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R. Muthuraj et al Int. Journal of Engineering Research and Applications
ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159

RESEARCH ARTICLE

www.ijera.com

OPEN ACCESS

Homomorphism and Anti Homomorphism on a Bipolar Anti
Fuzzy Subgroup
R. Muthuraj1, M.Sridharan 2 and M.S.Muthuraman3
1

PG & Research Department of Mathematics, H.H.The Rajah’s College, Pudukkottai – 622 001, Tamilnadu, India.
Department of Mathematics, PSNA College of Engineering and Technology, Dindigul-624 622, Tamilnadu ,
India.
2,3

ABSTRACT
In this paper, we introduce the concept of an anti image, anti pre-image of a bipolar fuzzy subgroup of a group
G and discuss in detail a series of homomorphic and anti homomorphic properties of bipolar fuzzy and
bipolar anti fuzzy subgroup.
AMS Subject Classification (2000) : 20N25,03E72,03F055,06F35,03G25.
Keywords: fuzzy set , bipolar-valued fuzzy set, bipolar fuzzy subgroup, bipolar anti fuzzy subgroup,
homomorphism and anti homomorphism, image , pre-image ,anti image and anti pre-image of bipolar fuzzy
subgroup .

I. Introduction
The concept of fuzzy sets was initiated by
Zadeh [16]. Then it has become a vigorous area of
research in engineering, medical science, social
science, graph theory etc. Rosenfeld [12] gave the
idea of fuzzy subgroup. In fuzzy sets the membership
degree of elements range over the interval [0,1]. The
membership degree expresses the degree of
belongingness of elements to a fuzzy set. The
membership degree 1 indicates that an element
completely belongs to its corresponding fuzzy set and
membership degree 0 indicates that an element does
not belong to fuzzy set. The membership degrees on
the interval (0,1) indicate the partial membership to
the fuzzy set. Sometimes, the membership degree
means the satisfaction degree of elements to some
property or constraint corresponding to a fuzzy set.
The author W.R.Zhang [14],[15] commenced the
concept of bipolar fuzzy sets as a generalization of
fuzzy sets in 1994. In case of bipolar-valued fuzzy
sets membership degree range is enlarged from the
interval [0, 1] to [-1, 1]. In a bipolar-valued fuzzy set,
the membership degree 0 means that the elements are
irrelevant to the corresponding property, the
membership degree (0,1] indicates that elements
somewhat satisfy the property and the membership
degree [-1,0) indicates that elements somewhat satisfy
the implicit counter-property. M. Marudai,
V.Rajendran [5] introduced the pre-image of bipolar
Q fuzzy subgroup. In this paper we redefined the
concept of a pre-image of a bipolar fuzzy subgroup
and introduce the concept of an image , anti image and
,anti pre-image of a bipolar fuzzy subgroup and
discuss some of its properties with bipolar anti fuzzy
subgroup.

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II. Preliminaries
In this section, we site the fundamental
definitions that will be used in the sequel. Throughout
this paper, G = (G , *) be a finite group, e is the
identity element of G, xy we mean x * y.
Definition 2.1 [1]
Let X be any non-empty set. A fuzzy subset
 of X is a function  : X → [0,1].
Definition 2.2 [9]
Let G be a non-empty set. A bipolar-valued
fuzzy set or bipolar fuzzy set  in G is an object
having the form  = {x, +(x), (x)  / for all
xG},where + : G → [0,1] and  : G → [1,0] are
mappings. The positive membership degree + (x)
denotes the satisfaction degree of an element x to the
property corresponding to a bipolar-valued fuzzy set 
={x, +(x), (x) / for all xG} and the negative
membership degree (x) denotes the satisfaction
degree of an element x to some implicit counter
property corresponding to a bipolar-valued fuzzy set
 = {x, +(x), (x)  / for all xG}. If +(x)  0 and
(x) = 0, it is the situation that x is regarded as
having only positive satisfaction for  = {x, +(x),
(x) / for all xG}. If +(x) = 0 and (x)  0, it is
the situation that x does not satisfy the property of 
={x, +(x), (x) / for all xG}, but somewhat
satisfies the counter property of  = {x, +(x), (x)
/ for all xG}. It is possible for an element x to be
such that +(x)  0 and
(x)  0 when the
membership function of property overlaps that its
counter property over some portion of G. For the sake
of simplicity, we shall use the symbol  = (+,) for

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R. Muthuraj et al Int. Journal of Engineering Research and Applications
ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159
the bipolar-valued fuzzy set  = {x, +(x), (x) / for
all xG}.
Definition 2.3[9]
Let G be a group. A bipolar-valued fuzzy set
or bipolar fuzzy set  in G is a bipolar fuzzy subgroup
of G if for all x, y G,
i. +(xy) ≥ min {+(x), + (y)} ,
ii. (xy) ≤ max {(x), (y)},
iii. +(x1) = +(x) , (x1) = (x) .
Definition 2.4[9]
Let G be a group. A bipolar-valued fuzzy set
or bipolar fuzzy set  in G is a bipolar anti fuzzy
subgroup of G if for all x, y G,
i. +(xy) ≥ min {+(x), +(y)},
ii. (xy) ≤ max {(x), (y)},
iii. +(x1) = +(x) , (x1) = (x) .
Definition 2.5[7]
A mapping f from a group G1 to a group G2 is
said to be a homomorphism if f (xy) = f(x) f(y) for
all x,y  G1.
Definition 2.6[7]
A mapping f from a group G1 to a group G2
( G1 and G2 are not necessarily commutative) is said to
be an anti homomorphism if f (xy) = f(y) f(x) for all
x,y  G1.
Theorem 2.1
Let  be a bipolar fuzzy set of G , then  is
a bipolar anti fuzzy subgroup of G if and only if c is a
bipolar fuzzy subgroup of G.
Proof
Let  = ( +,  ) be a bipolar anti fuzzy
subgroup of G .Then for each x,y  G
Now
i.
+ (xy) ≤ max {+ (x) , + (y)}
 1 (+ )c (xy) ≤ max {1(+ )c (x) , 1 (+ )c (y)}
 (+ )c (xy) ≥ 1 max{1(+ )c (x),1 (+ )c (y)}

