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Hedge accounting: results and opportunities for future studies

  • This study identifies the main results and research opportunities based on 52 hedge accounting-related studies, published in Scopus indexing journals from 2007-2019. The study was classified in five investigation groups based on their main topic, with Risk Management and Hedge Accounting being the topic most studied (18) and Regulatory Environment the least studied (six). The results show that during the period analysed, the journal with the largest number of publications on hedge accounting is in the United States of American and the most common origin of the journals is the United Kingdom (21). We have identified different research opportunities for each of the five groups and some general opportunities. The main opportunities relate to comparatives researches, considering samples from different countries, the development of methodologies for teaching hedge accounting and models for effectiveness measurement, the study of enterprise risk and disclosure analysis, and research on the impact of Covid-19 on hedge accounting through risk management. The study differs by identifying five classification groups for papers on hedge accounting, since prior studies didn't carry out such classification. The groups are: i) Regulatory Environment, ii) Academic Research, iii) Evolution of Hedge Accounting and Disclosure, iv) Hedge Effectiveness and v) Risk Management and Hedge Accounting. Furthermore, this study is, to our knowledge, the first bibliometric review done about hedge accounting. The paper is relevant to researchers because it points out opportunities for future studies, enabling the production of new research for a topic considered to be complex.

    Citation: Geovane Camilo dos Santos, Pablo Zambra A., Jose Angel Perez Lopez. Hedge accounting: results and opportunities for future studies[J]. National Accounting Review, 2022, 4(2): 74-94. doi: 10.3934/NAR.2022005

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  • This study identifies the main results and research opportunities based on 52 hedge accounting-related studies, published in Scopus indexing journals from 2007-2019. The study was classified in five investigation groups based on their main topic, with Risk Management and Hedge Accounting being the topic most studied (18) and Regulatory Environment the least studied (six). The results show that during the period analysed, the journal with the largest number of publications on hedge accounting is in the United States of American and the most common origin of the journals is the United Kingdom (21). We have identified different research opportunities for each of the five groups and some general opportunities. The main opportunities relate to comparatives researches, considering samples from different countries, the development of methodologies for teaching hedge accounting and models for effectiveness measurement, the study of enterprise risk and disclosure analysis, and research on the impact of Covid-19 on hedge accounting through risk management. The study differs by identifying five classification groups for papers on hedge accounting, since prior studies didn't carry out such classification. The groups are: i) Regulatory Environment, ii) Academic Research, iii) Evolution of Hedge Accounting and Disclosure, iv) Hedge Effectiveness and v) Risk Management and Hedge Accounting. Furthermore, this study is, to our knowledge, the first bibliometric review done about hedge accounting. The paper is relevant to researchers because it points out opportunities for future studies, enabling the production of new research for a topic considered to be complex.



    1. Introduction

    Multilevel programming deals with decision-making situations in which decision makers are arranged within a hierarchical structure. Trilevel programming, the case of multilevel programming containing three planner, occurs in a variety of applications such as planning [6,7], security and accident management [1,18], supply chain management [14,17], economics, [10] and decentralized inventory [9]. In a trilevel decision-making process, the first-level planner (leader), in attempting to optimize his objective function, chooses values for the variables that he controls. Next, the second-level planner in attempting to optimize his objective function while considering the reactions of the third-level planner chooses values for the variables that he controls. Lastly, the third-level planner, with regard to the decisions made by the previous levels, optimizes his own objective function. A number of researchers have studied the linear trilevel programming (LTLP) problem, and have proposed some procedures to solve it. Some algorithms are proposed based on penalty method [16], Kuhn-Tucker transformation [2], multi-parametric approach [5], and enumerating extreme points of constraint region [19] to find the exact optimal solution to special classes of trilevel programming problem. In addition, because of the complexity of solving trilevel problems especially for large-scale problems, some other researches attempted to use fuzzy [13] and meta-heuristic approaches [8,15] to find good approximate solutions for these problems. For a good bibliography of the solution approaches to solve trilevel programming problems, the interested reader can refer to [11].

