International Journal of Approximate Reasoning

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International Journal of Approximate Reasoning 52 (2011) 231 239 Contents lists available at ScienceDirect International Journal of Approximate Reasoning journal homepage: www.elsevier.com/locate/ijar Topology vs generalized rough sets Zhi Pei a, Daowu Pei b,, Li Zheng a a Department of Industrial Engineering, Tsinghua University, Beijing 100084, China b Department of Mathematics, Zhejiang Sci-Tech University, Hangzhou 310018, China article info abstract Article history: Received 16 December 2007 Received in revised form 18 June 2010 Accepted 30 July 2010 Available online 19 August 2010 Keywords: Rough set theory Generalized rough set Relation based rough set Topology This paper investigates the relationship between topology and generalized rough sets induced by binary relations. Some known results regarding the relation based rough sets are reviewed, and some new results are given. Particularly, the relationship between different topologies corresponding to the same rough set model is examined. These generalized rough sets are induced by inverse serial relations, reflexive relations and pre-order relations, respectively. We point that inverse serial relations are weakest relations which can induce topological spaces, and that different relation based generalized rough set models will induce different topological spaces. We proved that two known topologies corresponding to reflexive relation based rough set model given recently are different, and gave a condition under which the both are the same topology. Ó 2010 Elsevier Inc. All rights reserved. 1. Introduction In past several years, rough set theory (see [15], or[25]) has developed significantly due to its wide applications. Various generalized rough set models have been established and their properties or structures have been investigated intensively (see [36,37], or[35,20 23,11]). An interesting and natural research topic in rough set theory is to study rough set theory via topology. Indeed, Polkowski [25] pointed: topological aspects of rough set theory were recognized early in the framework of topology of partitions. Skowron [29] and Wiweger [34] separately discussed this topic for classical rough set theory in 1988. Polkowski [24] constructed and characterized topological spaces from rough sets based on information systems. Pawlak [15] and Polkowski [25] summarized related work respectively. Kortelainen [8] considered relationships between modified sets, topological spaces and rough sets based on a pre-order (also see [5]). Lin [12] continued to discuss this topic, and established a connection between fuzzy rough sets and topology. Furthermore, using topology and neighborhood systems Lin [13] established a model for granular computing. Some authors discussed relationships between generalized rough sets and topology from different viewpoints. Skowron et al. [30,31] generalized the classical approximation spaces to tolerance approximation spaces, and discussed the problems of attribute reduction in these spaces. Other papers on this topic we refer to [1,10,7,14,3,21]. In addition, connections between fuzzy rough set theory and fuzzy topology were also investigated (see [26,32,11]). However, there are some problems still remain to be solved. For example, the relations between various generalized rough sets and topology need to be cleared. In the literatures, topologies with different forms are proposed corresponding to the same class of relation based rough sets. For example, reflexive relation based rough set model (see [7,3]). Are these topologies the same topology? In this paper, we investigate systematically relations between several classes of generalized rough sets and topology. These generalized rough sets are induced by inverse serial relations, reflexive relations, similarity Corresponding author. Address: Faculty of Science, Zhejiang Sci-Tech University, Hangzhou 310018, China. Tel.: +86 57186843720; fax: +86 57186843224. E-mail addresses: peidw@163.com, dwpei@zstu.edu.cn (D. Pei). 0888-613X/$ - see front matter Ó 2010 Elsevier Inc. All rights reserved. doi:10.1016/j.ijar.2010.07.010

