefore Hence the result. Theorem 9. Let be a graph with vertices, edges and maximum degree , then . Proof. We know that , [2]. And from (7) upper bound holds true. Clearly is connected, we have and . Hence the result. Theorem 10. Let be a complete bipartite graph. Then Proof. Let be a complete bipartite graph on vertex sets and such that and . Let D be a minimum dominating set in . Suppose . Then is adjacent with at least vertices of . And is adjacent with at least vertices of . Thus Hence Then is dominated by one vertex of and is dominated by one vertex of . Thus Hence the result. Reference [1] C. Berge; Graph and Hypergraphs, North Holland, Amsterdam, 1973. [2] E. J. Cockayne and S. T. Hedetniemi; Towards a theory of domination in graphs, , 7, 247- 261 (1977). [3] E. J.Cockayne, R. M. Dawes and S. T. Hedetniemi; Total domination in graphs ,10, 211- 215 (1980). [4] F. Harary; Addison-Wesley, Reading, Mass. (1969). [5] J. W.Glaisher, On the problem of Eight Queens, The Phil. Mag., Series 4, 457.[216]. [6] O. Ore; Theory of Graphs, Am Soc. Colloq. Publ., 38, Providence, R1, 1962.