    The present study investigates the trilevel Kth-best algorithm offered by Zhang et. al. [19] at a higher level of accuracy. First, some of the geometric properties of the feasible region of the LTLP problem have been stated and proven. It ought to be mentioned that despite the similarity of some presented theoretical results in this paper with Ref. [19], the techniques of the proof are different. Then, a modified version of the trilevel Kth-Best algorithm has been proposed regarding unboundedness of objective functions in both the second level and third level which is not considered in the proposed Kth-Best algorithm in reference [19]. Moreover, it is shown that the amount of computations in the solving process by the modified trilevel Kth-Best algorithm is less than of that of the solving process by the traditional trilevel Kth-Best algorithm. In addition, in case of finding the optimal solution of linear trilevel programming problems with conflicting objective functions, the modified Kth-Best algorithm is capable of giving more accurate solutions.

    The organization of the paper is as follows. Basic definitions concerning LTLP problem that we shall investigate, are presented in Section 2. Some theoretical and geometric properties of the LTLP problem are studied in Section 3. Based on the facts stated in Section 3, a modified trilevel Kth-Best algorithm is proposed to solve the LTLP problem in Section 4. To show the superiority of the proposed algorithm over the traditional Kth-Best algorithm, some numerical examples are presented in Section 5. Ultimately, the paper is concluded with Section 6.


    2. Basic definitions of linear trilevel programming problem

    As it is mentioned before, we consider the linear trilevel programming problem which can be formulated as follows:

    minx1X1f1(x1,x2,x3)=3j=1αT1jxjs.t3j=1A1jxjb1where x2,x3 solve:minx2X2f2(x1,x2,x3)=3j=1αT2jxjs.t3j=1A2jxjb2where x3 solves:minx3X3f3(x1,x2,x3)=3j=1αT3jxjs.t3j=1A3jxjb3 (2.1)

    where xiXi, Xi is an indiscrete subset of Rni+ for i=1,2,3 and αij,Aij,bi are vectors and matrices of conformal dimensions.

    In this section, we state some definitions and notations about the LTLP problem.

    ● Constraint region:

    S={(x1,x2,x3)X1×X2×X3:3j=1Aijxjbi,  i=1,2,3}.

    ● Constraint region for middle and bottom level, for fixed ˉx1:

    S2(ˉx1)={(x2,x3)X2×X3:3j=2AijxjbiAi1ˉx1,  i=2,3}.

    ● Feasible set for the level 3, for fixed (ˉx1,ˉx2) :

    Ω3(ˉx1,ˉx2)={x3X3:A33x3b32j=1A3jˉxj}.

    ● Rational reaction set for level 3, for fixed (ˉx1,ˉx2) :

    Ψ3(ˉx1,ˉx2)=argmin{f3(ˉx1,ˉx2,x3):x3Ω3(ˉx1,ˉx2)}.

    ● Feasible set for level 2, for fixed ˉx1:

    Ω2(ˉx1)={(x2,x3)S2(ˉx1):x3Ψ3(ˉx1,x2)}.

    ● Rational reaction set for level 2, for fixed ˉx1:

    Ψ2(ˉx1)=argmin{f2(ˉx1,x2,x3):(x2,x3)Ω2(ˉx1)}.

    ● Inducible region :

    IR={(x1,x2,x3)S:(x2,x3)Ψ2(x1)}.

    In the above definitions, the term argmin{f(x):xS} denotes the set of all minimizers of the function f over the set S. Now we can express the definition of the feasible solution and optimal solution to the LTLP problem as follows:

    Definition 2.1. A point (x1,x2,x3) is said to be feasible solution to the LTLP problem (2.1) if (x1,x2,x3)IR.

    Definition 2.2. A feasible point (x1,x2,x3) is said to be optimal solution to the LTLP problem (2.1) if f1(x1,x2,x3)f1(x1,x2,x3), for all (x1,x3,x3)IR.

    In view of the above Definitions, determining the solution for the LTLP problem (2.1) is equal to solve the following problem:

    min{f1(x1,x2,x3):(x1,x2,x3)IR}. (2.2)

    3. Theoretical properties

    In this section, we will demonstrate some geometric properties of the problem (2.1). Let F1,...,Fr, denote the non-empty faces of S. We will denote by SXi and SXi×Xj the projection of S onto Xi and Xi×Xj respectively, for 1i,j3. We will also use the following assumptions to come up with the existence of an optimal solution.

    Assumption 3.1. S is a non-empty and compact polyhedron.

    Assumption 3.2. Ψ2(x1) and Ψ3(x1,x2), are non-empty and single-valued for all x1SX1 and (x1,x2)SX1×X2 respectively.

    Assumption 3.3. Ψ2(.) is continuous on SX1.