232 Z. Pei et al. / International Journal of Approximate Reasoning 52 (2011) 231 239 relations and pre-order relations, respectively. Some known results regarding connections between generalized rough sets and topology are reviewed. And some new perspectives about these connections are shown. 2. Preliminaries In this section, we shall briefly review basic concepts and results of the relation based rough sets and topology in two separate subsections. For more details, we refer to [6,15 19,27,36,37]. 2.1. Relation based generalized rough sets In this paper, we always assume that U is a finite universe, i.e., a non-empty finite set of objects, R is a binary relation on U, i.e., a subset of U 2 = U U. R is serial if for each x 2 U, there exists y 2 U such that (x,y) 2 R; R is inverse serial if for each x 2 U, there exists y 2 U such that (y,x) 2 R; R is reflexive if for each x 2 U, (x,x) 2 R; R is symmetric if for all x, y 2 U, (x,y) 2 R implies (y,x) 2 R; R is transitive if for all x, y, z 2 U, (x,y) 2 R and (y,z) 2 R imply (x,z) 2 R. R is called a pre-order (relation) if R is both reflexive and transitive; R is called a similarity (or, tolerance) relation if R is both reflexive and symmetric; R is called an equivalence relation if R is reflexive, symmetric and transitive. Moreover, if a relation Q on U is the smallest relation containing R with some property (P), then we say that Q is the (P)-closure of R. Thus the terminologies such as reflexive closure, transitive closure, symmetric closure, similarity closure and pre-order closure are self-evident. The sets R s ðxþ ¼fy 2 Ujðx; yþ 2Rg; R p ðxþ ¼fy 2 Ujðy; xþ 2Rg are called the successor and predecessor neighborhood of x respectively, and the following two set-valued operators from U to the power set PðUÞ R s : x # R s ðxþ; R p : x # R p ðxþ are called the successor and predecessor neighborhood operators respectively. If R is an equivalence relation then R s (x)=r p (x)=[x] R is the equivalence class containing x. There exist two main methods to study rough set theory: the constructive method and the axiomatic method [37]. By using constructive method, Pawlak proposed the classical rough set theory based on an approximation space (U, R), where R is an equivalence relation on U (see [15], or[25]). This theory has become an effective tool in managing uncertainty contained in information systems. Many authors generalized Pawlak s models to more general setting. These work extended the applications of rough set theory. A class of natural generalizations based on general binary relations (where the relations are not necessarily equivalence relations) have been proposed. Definition 1 [37]. Let R be a binary relation on U. The ordered pair (U,R) ia called a (generalized) approximation space based on the relation R. For X # U, the lower and upper approximations of X are respectively defined as follows: apr R ðxþ ¼fx 2 UjR s ðxþ # Xg; apr R ðxþ ¼fx 2 UjR s ðxþ\x ;g: For X # U, the pair ðapr R ðxþ; apr R ðxþþ is called a relation based (generalized) rough set. In particular, if the relation R is serial (or, inverse serial, reflexive, symmetric, transitive, a pre-order, etc.), then the rough set is called a serial (correspondingly, inverse serial, reflexive, symmetric, transitive, pre-order, etc.) rough set. Proposition 1 [37]. In an approximation space (U,R), the approximation operators L = apr R and H ¼ apr R have the following properties for all X, Y # U: (L0) L(X) = H(X); (U0) H(X) = L(X); (L1) L(U) = U; (U1) H(;)=;; (L2) L(X \ Y) = L(X) \ L(Y); (U2) H(X [ Y) = H(X) [ H(Y); where X is the complement of X with respect to U. Moreover, if R is serial, then (L3) L(;)=;; (U3) H(U) = U.