(+ )c (xy) ≥ min { (+ )c (x) , (+ )c (y)}
ii.  (xy) ≥ min {  (x) ,  (y)}
 1 ()c (xy) ≥ min {1 ( )c(x) ,1 ( )c (y)}
 ( )c (xy) ≤ 1 min {1 ( )c (x),1( )c (y)}
 ( )c (xy) ≤ max { ( )c (x) , ( )c (y)}
iii.
+(x1) = +(x)
+ c
 1 ( ) (x1) = 1 (+ )c (x)

(+ )c (x1) = (+ )c (x)
and
(x1) = (x)
  1 ( )c (x1) =  1 ( )c (x)

( )c (x1) = ( )c (x)
Hence c = ( (+ )c, ( )c ) is a bipolar fuzzy subgroup
of G.

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Definition 2.7[10]
Let f be a mapping from a group G1 to a
group G2 . Let  = ( +,– ) and φ = (φ +, φ – ) are
bipolar fuzzy subsets of G1 and G2 respectively, then
the image of  under f is a bipolar fuzzy subset
f () = ( (f ())+ , (f ())– ) of G2 defined by
for each u G
(f ())+ (u) = max{+ (x):x f –1(u)} , if f –1(u) ≠
0
, otherwise
and
(f ())– (u)) = max{– (x): x f –1(u) } , if f –1(u) ≠
0
, otherwise
.

also the pre-image f –1(φ) of φ under f is a bipolar
fuzzy subset of G1 defined by for x G1 ,
(f –1(φ)+ ) (x) = φ + (f (x)) , (f –1(φ)–) (x) = φ – (f (x)) .

III. Properties of a Bipolar Anti Fuzzy Group
of a Group under Homomorphism And
Anti Homomorphism
In this section, we introduce the notion of an
anti image and anti pre-image of the bipolar fuzzy
subgroup of a group, and discuss the properties of a
bipolar fuzzy and bipolar anti fuzzy subgroup of a
group under homomorphism and anti homomorphism .
Throughout this section , We mean that G1 and G2
are finite groups ( G1 and G2 are not necessarily
commutative) e1 , e2 are the identity elements of G1
and G2 respectively, and xy we mean x * y.
Definition 3.1
Let f be a mapping from a group G1 to a
group G2 . Let  and φ are fuzzy subsets of G1 and
G2 respectively, then the anti image of  under f is a
fuzzy subset fa () of G2 defined by for each
u G2.
(fa ()) (u) = min {  (x) : x f –1(u) } , if f –1(u) ≠
1
, otherwise
also the anti pre-image f –1(φ) of φ under f is a fuzzy
subset of G1 defined by for x G1 , (f –1(φ) ) (x) =
φ (f (x)).
Definition 3.2
Let f be a mapping from a group G1 to a
group G2 . Let  = ( +,– ) and φ = (φ +, φ – ) are
bipolar fuzzy subsets of G1 and G2 respectively, then
the anti image of  under f is a bipolar fuzzy subset
fa() = ( (fa())+ , (fa())– ) of G2 defined by for each
u G2 .
(fa())+ (u) = min { + (x) : x f –1(u) } , if f –1(u) ≠
1
, otherwise
(fa())– (u) = min { – (x) : x f –1(u) } , if f –1(u) ≠
1
, otherwise

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R. Muthuraj et al Int. Journal of Engineering Research and Applications
ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159
also the anti pre-image f –1(φ) of φ under f is a
bipolar fuzzy subset of G1 defined by for x G1 ,
(f –1(φ)+ ) (x) = φ + (f (x)) , (f –1(φ)–) (x) = φ – (f (x)).
Theorem 3.1
Let f be a homomorphism from a group G1
into a group G2 . If φ = (φ +, φ – ) is a bipolar fuzzy
subset of G2 then f –1 (φ c) = [f –1(φ)] c .
Proof :
Let φ = (φ +, φ – ) be a bipolar fuzzy subset
of G2, then for each x G1
i. [f –1 (φ c )] + (x) = (φ c ) + (f(x))
= 1  φ + (f(x))
= 1  f –1 (φ + )(x)
= [f –1 (φ + )]c (x)
–1
c
+
[f (φ )] = [f –1 (φ + )]c
ii.