    Note that by Assumption 3.1, we can conclude that SXi, and SXi×Xj, for i,j{1,2,3}, and Fk for  k{1,...,r} are also non-empty compact polyhedrons. The following example demonstrates that Assumption 3.3 is necessary for existence an optimal solution to the LTLP problem.

    Example 3.1.

    maxx1x1+10x22x3+x4s.t0x11maxx2,x3x2+2x3s.tx2+x3x10x2,x31x4=0maxx4x4s.tx4x3x41x3

    In this example, we have

    Ψ3(x1,x2,x3)={x3  if  0x312,1x3  if 12x31.

    Then,

    Ω2(x1)={(x2,x3,x4):x2+x3x1,0x21,0x312,x4=x3=0}

    {(x2,x3,x4):x2+x3x1,0x21,12x31,x4=1x3=0},

    and

    Ψ2(x1)=argmax{x2+2x3:(x2,x3,x4)Ω2(x1)} (3.1)

    It is clear that if 0x1<1, the optimal solution of the problem (3.1) is (x1,0,0), and if x1=1, the optimal solution is (0,1,0). Therefore,

    Ψ2(x1)={(x1,0,0)  if0x1<1(0,1,0)  ifx1=1

    It is evident that Ψ2 is discontinuous at x1=1. Although, in this problem, the first level objective function has the supremum value equal to 11 when we approach the point (1,1,0,0), but the problem does not have an optimal solution.

    Lemma 3.1. Let N={(ˉx1,x2,x3):(x2,x3)S2(ˉx1)} and (ˉx1,ˉx2,ˉx3)ri FIR where F is a non-empty face of S, then FN={(ˉx1,ˉx2,ˉx3)}. The term ri F denotes the relative interior of F.

    Proof. It follows from (ˉx1,ˉx2,ˉx3)IR that (ˉx2,ˉx3)Ψ2(ˉx1). Moreover, Ψ2(ˉx1) is nonempty and single-valued. Therefore, (ˉx2,ˉx3) is the unique optimal solution of the following linear bilevel programming problem:

    minx203j=2αT2jxjs.t3j=2A2jxjb2A21ˉx1where x3 solves:minx303j=2αT3jxjs.t3j=2A3jxjb3A31ˉx1 (3.2)

    By Theorem 5.2.2 of [3] we conclude that (ˉx2,ˉx3) is an extreme point of S2(ˉx1). Now let (˜x2,˜x3) be another point of the S2(ˉx1) and (ˉx1,˜x2,˜x3) belongs to FN.

    Since (ˉx1,ˉx2,ˉx3)ri F and (ˉx1,˜x2,˜x3)F, there exists a γ>1 such that

    (ˉx1,ˆx2,ˆx3)=γ(ˉx1,ˉx2,ˉx3)+(1γ)(ˉx1,˜x2,˜x3)F (Theorem 6.4 of [12]). If we set β=γ1γ, then, 0<β<1 and (ˉx1,ˉx2,ˉx3) can be written as:

    (ˉx1,ˉx2,ˉx3)=β(ˉx1,˜x2,˜x3)+(1β)(ˉx1,ˆx2,ˆx3).

    Thus, it can be concluded that (ˉx2,ˉx3)=β(˜x2,˜x3)+(1β)(ˆx2,ˆx3). In addition, it can be clearly seen that (˜x2,˜x3) and (ˆx2,ˆx3) are belong to S2(ˉx1), which contradicts the fact that (ˉx2,ˉx3) is an extreme point of S2(ˉx1). This completes the proof.

    Corollary 3.1. Let ˉN={(ˉx1,x2,x3):(ˉx1,x2,x3)S} and (ˉx1,ˉx2,ˉx3)ri FIR where F is a non-empty face of S . Then FˉN={(ˉx1,ˉx2,ˉx3)}.

    Proof. The statement is immediately derived from the fact that

     ˉN{(ˉx1,x2,x3):(x2,x3)S2(ˉx1)}

    Theorem 3.1. Let IRri F where F is a non-empty face of S. Then, FIR.

    Proof. Let (ˆx1,ˆx2,ˆx3)IRri F and let (ˉx1,ˉx2,ˉx3)F be arbitrary. Since (ˆx1,ˆx2,ˆx3)ri F, we can find a neighborhood ˆN around it such that

    N=ˆNaff Fri F, where aff F denotes the affine hull of face F. Since Ψ2 is a single-valued and continuous map over SX1, we can find a neighborhood W around ˆx such that:

    {(x,Ψ2(x)): xW}Nri F.