Z. Pei et al. / International Journal of Approximate Reasoning 52 (2011) 231 239 233 If R is inverse serial, then (L4) X U ) L(X) U; (U4) X ;)H(X) ;. If R is reflexive, then (L5) L(X) # X; (U5) X # H(X). If R is symmetric, then (L6) X # L(H(X)); (U6) H(L(X)) # X. If R is transitive, then (L7) L(X) # L(L(X)); (U7) H(H(X)) # H(X). The axiomatic approach for studying rough set theory is based on two unary operators satisfying some conditions on the power set of the given universe. By taking the operators as the approximate operators, one can determine a binary relation and furthermore, an approximate space and a rough set model. The following proposition lists such classes of conditions for determining different generalized rough set models. Proposition 2 [37]. Let L be a unary operator on PðUÞ, and H the unary operator on PðUÞ defined by (U0). (i) If L satisfies (L1) and (L2), then there exists a binary relation R on U such that L ¼ apr R ; H ¼ apr R ; ð1þ and H satisfies (U1) and (U2). (ii) If L satisfies (L1), (L2) and (L3), then there exists a serial relation R on U such that (1) holds, and H satisfies (U1), (U2) and (U3). (iii) If L satisfies (L1), (L2) and (L4), then there exists an inverse serial relation R on U such that (1) holds, and H satisfies (U1), (U2) and (U4). (iv) If L satisfies (L1), (L2) and (L5), then there exists a reflexive relation R on U such that (1) holds, and H satisfies (U1), (U2) and (U5). (v) If L satisfies (L1), (L2) and (L6), then there exists a symmetric relation R on U such that (1) holds, and H satisfies (U1), (U2) and (U6). (vi) If L satisfies (L1), (L2) and (L7), then there exists a transitive relation R on U such that (1) holds, and H satisfies (U1), (U2) and (U7). 2.2. Some basic concepts of topology The basic concepts of topology have been widely used in many areas. Definition 2 [6]. Let U be a non-empty set. A topology on U is a family T of subsets of U which satisfies the two conditions: the intersection of any finite members of T is still a member of T, and the union of the members of each subfamily of T is also a member of T. The pair ðu; TÞ, or briefly, U is called a topological space. The members of the topology T are called open relative to T, and a subset of U is called closed if its complement is open. A subset X in a topological space ðu; TÞis a neighborhood of a point x 2 U if X contains an open set to which x belongs. A point x of a set A is an interior point of A if A is a neighborhood of x, and the set of all interior points of A is called the interior of A. The interior of A is denoted by A o. The closure of a subset A of a topological space ðu; TÞis the intersection of the family of all closed sets containing A. The closure of A is denoted by A. A unary operator Int on PðUÞ is an interior operator on U if Int satisfies the following conditions for all A, B # U: (I1) Int(U) =U; (I2) Int(A) # A; (I3) Int(Int(A)) = A; (I4) Int(A \ B)=Int(A) \ Int(B).

234 Z. Pei et al. / International Journal of Approximate Reasoning 52 (2011) 231 239 A unary operator Cl on PðUÞ is a closure operator on U if Cl satisfies the following Kuratowski closure axioms for all A, B # U: (C1) Cl(;)=;; (C2) A # Cl(A); (C3) Cl(Cl(A)) = A; (C4) Cl(A [ B)=Cl(A) [ Cl(B). Obviously, in a topological space ðu; TÞthe operator : PðUÞ!PðUÞ; A # A is a closure operator on U, and the operator o : PðUÞ!PðUÞ; A # A o is an interior operator on U. It is well known that a closure operator Cl on U can induce a topology T such that in the topological space ðu; TÞ, Cl(A) is just the closure of A for each A # U. The similar statement is also true for an interior operator (see [27]). A topology T is called an Alexandrov topology if the set of open sets in the topology is closed for arbitrary intersections (see [33], or[2,9,4]); A topology T is called a clopen topology if every open set is also closed (see [7]). By Proposition 1 we can obtain the well known results [8,5,36]: ifr is a pre-order on U, then the lower approximation operator L = apr R is an interior operator on U. Thus an Alexandrov topology can be induced by L. Similarly, the upper approximation operator H ¼ apr R is a closure operator on U, and an Alexandrov topology can be induced by H. This shows that there exist close connections between generalized rough sets and topology. In a topological space ðu; TÞ, a family B # T of sets is called a base for