Hence ,

[f –1 (φ c )]  (x)=
=
=
=
[f –1 (φ c )] =
f –1 (φ c)

(φ c )  (f(x))
1  φ – (f(x))
1  f –1 (φ – )(x)
[f –1 (φ – )]c (x)
[f–1(φ – )]c

= (f –1 (φ))c.

Theorem 3.2
Let f be a homomorphism from a group G1
into a group G2. If  = (+,– ) is a bipolar fuzzy
subset of G1 then i. f (c) = [fa()]c .
ii. fa (c) = (f())c.
Proof :
Let  = (+,– ) be a bipolar fuzzy subset of
G1, then for each x G1, let f(x) = u  G2
i. [f(c )]+ (u)

=
=
=
=
=
[f(c )]+ =

max {( c )+ (x) : x f –1 (u)}
max {1 + (x) : x f –1 (u)}
1 min { + (x) : x f –1 (u)}
1 fa(+ ) (u)
[fa(+ )]c (u)
[fa(+ )]c

[f(c )] (u) = max {(c )– (x) : x f –1 (u)}
= max {1 – (x) : x f –1 (u)}
= 1 min {– (x) : x f –1 (u)}
= 1 fa(– ) (u)
= [fa(– )]c (u)
c 
[f( )] = [fa(– )]c
Hence ,

f(c ) = [fa()]c

ii. [fa(c )]+ (u) =
=
=
=
=
[fa(c )]+ =

min {( c )+ (x) : x f –1 (u)}
min {1 + (x) : x f –1 (u)}
1 max { + (x) : x f –1 (u)}
1 f(+ ) (u)
[f(+)]c (u)
(f(+ ))c

[fa(c )]–
Hence ,

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=
=
=
=
=

min {1 – (x) : x f –1 (u)}
1 max { – (x): x f –1 (u)}
1 f(– ) (u)
[f(– )]c (u)
(f(– ))c

fa (c ) = (f())c.

Theorem 3.3
Let f be a homomorphism from a group G1
into a group G2. If  = (+,– ) is a bipolar anti
fuzzy subgroup of G1 then the anti image fa () of 
under f is a bipolar anti fuzzy subgroup of G2.
Proof :
Let  = (+,– ) be a bipolar anti fuzzy
subgroup of G1. Let + : G1 → [0,1] and – : G1 →
[1,0] are mappings. Let u,v  G2, since f is
homomorphism and so there exist x,y  G1 such that
f(x) = u and f(y) = v it follows that xy  f –1(uv).
(fa())+ (uv) = min {  + (z) : z = xy f –1 (uv)}
≤ min {  + (xy) : x f –1 (u), y f –1 (v)}
≤ min {max {  + (x),  + (y)} : x f –1 (u), y f –1 (v)}
=max{min{ + (x):xf –1 (u)}, min{+ (y):y f –1 (v)}}
= max {(fa())+ (u) , (fa())+ (v)}
(fa())+ (uv) ≤ max {(fa())+ (u) , (fa())+ (v)}
i.

(fa())– (uv) = min {  – (z) : z = xy  f –1 (uv)}
≥ min {  – (xy) : x f –1 (u), y f –1 (v)}
≥ min {min {  – (x),  – (y)}: x f –1 (u), y f –1 (v)}
= min{min{ – (x):xf –1 (u)},min{ – (y):y f –1 (v)}}
= min {(fa())– (u) , (fa())– (v)}
(fa())– (uv) ≥ min {(fa())– (u) , (fa())– (v)}
ii.

iii. (fa())+ (u–1) = min {  + (x) : x f –1 (u–1)}
= min {  + (x–1) : x–1 f –1 (u)}
= (fa())+ (u)
and
–
–1
(fa()) (u ) = min {  – (x) : x f –1 (u–1)}
= min {  – ( x–1) : x–1 f –1 (u)}
= (fa())– (u)
Hence , fa() is a bipolar anti fuzzy subgroup of G2 .
Theorem 3.4
Let f be an anti homomorphism from a group
G1 into a group G2. If  = (+,– ) is a bipolar anti
fuzzy subgroup of G1 then the anti image fa () of 
under f is a bipolar anti fuzzy subgroup of G2.
Proof :
Let  = ( +,– ) be a bipolar anti fuzzy
subgroup of G1. Let + : G1→ [0,1] and  : G1 →
[1,0] are mappings, Let u,v  G2, since f is an anti
homomorphism and so there exist x,y  G1 such that
f(x) = u and f(y) = v it follows that xy  f –1(vu).
i. (fa())+ (uv) = min {  + (z) : z = xy f –1 (vu)}