    Moreover, we can choose 0<γ1<1 such that

    B={x1SX1:x1=γˉx1+(1γ)ˆx1, 0γγ1}W. Then,

    {(x1,Ψ2(x1)):x1B}Nri F.

    Besides, for all β[0,1),

    β(ˉx1,ˉx2,ˉx3)+(1β)(ˆx1,ˆx2,ˆx3)ri F, (see Ref. [12], Theorem 6.1).

    Consequently, from Corollary 3.1, it can be concluded that:

    γ(ˉx2,ˉx3)+(1γ)(ˆx2,ˆx3)=Ψ2(γˉx1+(1γ)ˆx), for all 0γγ1.

    In addition, γ(ˉx1,ˉx2,ˉx3)+(1γ)(ˆx1,ˆx2,ˆx3)ri FS. Therefore,

    γ(ˉx1,ˉx2,ˉx3)+(1γ)(ˆx1,ˆx2,ˆx3)IR, for all 0γγ1,

    Eventually,

    (˜x1,˜y1,˜z1)=γ1(ˉx1,ˉx2,ˉx3)+(1γ1)(ˆx1,ˆx2,ˆx3)IRri F.

    If we repeat the process, we can construct from (˜x1,˜y1,˜z1) a new point called (˜x2,˜y2,˜z2)IRri F which lies along the line segment among (ˉx1,ˉx2,ˉx3) and (˜x1,˜y1,˜z1).

    Therefore, we approach point (ˉx1,ˉx2,ˉx3) along the line segment among (ˉx1,ˉx2,ˉx3) and (ˆx1,ˆx2,ˆx3), by the points which are belongs to IR and so by the continuity of Ψ2, it can be concluded that (ˉx1,ˉx2,ˉx3)IR and this completes the proof.

    Corollary 3.2. The inducible region of the LTLP problem can be written as the union of some faces of S that are not necessarily connected.

    Corollary 3.3. If IR, an optimal solution to the LTLP problem occurs at a vertex of IR and hence, at a vertex of S.

    Proof. Notice that the problem (2.2) can be written equivalently as

    min{f1(x1,x2,x3):(x1,x2,x3)conv IR} (3.3)

    where conv IR denotes the convex hull of IR. It is clear that there exists a solution to the problem (3.3) which is a vertex of conv IR [4]. Although, conv IR and IR are different sets their vertices are the same. Moreover, by Corollary 3.2, IR is formed from the union of some faces of S. Therefore, the vertices of IR (and conv IR) are also the vertices of S and this fact completes the proof.

    Through the above results, it has been demonstrated that there exists at least a vertex of S which solves the problem (2.1). This fact allows us to develop enumerative algorithms which search amongst extreme points of the constraint region to solve the LTLP problem.


    4. Modified trilevel Kth-Best algorithm

    In this section, the modified trilevel Kth-Best algorithm is presented. In actual, the modified algorithm takes into account LTLP problems with unbounded middle and bottom level problems. These cases are not considered in the Kth-Best algorithm [19]. Also, it resolves some of drawbacks while finding an optimal solution for LTLP problems with opposing objectives. Moreover, in the next section, it is shown that in some LTLP problems, the proposed algorithm leads to reduction the amount of computations needed for finding an optimal solution.

    The process of the modified trilevel Kth-Best algorithm is as follows:

    The Algorithm

    Step 1. Initialization: Set k1, W=T=W. Go to Step 2

    Step 2. Find the optimal solution of the optimization problem (4.1). Let it be (x[1]1,x[1]2,x[1]3) and go to Step 3.

    min{f1(x1,x2,x3):(x1,x2,x3)S} (4.1)

    Step 3. Solve the following problem.

    min{αT3 3x3:x3Ω3(x[k]1,x[k]2)}. (4.2)

    If the problem (4.2) is unbounded go to step 7, else let x3 be the optimal solution and go to Step 4.

    Step 4. If x[k]3=x3, go to step 5 else go to step 7. [If x[k]3=x3 then x[k]3Ψ3(x[k]1,x[k]2).]

    Step 5. Solve the following problem.

    min{αT2 2x2+αT2 3x3:(x2,x3)S2(x[k]1),x3=x[k]3}. (4.3)

    If problem (4.3) is unbounded go to step 7, else let x2 be the optimal solution and go to step 6.