the topology T if for each point x of the space, and each neighborhood X of x, there is a member V of B such that x 2 V # X. We know that a subfamily B of a topology T is a base for T if and only if each member of T is the union of members of B. Moreover, B # PðUÞ forms a base for some topology on U if and only if B satisfies the following conditions: (B1) U ¼ S fbjb 2Bg. (B2) For every two members X and Y of B and each point x 2 X \ Y there is Z 2Bsuch that x 2 Z # X \ Y. Also, a family S # T of sets is a subbase for the topology T if the family of all finite intersections of members of S is a base for T. Moreover, S # PðUÞ is a subbase for some topology on U if and only if S satisfies the following condition: (S0) U ¼ S fsjs 2Sg. A topological space is called regular if for each point x and each closed set A such that x R A, there are disjoint open sets V and W such that x 2 V and A # W. A topological space is called normal if for each disjoint pair of closed sets A and B, there are disjoint open sets V and W such that A # V and B # W. If T 1 and T 2 are two topologies on U and T 1 # T 2, then we say that T 2 is finer than T 1. 3. Uniqueness of the binary relation in the axiomatic rough set theory In this section, we discuss the uniqueness of the relation in the axiomatic rough set theory. Naturally, uniqueness problem is interesting and important. In order to solve this problem, we need the following two lemmas. Lemma 1. Let R 1 and R 2 be two binary relations on U. The following conditions are equivalent: (i) R 1 # R 2 ; (ii) (R 1 ) s (x) # (R 2 ) s (x), x 2 U; (iii) apr R1 ðxþ apr R2 ðxþ; X # U; (iv) apr R1 ðxþ # apr R2 ðxþ; X # U. Proof (i) ) (ii). Suppose that (i) holds, i.e., R 1 # R 2. Then for each x 2 U, we have ðr 1 Þ s ðxþ ¼fy 2 Vjðx; yþ 2R 1 g # fy 2 Vjðx; yþ 2R 2 g¼ðr 2 Þ s ðxþ: (ii) ) (iii). Suppose that (ii) holds, i.e., (R 1 ) s # (R 2 ) s. Then for each A # V, we have apr R1 ðaþ ¼fx 2 UjðR 1 Þ s ðxþ # Ag fx 2 UjðR 1 Þ s ðxþ # Ag ¼apr R2 ðaþ:

Z. Pei et al. / International Journal of Approximate Reasoning 52 (2011) 231 239 235 (iii) ) (iv). If (iii) holds, then we have apr R1 ðaþ ¼apr R1 ð AÞ # apr R2 ð AÞ ¼apr R2 ðaþ: (iv) ) (i). Suppose that (iv) holds, i.e., for any A # V, apr R1 ðaþ # apr R2 ðaþ. If (i) does not hold, i.e., R 1 Ü R 2 ; or equivalently, there is (x,y) 2 R 1 R 2, then y 2ðR 1 ÞsðxÞ; y R ðr 2 ÞsðxÞ; hence x 2 apr R1 ðfygþ; x R apr R2 ðfygþ: This contradicts the assumption, and the proof is completed. h As a direct corollary of the above theorem, we have: Lemma 2. Let R 1 and R 2 be two binary relations on U. The following conditions are equivalent: (i) R 1 =R 2 ; (ii) (R 1 ) s =(R 2 ) s ; (iii) apr R1 ¼ apr R2 ; (iv) apr R1 ¼ apr R2. By the above two lammas, we can obtain the uniqueness of binary relation. Theorem 1. In Proposition 2(i) (naturally, also in (ii) (vi)), the binary relation R is uniquely determined by L. 4. Correspondence between topologies and generalized rough sets In this section, we investigate connections between topology and different generalized rough set theories based on various binary relations. Let R be a binary relation on a given universe U. Set S R ¼fR s ðxþjx 2 Ug: In the case when (U,R) is a classical approximation space, i.e., R is an equivalence relation on U, the following results are well known (see [1,12,13]): (i) S R ¼ U=R is a partition base for some topology on U, i.e., S R is both a partition of U and a base for some topology on U; (ii) T R is a clopen topology of U, i.e., members of T R are both open and closed; (iii) the topological space ðu; T R Þ is both regular and normal. 