[fa(c )]– (u) = min {( – )c (x) : x f –1 (u)}
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1157 | P a g e
R. Muthuraj et al Int. Journal of Engineering Research and Applications
ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159
≤ min {  + (xy) : x f –1 (u), y f –1 (v)}
≤ min {max {  + (x),  + (y)} : x f –1 (u), y f –1 (v)}
= max{min{+ (x):xf –1 (u)}, min{ + (y):yf –1 (v)}}
= max {(fa())+ (u) , (fa())+ (v)}
(fa())+ (uv) ≤ max {(fa())+ (u) , (fa())+ (v)}
ii. (fa())– (uv) = min {  – (z) : z = xy  f –1 (vu)}
≥ min {  – (xy) : x f –1 (u), y f –1 (v)}
≥ min {min {  – (x),  – (y)}: x f –1 (u), y f –1 (v)}
= min{min{ – (x):xf –1(u)},min{–(y) : y f –1 (v)}}
= min {(fa())– (u) , (fa())– (v)}
–
(fa()) (uv) ≥ min {(fa())– (u) , (fa())– (v)}
iii. (fa())+ (u–1) = min {  + (x) : x f –1 (u–1)}
= min {  + (x–1) : x–1 f –1 (u)}
= (fa())+ (u)
and
–
–1
(fa()) (u ) = min {  – (x) : x f –1 (u–1)}
= min {  – ( x–1) : x–1 f –1 (u)}
= (fa())– (u)
Hence , fa() is a bipolar anti fuzzy subgroup of G2 .
Theorem 3.5
Let f be a homomorphism from a group G1
into a group G2. If φ = (φ+, φ– ) is a bipolar anti
fuzzy subgroup of G2 then the anti pre-image f –1(φ)
of φ under f is a bipolar anti fuzzy subgroup of G1.
Proof :
Let φ = (φ+, φ– ) be a bipolar anti fuzzy
subgroup of G2 , φ + : G2 → [0,1] and φ  : G2 →
[1,0] are mappings. Let x,y  G1
(f –1(φ))+ (xy) = φ + (f(xy))
= φ + (f(x) f(y))
≤ max { φ + (f(x)) , φ + (f(y))}
–1
+
(f (φ)) (xy) ≤ max{(f –1(φ))+ (x) , (f –1(φ))+ (y))}

i.

(f –1(φ))– (xy) = φ – (f(xy))
= φ – (f(x)f(y))
≥ min { φ – (f(x)), φ – (f(y))}
= min {( f –1(φ))– (x), (f –1(φ))– (y))}
–1
–
(f (φ)) (xy) ≥ min {(f –1(φ))– (x), (f –1(φ))– (y))}

Proof :

Let φ = (φ+, φ– ) be a bipolar anti fuzzy
subgroup of G2 , φ + : G2 → [0,1] and φ  : G2 →
[1,0] are mappings. Let x,y  G1
i.

(f –1(φ))+ (xy) = φ + (f(xy))
= φ + (f(y) f(x))
≤ max { φ + (f(y)) , φ + (f(x))}
= max {(f –1(φ))+ (y) , (f –1(φ))+ (x))}
= max {(f–1(φ))+ (x) , (f –1(φ))+ (y))}
–1
+
(f (φ)) (xy) ≤ max {(f –1(φ))+ (x) , (f –1(φ))+ (y))}

ii.

(f –1(φ))– (xy) = φ – (f(xy))
= φ – (f(y) f(x))
≥ min { φ – (f(y)), φ – (f(x))}
= min {(f –1(φ))– (y), (f –1(φ))– (x))}
= min {(f –1(φ))– (x), (f –1(φ))– (y))}
–1
–
(f (φ)) (xy) ≥ min {(f –1(φ))– (x), (f –1(φ))– (y))}

iii. (f –1(φ))+ (x–1) = φ + (f(x–1))
= φ + (f(x)–1)
= φ + (f(x))
= (f –1(φ))+ (x)
and
–1
–
–1
(f (φ)) (x ) = φ – (f(x–1))
= φ – (f(x)–1)
= φ – (f(x))
= (f –1 (φ))– (x)
–1
Hence, f (φ) is a bipolar anti fuzzy subgroup of G1.

REFERENCES
[1].
[2].

[3].

ii.

iii. (f –1(φ))+ (x–1) = φ + (f(x–1))
= φ + (f(x)–1)
= φ + (f(x))
= (f –1(φ))+ (x) and
–1
–
–1
(f (φ)) (x ) = φ – (f(x–1))
= φ – (f(x)–1)
= φ – (f(x))
= (f –1 (φ))– (x)
–1
Hence, f (φ) is a bipolar anti fuzzy subgroup of G1.
Theorem 3.6
Let f be an anti homomorphism from a group
G1 into a group G2. If φ = (φ+, φ– ) is a bipolar anti
fuzzy subgroup of G2 then the anti pre-image f –1(φ)
of φ under f is a bipolar anti fuzzy subgroup of G1.

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1159 | P a g e

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Gj3611551159

  • 1. R. Muthuraj et al Int. Journal of Engineering Research and Applications ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159 RESEARCH ARTICLE www.ijera.com OPEN ACCESS Homomorphism and Anti Homomorphism on a Bipolar Anti Fuzzy Subgroup R. Muthuraj1, M.Sridharan 2 and M.S.Muthuraman3 1 PG & Research Department of Mathematics, H.H.The Rajah’s College, Pudukkottai – 622 001, Tamilnadu, India. Department of Mathematics, PSNA College of Engineering and Technology, Dindigul-624 622, Tamilnadu , India. 2,3 ABSTRACT In this paper, we introduce the concept of an anti image, anti pre-image of a bipolar fuzzy subgroup of a group G and discuss in detail a series of homomorphic and anti homomorphic properties of bipolar fuzzy and bipolar anti fuzzy subgroup. AMS Subject Classification (2000) : 20N25,03E72,03F055,06F35,03G25. Keywords: fuzzy set , bipolar-valued fuzzy set, bipolar fuzzy subgroup, bipolar anti fuzzy subgroup, homomorphism and anti homomorphism, image , pre-image ,anti image and anti pre-image of bipolar fuzzy subgroup . I. Introduction The concept of fuzzy sets was initiated by Zadeh [16]. Then it has become a vigorous area of research in engineering, medical science, social science, graph theory etc. Rosenfeld [12] gave the idea of fuzzy subgroup. In fuzzy sets the membership degree of elements range over the interval [0,1]. The membership degree expresses the degree of belongingness of elements to a fuzzy set. The membership degree 1 indicates that an element completely belongs to its corresponding fuzzy set and membership degree 0 indicates that an element does not belong to fuzzy set. The membership degrees on the interval (0,1) indicate the partial membership to the fuzzy set. Sometimes, the membership degree means the satisfaction degree of elements to some property or constraint corresponding to a fuzzy set. The author W.R.Zhang [14],[15] commenced the concept of bipolar fuzzy sets as a generalization of fuzzy sets in 1994. In case of bipolar-valued fuzzy sets membership degree range is enlarged from the interval [0, 1] to [-1, 1]. In a bipolar-valued fuzzy set, the membership degree 0 means that the elements are irrelevant to the corresponding property, the membership degree (0,1] indicates that elements somewhat satisfy the property and the membership degree [-1,0) indicates that elements somewhat satisfy the implicit counter-property. M. Marudai, V.Rajendran [5] introduced the pre-image of bipolar Q fuzzy subgroup. In this paper we redefined the concept of a pre-image of a bipolar fuzzy subgroup and introduce the concept of an image , anti image and ,anti pre-image of a bipolar fuzzy subgroup and discuss some of its properties with bipolar anti fuzzy subgroup. www.ijera.com II. Preliminaries In this section, we site the fundamental definitions that will be used in the sequel. Throughout this paper, G = (G , *) be a finite group, e is the identity element of G, xy we mean x * y. Definition 2.1 [1] Let X be any non-empty set. A fuzzy subset  of X is a function  : X → [0,1]. Definition 2.2 [9] Let G be a non-empty set. A bipolar-valued fuzzy set or bipolar fuzzy set  in G is an object having the form  = {x, +(x), (x)  / for all xG},where + : G → [0,1] and  : G → [1,0] are mappings. The positive membership degree + (x) denotes the satisfaction degree of an element x to the property corresponding to a bipolar-valued fuzzy set  ={x, +(x), (x) / for all xG} and the negative membership degree (x) denotes the satisfaction degree of an element x to some implicit counter property corresponding to a bipolar-valued fuzzy set  = {x, +(x), (x)  / for all xG}. If +(x)  0 and (x) = 0, it is the situation that x is regarded as having only positive satisfaction for  = {x, +(x), (x) / for all xG}. If +(x) = 0 and (x)  0, it is the situation that x does not satisfy the property of  ={x, +(x), (x) / for all xG}, but somewhat satisfies the counter property of  = {x, +(x), (x) / for all xG}. It is possible for an element x to be such that +(x)  0 and (x)  0 when the membership function of property overlaps that its counter property over some portion of G. For the sake of simplicity, we shall use the symbol  = (+,) for 1155 | P a g e