4.1. Topology vs inverse serial rough sets First, let us consider the most general rough set theory in which R is a general binary relation. Definition 3. Suppose that (U,R) is an approximation space, if S R forms a subbase for some topology on U, then S R determines a unique topology on U. We call this topology the topology induced by R, and use T R to denote this topology. A topology T is a Pawlak topology if this topology is induced by an equivalence relation on U (see [12,13]). A basic problem is: when does S R form a subbase for some topology on U? We note that S R forms a subbase for some topology on U if and only if R s ðuþ ¼ [ x2u R s ðxþ ¼U: ð2þ This is the condition (S0). The equality (2) is true if and only if R is inverse serial. This observation gives a sufficiency and necessary condition which makes the family of subsets S R form a subbase for some topology on U. We summarize the fact by the following theorem. Theorem 2. If R is a binary relation on U, then S R forms a subbase for some topology on U if and only if R is inverse serial. Remark 1. This theorem shows that the rough set theory based on an inverse serial relation is the weakest rough set theory in which S R forms a subbase for some topology. Lashin et al. [10] used S R as a subbase for some topology on U for each binary

236 Z. Pei et al. / International Journal of Approximate Reasoning 52 (2011) 231 239 relation R on U. However, according to Theorem 2,ifR is not inverse serial then S R cannot form a subbase for any topology on U since the necessary and sufficient condition (S0) or (2) for a subbase is not true. For example, S R cannot form a subbase for any topology on U if R is the empty relation ; on U. Moreover, it is not very difficult to give an example in which the relation R is non-empty for the same end. An interesting problem arises: Can two different inverse serial relations on U induce the same topology on U? The following example gives a positive answer (note: the following example is a simplification of the corresponding example of [10]): Example. Let U = {0,1,2,3,4}, and R 1 ¼fð0; 0Þ; ð0; 1Þ; ð0; 2Þ; ð1; 2Þ; ð1; 3Þ; ð2; 2Þ; ð2; 3Þ; ð3; 2Þ; ð3; 3Þ; ð4; 3Þ; ð4; 4Þg; R 2 ¼fð0; 0Þ; ð0; 1Þ; ð0; 2Þ; ð1; 0Þ; ð1; 1Þ; ð1; 2Þ; ð2; 2Þ; ð2; 3Þ; ð3; 3Þ; ð3; 4Þ; ð4; 3Þ; ð4; 4Þg: Then R 1 and R 2 are inverse serial relations on U, and ðr 1 Þ s ð0þ ¼f0; 1; 2g; ðr 1 Þ s ð1þ ¼f2; 3g ¼ðR 1 Þ s ð2þ ¼ðR 1 Þ s ð3þ; ðr 1 Þ s ð4þ ¼f3; 4g; ðr 2 Þ s ð0þ ¼f0; 1; 2g ¼ðR 2 Þ s ð1þ; ðr 2 Þ s ð2þ ¼f2; 3g; ðr 2 Þ s ð3þ ¼f3; 4g ¼ðR 2 Þ s ð4þ: Hence S R1 ¼S R2, and T R1 ¼T R1. Recently, Fan and Pei [3] constructed a new topology on U based on a general relation on U. Theorem 3 [3]. Let R be a binary relation on U, and R s ðxþ ¼fxg[R sðxþ; T R ¼fAjð8x 2 AÞR sðxþ # Ag: Then T R is a topology on U. In the following subsections, we shall prove that the topology T R is finer than the topology T R, and give a condition under which the both are the same topology. 4.2. Topology vs reflexive rough sets For reflexive rough sets, we first review the following conclusion: Theorem 4 [7]. If R is a reflexive relation on U, then the family T K R ¼fA # Ujapr RðAÞ ¼Ag is a topology on U. It is obvious that the topology T K R is an Alexandrov topology on U. On relations between the three topologies T R ; T R and T K R, we have the following two theorems: Theorem 5. If R is reflexive then T K R # T R, that is, T R is finer than T K R. Proof. Suppose that A 2T K R, i.e., apr R(A)=A. In order to prove that A 2T R it suffices to prove that A ¼ [ fr s ðxþjx 2 Ag: Let B = S {R s (x)jx 2 A}. Since R is reflexive we have A # B. Conversely, for each x 2 B, there is y 2 A = apr R (A) such that x 2 R s (y). Since y 2 apr R (A) we have R s (y) # A, and this proves that x 2 A. h Remark 2. In the above theorem, T K R and T R are not equal in general since for each x, the equality apr R (R s (x)) = R s (x) does not necessarily hold. In fact, we only have the inclusion apr R (R s (x)) # R s (x). Theorem 7 shows that T R is finer than T K R. In the next section, we shall give a condition under which they are the same topology. Theorem 6. If the relation R is reflexive, then T R ¼TK R. Proof. When R is reflexive, R s ðxþ ¼R sðxþ for each x 2 U. To complete the proof, we only need to show that apr R (A)=A if and only if ("x 2 A)R s (x) # A for each A # U. In fact, according to property (L5) of the lower approximation operator, apr R (A)=A if and only if A # apr R (A), and if and only if for each x 2 A, R s (x) # A by the definition of the lower approximation operator. h This theorem shows that the topologies T R and T K R are the same topology for reflexive rough sets. As a direct corollary, we get the conclusion that T R is finer than T R if R is reflexive. To similarity rough sets, we mention the following results from Kondo [7]:

Z. Pei et al. / International Journal of Approximate Reasoning 52 (2011) 231 239 237 Theorem 7 [7]. Suppose that the relation R is a similarity relation, then the topology T K R is a clopen topology, i.e., each open set is also closed. Conversely, if a topology T on U is a clopen topology, then there exists a similarity relation R on U such that T ¼ T K R. This theorem shows that for similar rough sets, both the topologies T K R and T R are clopen topologies. Thus we can construct a bijection between the set of all similarity relations on U and the set of all clopen topologies on U. 4.3. Topology vs pre-order rough sets In the literatures, there have been some interesting results on the relation between topology and generalized rough sets when the relation R is a pre-order relation (see [2,5,8,36]). Theorem 8 [36]. (I) If R is a binary relation on U, then the following conditions are equivalent: (i) R is a pre-order relation; (ii) apr R is an interior operator on PðUÞ; (iii) apr R is a closure operator on PðUÞ. (II) Let ðu; TÞbe a topological space. Define R T # U 2 ; ðx; yþ 2R T iff x 2fyg ; ð3þ then R T is a pre-order relation on U, and apr R and apr R are the interior and closure operators with respect to T, respectively. It is obvious that if R is a pre-order relation, then the topologies determined by S R, apr R and apr R respectively are the same Alexandrov topology. In addition, based on Section 3, we can prove that the pre-order relation R given by (II) of Theorem 10 is unique. Theorem 9. If R is a pre-order relation on U then S R forms a base for some topology on U. Proof. In order to prove that S R forms a base for some topology on U, it is only necessary to prove that S R satisfies conditions (B1) and (B2) of Section 2. S R obviously satisfies the condition (B1) because R is a pre-order on U. Furthermore, for any R s ðxþ; R s ðyþ 2S R with R s (x) \ R s (y) ; and z 2 R s (x) \ R s (y), we have R s ðzþ 2S R and z 2 R s (z) # R s (x) \ R s (y) by the reflexivity and transitivity of R. This shows that S R satisfies (B2). h A natural problem arises: If R is an inverse serial relation on U, then T R is the unique topology on U determined by R according to Definition 3, and furthermore, R T R is the unique pre-order relation determined by the topology T R. It is meaningful to investigate relation between R and R T R. It seems that R T R is the pre-order closure of R, i.e., the smallest pre-order relation containing R. However, the answer to this problem is negative. In fact, the problem has been solved by the following theorem. Theorem 10 [3]. If R is an inverse serial relation on U, then R T R is the greatest pre-order relation included in R. On the other hand, we have proved the following result: Theorem 11 [3]. If R is a relation on U, then the relation R T induced by the topology T R R is the pre-order closure of R. According to Remark 2, generally speaking, for any reflexive relation R, T R and T K R (or, T R ) are different. However, when R is a pre-order relation on U, then all three topologies agree. Lemma 3. Let R be a pre-order relation on U. Then T R ¼T K R ¼T R. Proof. If R is a pre-order relation on U, then the conclusion follows whenever R s ðxþ 2T K R, i.e., apr R(R s (x)) = R s (x) for each x 2 U. It is only necessary to prove that R s (x) # apr R (R s (x)) for each x 2 U. In fact, if y 2 R s (x), then for each z 2 R s (y) we have z 2 R s (x) by the transitivity of R. This shows that R s (y) # R s (x) and y 2 apr R (R s (x)). h We have pointed earlier that two different inverse serial relations may induce the same topology. But this cannot happen in the case of pre-order relations, as is illustrated by the following propositions. Lemma 4. Let R 1 and R 2 be two pre-orders on U. Then (i) R 1 # R 2 if and only if T R2 # T R1 ; (ii) R 1 =R 2 if and only if T R1 ¼T R2.