  • 2. R. Muthuraj et al Int. Journal of Engineering Research and Applications ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159 the bipolar-valued fuzzy set  = {x, +(x), (x) / for all xG}. Definition 2.3[9] Let G be a group. A bipolar-valued fuzzy set or bipolar fuzzy set  in G is a bipolar fuzzy subgroup of G if for all x, y G, i. +(xy) ≥ min {+(x), + (y)} , ii. (xy) ≤ max {(x), (y)}, iii. +(x1) = +(x) , (x1) = (x) . Definition 2.4[9] Let G be a group. A bipolar-valued fuzzy set or bipolar fuzzy set  in G is a bipolar anti fuzzy subgroup of G if for all x, y G, i. +(xy) ≥ min {+(x), +(y)}, ii. (xy) ≤ max {(x), (y)}, iii. +(x1) = +(x) , (x1) = (x) . Definition 2.5[7] A mapping f from a group G1 to a group G2 is said to be a homomorphism if f (xy) = f(x) f(y) for all x,y  G1. Definition 2.6[7] A mapping f from a group G1 to a group G2 ( G1 and G2 are not necessarily commutative) is said to be an anti homomorphism if f (xy) = f(y) f(x) for all x,y  G1. Theorem 2.1 Let  be a bipolar fuzzy set of G , then  is a bipolar anti fuzzy subgroup of G if and only if c is a bipolar fuzzy subgroup of G. Proof Let  = ( +,  ) be a bipolar anti fuzzy subgroup of G .Then for each x,y  G Now i. + (xy) ≤ max {+ (x) , + (y)}  1 (+ )c (xy) ≤ max {1(+ )c (x) , 1 (+ )c (y)}  (+ )c (xy) ≥ 1 max{1(+ )c (x),1 (+ )c (y)}  (+ )c (xy) ≥ min { (+ )c (x) , (+ )c (y)} ii.  (xy) ≥ min {  (x) ,  (y)}  1 ()c (xy) ≥ min {1 ( )c(x) ,1 ( )c (y)}  ( )c (xy) ≤ 1 min {1 ( )c (x),1( )c (y)}  ( )c (xy) ≤ max { ( )c (x) , ( )c (y)} iii. +(x1) = +(x) + c  1 ( ) (x1) = 1 (+ )c (x)  (+ )c (x1) = (+ )c (x) and (x1) = (x)   1 ( )c (x1) =  1 ( )c (x)  ( )c (x1) = ( )c (x) Hence c = ( (+ )c, ( )c ) is a bipolar fuzzy subgroup of G. www.ijera.com www.ijera.com Definition 2.7[10] Let f be a mapping from a group G1 to a group G2 . Let  = ( +,– ) and φ = (φ +, φ – ) are bipolar fuzzy subsets of G1 and G2 respectively, then the image of  under f is a bipolar fuzzy subset f () = ( (f ())+ , (f ())– ) of G2 defined by for each u G (f ())+ (u) = max{+ (x):x f –1(u)} , if f –1(u) ≠ 0 , otherwise and (f ())– (u)) = max{– (x): x f –1(u) } , if f –1(u) ≠ 0 , otherwise . also the pre-image f –1(φ) of φ under f is a bipolar fuzzy subset of G1 defined by for x G1 , (f –1(φ)+ ) (x) = φ + (f (x)) , (f –1(φ)–) (x) = φ – (f (x)) . III. Properties of a Bipolar Anti Fuzzy Group of a Group under Homomorphism And Anti Homomorphism In this section, we introduce the notion of an anti image and anti pre-image of the bipolar fuzzy subgroup of a group, and discuss the properties of a bipolar fuzzy and bipolar anti fuzzy subgroup of a group under homomorphism and anti homomorphism . Throughout this section , We mean that G1 and G2 are finite groups ( G1 and G2 are not necessarily commutative) e1 , e2 are the identity elements of G1 and G2 respectively, and xy we mean x * y. Definition 3.1 Let f be a mapping from a group G1 to a group G2 . Let  and φ are fuzzy subsets of G1 and G2 respectively, then the anti image of  under f is a fuzzy subset fa () of G2 defined by for each u G2. (fa ()) (u) = min {  (x) : x f –1(u) } , if f –1(u) ≠ 1 , otherwise also the anti pre-image f –1(φ) of φ under f is a fuzzy subset of G1 defined by for x G1 , (f –1(φ) ) (x) = φ (f (x)). Definition 3.2 Let f be a mapping from a group G1 to a group G2 . Let  = ( +,– ) and φ = (φ +, φ – ) are bipolar fuzzy subsets of G1 and G2 respectively, then the anti image of  under f is a bipolar fuzzy subset fa() = ( (fa())+ , (fa())– ) of G2 defined by for each u G2 . (fa())+ (u) = min { + (x) : x f –1(u) } , if f –1(u) ≠ 1 , otherwise (fa())– (u) = min { – (x) : x f –1(u) } , if f –1(u) ≠ 1 , otherwise 1156 | P a g e