238 Z. Pei et al. / International Journal of Approximate Reasoning 52 (2011) 231 239 Proof. Clearly, (ii) is a direct corollary of (i). We only prove (i). For the necessity, suppose that R 1 # R 2. In order to prove that T R2 # T R1, it is only necessary to prove that ðr 2 Þ s ðxþ 2T R1 for each x 2 U. In fact, we have (R 1 ) s (x) # (R 2 ) s (x) for each x 2 U. For each y 2 (R 2 ) s (x), since R 1 is transitive, we have ðr 1 Þ s ðyþ # ðr 1 Þ s ðxþ # ðr 2 Þ s ðxþ: Therefore, (R 2 ) s (x) is open in T R1, namely, ðr 2 Þ s ðxþ 2T R1. For the sufficiency, suppose that T R2 # T R1, then cl 1 (A) # cl 2 (A) for each A # U where cl i (A) is the closure of A with respect to the topology T Ri, i = 1,2. Therefore, if (x,y) 2 R 1, i.e., x 2 cl 1 (y), we have x 2 cl 2 (y), i.e., (x, y) 2 R 2. h Moreover, we have the following: Lemma 5. If R is a pre-order relation and T is an Alexandrov topology on U, then (i) R T R ¼ R; (ii) T RT ¼T. Proof. (i) is obvious by Lemma 4. For (ii), since both topologies T RT and T are induced by the pre-order relation R T. Hence they are the same Alexandrov topology. h Based on the above theorem, we can easily prove the following result: Theorem 12. The following mapping is a bijection from the set of all pre-order relations on U to the set of all Alexandrov topologies on U: f : R # T R : Moreover, the inverse mapping f 1 of f is f 1 : T # R T : Remark 3. Fan and Pei [3] gave a bijection between the set of all topologies satisfying the so-called (FC) condition and the set of all pre-order relations. This theorem gives a one one correspondence between the pre-order relation based rough sets and Alexandrov topological spaces. Moreover, if ðu; TÞis a Pawlak topological space, then there exists unique equivalence relation R on U such that T ¼ T R. Thus we can establish a close connection between the classical rough sets and Pawlak topologies. Also, R is an equivalence relation on U if and only if S R forms a partition base for some topology on U. As the end of this section, we can give basic properties of interior L = Int and closure operators H = Cl of various topological spaces corresponding to relation based rough sets. Indeed, these properties have been list in Propositions 1 and 2. For convenience, we shall list these properties in Table 1. 5. Summary and conclusions The following table gives a summary of relations between generalized rough sets and topology (where R* is the largest pre-order relation included in R). In the above table the abbreviations ISR, SR, POR and ER stand for inverse serial relation, similarity relation, pre-order relation and equivalent relation respectively, and Int and Cl stand for the interior and closure operators of the corresponding topological spaces respectively. Topology is a powerful mathematical tool to many applied areas such as computer science (see [28]), fuzzy set theory (see [5]) and rough set theory (see [25]). In this paper we gave a detailed discussion of relation between rough set theory and topology. First, in the relation based rough set theory, we proved the uniqueness of binary relation determined by the socalled algebraic method. Then, we mainly considered three classes of rough set theories induced by inverse serial binary relations, reflexive relations and pre-order relations respectively, and investigated connections between these rough set theories Table 1 Correspondence between relations and topologies. R S R T R Int Cl R T R ISR Subbase Topology L0 L2, L3 U0 U2, U3 R* SR Subbase Clopen topology L0 L2, L5, L6 U0 U2, U5, U6 R* POR Base Alexandrov topology L0 L2, L5, L7 U0 U2, U5, U7 R ER Partition base Pawlak topology L0 L2, L5 L7 U0 U2, U5 U7 R

Z. Pei et al. / International Journal of Approximate Reasoning 52 (2011) 231 239 239 and topology. We used the fact that the inverse serial relation based rough set theory is the most basic theory to induce a topology to show a mistake existing in a related literature. Another basic fact is that different relation based generalized rough set models induce different topological spaces. We proved that two interesting topologies corresponding to reflexive relation based rough set model given recently by the literatures are different, and gave a condition under which the both are the same topology. Furthermore we showed that for the pre-order relation based rough set theory three known topologies coincide. Some correspondences between generalized rough sets and topology are shown. There are still some interesting problems which need be further discussed. For example, how to find the concrete form of topology induced by inverse serial relations is a good topic to investigate. 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