  • 3. R. Muthuraj et al Int. Journal of Engineering Research and Applications ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159 also the anti pre-image f –1(φ) of φ under f is a bipolar fuzzy subset of G1 defined by for x G1 , (f –1(φ)+ ) (x) = φ + (f (x)) , (f –1(φ)–) (x) = φ – (f (x)). Theorem 3.1 Let f be a homomorphism from a group G1 into a group G2 . If φ = (φ +, φ – ) is a bipolar fuzzy subset of G2 then f –1 (φ c) = [f –1(φ)] c . Proof : Let φ = (φ +, φ – ) be a bipolar fuzzy subset of G2, then for each x G1 i. [f –1 (φ c )] + (x) = (φ c ) + (f(x)) = 1  φ + (f(x)) = 1  f –1 (φ + )(x) = [f –1 (φ + )]c (x) –1 c + [f (φ )] = [f –1 (φ + )]c ii. Hence , [f –1 (φ c )]  (x)= = = = [f –1 (φ c )] = f –1 (φ c) (φ c )  (f(x)) 1  φ – (f(x)) 1  f –1 (φ – )(x) [f –1 (φ – )]c (x) [f–1(φ – )]c = (f –1 (φ))c. Theorem 3.2 Let f be a homomorphism from a group G1 into a group G2. If  = (+,– ) is a bipolar fuzzy subset of G1 then i. f (c) = [fa()]c . ii. fa (c) = (f())c. Proof : Let  = (+,– ) be a bipolar fuzzy subset of G1, then for each x G1, let f(x) = u  G2 i. [f(c )]+ (u) = = = = = [f(c )]+ = max {( c )+ (x) : x f –1 (u)} max {1 + (x) : x f –1 (u)} 1 min { + (x) : x f –1 (u)} 1 fa(+ ) (u) [fa(+ )]c (u) [fa(+ )]c [f(c )] (u) = max {(c )– (x) : x f –1 (u)} = max {1 – (x) : x f –1 (u)} = 1 min {– (x) : x f –1 (u)} = 1 fa(– ) (u) = [fa(– )]c (u) c  [f( )] = [fa(– )]c Hence , f(c ) = [fa()]c ii. [fa(c )]+ (u) = = = = = [fa(c )]+ = min {( c )+ (x) : x f –1 (u)} min {1 + (x) : x f –1 (u)} 1 max { + (x) : x f –1 (u)} 1 f(+ ) (u) [f(+)]c (u) (f(+ ))c [fa(c )]– Hence , www.ijera.com = = = = = min {1 – (x) : x f –1 (u)} 1 max { – (x): x f –1 (u)} 1 f(– ) (u) [f(– )]c (u) (f(– ))c fa (c ) = (f())c. Theorem 3.3 Let f be a homomorphism from a group G1 into a group G2. If  = (+,– ) is a bipolar anti fuzzy subgroup of G1 then the anti image fa () of  under f is a bipolar anti fuzzy subgroup of G2. Proof : Let  = (+,– ) be a bipolar anti fuzzy subgroup of G1. Let + : G1 → [0,1] and – : G1 → [1,0] are mappings. Let u,v  G2, since f is homomorphism and so there exist x,y  G1 such that f(x) = u and f(y) = v it follows that xy  f –1(uv). (fa())+ (uv) = min {  + (z) : z = xy f –1 (uv)} ≤ min {  + (xy) : x f –1 (u), y f –1 (v)} ≤ min {max {  + (x),  + (y)} : x f –1 (u), y f –1 (v)} =max{min{ + (x):xf –1 (u)}, min{+ (y):y f –1 (v)}} = max {(fa())+ (u) , (fa())+ (v)} (fa())+ (uv) ≤ max {(fa())+ (u) , (fa())+ (v)} i. (fa())– (uv) = min {  – (z) : z = xy  f –1 (uv)} ≥ min {  – (xy) : x f –1 (u), y f –1 (v)} ≥ min {min {  – (x),  – (y)}: x f –1 (u), y f –1 (v)} = min{min{ – (x):xf –1 (u)},min{ – (y):y f –1 (v)}} = min {(fa())– (u) , (fa())– (v)} (fa())– (uv) ≥ min {(fa())– (u) , (fa())– (v)} ii. iii. (fa())+ (u–1) = min {  + (x) : x f –1 (u–1)} = min {  + (x–1) : x–1 f –1 (u)} = (fa())+ (u) and – –1 (fa()) (u ) = min {  – (x) : x f –1 (u–1)} = min {  – ( x–1) : x–1 f –1 (u)} = (fa())– (u) Hence , fa() is a bipolar anti fuzzy subgroup of G2 . Theorem 3.4 Let f be an anti homomorphism from a group G1 into a group G2. If  = (+,– ) is a bipolar anti fuzzy subgroup of G1 then the anti image fa () of  under f is a bipolar anti fuzzy subgroup of G2. Proof : Let  = ( +,– ) be a bipolar anti fuzzy subgroup of G1. Let + : G1→ [0,1] and  : G1 → [1,0] are mappings, Let u,v  G2, since f is an anti homomorphism and so there exist x,y  G1 such that f(x) = u and f(y) = v it follows that xy  f –1(vu). i. (fa())+ (uv) = min {  + (z) : z = xy f –1 (vu)} [fa(c )]– (u) = min {( – )c (x) : x f –1 (u)} www.ijera.com 1157 | P a g e
  • 4. R. Muthuraj et al Int. Journal of Engineering Research and Applications ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159 ≤ min {  + (xy) : x f –1 (u), y f –1 (v)} ≤ min {max {  + (x),  + (y)} : x f –1 (u), y f –1 (v)} = max{min{+ (x):xf –1 (u)}, min{ + (y):yf –1 (v)}} = max {(fa())+ (u) , (fa())+ (v)} (fa())+ (uv) ≤ max {(fa())+ (u) , (fa())+ (v)} ii. (fa())– (uv) = min {  – (z) : z = xy  f –1 (vu)} ≥ min {  – (xy) : x f –1 (u), y f –1 (v)} ≥ min {min {  – (x),  – (y)}: x f –1 (u), y f –1 (v)} = min{min{ – (x):xf –1(u)},min{–(y) : y f –1 (v)}} = min {(fa())– (u) , (fa())– (v)} – (fa()) (uv) ≥ min {(fa())– (u) , (fa())– (v)} iii. (fa())+ (u–1) = min {  + (x) : x f –1 (u–1)} = min {  + (x–1) : x–1 f –1 (u)} = (fa())+ (u) and – –1 (fa()) (u ) = min {  – (x) : x f –1 (u–1)} = min {  – ( x–1) : x–1 f –1 (u)} = (fa())– (u) Hence , fa() is a bipolar anti fuzzy subgroup of G2 . Theorem 3.5 Let f be a homomorphism from a group G1 into a group G2. If φ = (φ+, φ– ) is a bipolar anti fuzzy subgroup of G2 then the anti pre-image f –1(φ) of φ under f is a bipolar anti fuzzy subgroup of G1. Proof : Let φ = (φ+, φ– ) be a bipolar anti fuzzy subgroup of G2 , φ + : G2 → [0,1] and φ  : G2 → [1,0] are mappings. Let x,y  G1 (f –1(φ))+ (xy) = φ + (f(xy)) = φ + (f(x) f(y)) ≤ max { φ + (f(x)) , φ + (f(y))} –1 + (f (φ)) (xy) ≤ max{(f –1(φ))+ (x) , (f –1(φ))+ (y))} i. (f –1(φ))– (xy) = φ – (f(xy)) = φ – (f(x)f(y)) ≥ min { φ – (f(x)), φ – (f(y))} = min {( f –1(φ))– (x), (f –1(φ))– (y))} –1 – (f (φ)) (xy) ≥ min {(f –1(φ))– (x), (f –1(φ))– (y))} Proof : Let φ = (φ+, φ– ) be a bipolar anti fuzzy subgroup of G2 , φ + : G2 → [0,1] and φ  : G2 → [1,0] are mappings. Let x,y  G1 i. (f –1(φ))+ (xy) = φ + (f(xy)) = φ + (f(y) f(x)) ≤ max { φ + (f(y)) , φ + (f(x))} = max {(f –1(φ))+ (y) , (f –1(φ))+ (x))} = max {(f–1(φ))+ (x) , (f –1(φ))+ (y))} –1 + (f (φ)) (xy) ≤ max {(f –1(φ))+ (x) , (f –1(φ))+ (y))} ii. (f –1(φ))– (xy) = φ – (f(xy)) = φ – (f(y) f(x)) ≥ min { φ – (f(y)), φ – (f(x))} = min {(f –1(φ))– (y), (f –1(φ))– (x))} = min {(f –1(φ))– (x), (f –1(φ))– (y))} –1 – (f (φ)) (xy) ≥ min {(f –1(φ))– (x), (f –1(φ))– (y))} iii. (f –1(φ))+ (x–1) = φ + (f(x–1)) = φ + (f(x)–1) = φ + (f(x)) = (f –1(φ))+ (x) and –1 – –1 (f (φ)) (x ) = φ – (f(x–1)) = φ – (f(x)–1) = φ – (f(x)) = (f –1 (φ))– (x) –1 Hence, f (φ) is a bipolar anti fuzzy subgroup of G1. REFERENCES [1]. [2]. [3]. ii. iii. (f –1(φ))+ (x–1) = φ + (f(x–1)) = φ + (f(x)–1) = φ + (f(x)) = (f –1(φ))+ (x) and –1 – –1 (f (φ)) (x ) = φ – (f(x–1)) = φ – (f(x)–1) = φ – (f(x)) = (f –1 (φ))– (x) –1 Hence, f (φ) is a bipolar anti fuzzy subgroup of G1. Theorem 3.6 Let f be an anti homomorphism from a group G1 into a group G2. If φ = (φ+, φ– ) is a bipolar anti fuzzy subgroup of G2 then the anti pre-image f –1(φ) of φ under f is a bipolar anti fuzzy subgroup of G1. www.ijera.com www.ijera.com [4]. [5]. [6]. [7]. [8]. P.S. Das., Fuzzy groups and level subgroups, J.Math. Anal. Appl., 84 (1981), 264 – 269. K.M.Lee., Bipolar-valued fuzzy sets and their operations, Proc.Int.Conf.on Intelligent Technologies, Bangkok, Thailand (2000), 307– 312. M.Marudai,V.Rajendran., New Constructions on Bipolar Anti Q-fuzzy Groups and Bipolar Anti Q-fuzzy d-ideals under (t,s) norms, Advances in Fuzzy Mathematics , Volume 6, Number 1 (2011), pp .145 – 153. Mehmet sait Eroglu., The homomorphic image of a fuzzy subgroup is always a fuzzy subgroup , Fuzzy sets and System , 33 (1989), 255-256. Mohamed Asaad., Groups and Fuzzy subgroups, Fuzzy sets and Systems 39 (1991), 323- 328. Mustafa Akgul, Some Properties of Fuzzy Groups, J.Math. Anal. Appl. 133 , 93 – 100 (1988). R.Muthuraj,M.S.Muthuraman, ,M.Sridharan., Bipolar fuzzy Sub-Bi HX group and its Bi Level Sub-Bi HX groups, Antarctica J.Math., 8(5)(2011), 427 - 434. R.Muthuraj, M.Sridharan., Bipolar Anti fuzzy HX group and its Lower Level Sub HX groups, Journal of Physical Sciences, Volume 16, December 2012 ,157- 169. 1158 | P a g e
  • 5. R. Muthuraj et al Int. Journal of Engineering Research and Applications ISSN : 2248-9622, Vol. 3, Issue 6, Nov-Dec 2013, pp.1155-1159 [9]. [10]. [11]. [12]. [13]. [14]. [15]. www.ijera.com R.Muthuraj, M.Sridharan., Bipolar fuzzy HX group and its Level Sub HX groups, Bulletin Of Mathematics and Statistics Research (Communicated). R.Muthuraj, M.Sridharan., Homomorphism and anti homomorphism of bipolar fuzzy sub HX groups, G eneral Mathematical Notes, Volume 17,No.2,August 2013, pp 5365. Rajesh kumar., Homomorphism and fuzzy (fuzzy normal) subgroups, Fuzzy set and System , 44 (1991) , 165 – 168. A. Rosenfeld., Fuzzy Groups, J.Math. Anal. Appl. 35(1971), 512-517. K. Sunderrajan, R.Muthuraj, M.S. Muthuraman, M.Sridharan., Some Characterization of Anti Q-L-fuzzy l-Group , International Journal of Computer Application (0975-8887),Volume 6, no.4, 3547 ,September 2010. L.A. Zadeh, Fuzzy Sets, Inform and Control, 8 (1965),338-365 W.R. Zhang., Bipolar Fuzzy Sets, Proc. of FUZZ-IEEE, pp: 835-840, 1998. www.ijera.com 1159 | P a g e