    Step 6. If x[k]2=x2, then (x[k]2,x[k]3)Ψ2(x[k]1) and (x[k]1,x[k]2,x[k]3) is the optimal solution, exit. Else go to Step 7.

    Step 7. Set kk+1 and TT(x[k]1,x[k]2,x[k]3). Let W be the adjacent extreme points set of current extreme point i.e., (x[k]1,x[k]2,x[k]3). Set WWWT. Go to Step 8

    Step 8. If W= there is no optimal solution, exit. Else let (x[k]1,x[k]2,x[k]3) be the point with the smallest value in W with respect to f1, go to step 3.

    Figure 1 illustrates the process of modified trilevel Kth-Best algorithm.

    Figure 1. Modified Kth-Best algorithm.

    Remark 4.1. It is clear that if IR and Assumption 3.3 is valid, the LTLP problem has an optimal solution. However, in spite of the fact that the constraint region S is bounded, the middle-level problem or the bottom level problem may be unbounded. In these cases, we have Ψ2(x1)= for all x1SX1 or Ψ3(x1,x2)= for all (x1,x2)SX1×X2. Hence, the inducible region will be empty set and consequently, the LTLP problem has no optimal solution. We have considered this case in the modified trilevel kth-Best algorithm. Indeed, when the optimality of the candidate vertex is examined, the unboundedness of the middle level or the bottom level problems are also inspected in step 3 and step 5. Eventually, if the middle-level or the bottom-level problem is unbounded, after the finite number of iterations (at most equal to the number of extreme points), the algorithm will terminate with the result that the trilevel programming problem has no optimal solution.

    Proposition 4.1. Let the LTLP problem (2.1) has an optimal solution. Then the modified trilevel Kth-Best algorithm will terminate with an optimal solution of LTLP problem in a finite number of iterations.

    Proof. Let (x[k]1,x[k]2,x[k]3) be the terminated point. The termination condition in Step 6 of the algorithm is equal to the fact that (x[k]1,x[k]2,x[k]3) belongs to the inducible region. Moreover, according to the algorithm procedure, we know that (x[k]1,x[k]2,x[k]3) is the optimal solution of the following problem:

    min{f1(x1,x2,x3):(x1,x2,x3)Sk1i=1(x[i]1,x[i]2,x[i]3)}, (Theorem 2.3.4 of [3]). Therefore if termination occurs, this point has the smallest value between the points of IR with respect to f1.

    It is worth mentioning that, by omitting the examined extreme points from W, the cycling is prevented. Moreover, since the extreme points of the constraint region are finite, the algorithm will terminate after a finite number of iterations.


    5. Numerical examples

    To illustrate the advantages of the modified trilevel Kth-Best algorithm, the following examples are solved according to the outline indicated in the previous section.

    Example 5.1. Consider the following LTLP problem:

    minx12x1+2x2+5x3x18x25 where x2,x3 solve:maxx26x1+x23x3x1+x28x1+4x287x12x20 where x3 solves:minx32x1+x22x35x1+5x2+14x340x1,x2,x30

    In this example, we have Ψ3(x1,x2)=114(405x15x2) for all 0x1,x28, x1+x28. Moreover,

    Ψ2(x1)={(72x1,114(40452x1)):815x1169}{(8x1,0):169x18}.

    It is clear that for 107x1169, we have 72x1>5 and for 169x1<3, we have 8x1>5. So, neither S nor IR include the following set:

    {(x1,72x1,114(40452x1):107<x1169}{(x1,8x1,0):169x1<3}.

    Actually,

    IR={(x1,72x1,114(40452x1):815x1107}{(x1,8x1,0):3x18}

    which is disconnected. This fact shows that despite the continuity of Ψ2, the inducible region is disconnected. The hatched lines at Figure 2 represent the inducible region.

    Figure 2. Disconnected Inducible Region.

    By Corollary 3.3, an optimal solution of the above example occurs at the point (815,2815,2).

    To solve the example by the modified trilevel Kth-Best algorithm, the process is as follows:

    Iteration 1

    1. (x[1]1,x[1]2,x[1]3)=(815,2815,0).

    2. x3=2x[1]3

    3. T={(815,2815,0)}.

    4. W={(8,0,0),(107,5,0),(815,2815,2)}.

    Iteration 2

    1. (x[2]1,x[2]2,x[2]3)=(107,5,0).

    2. x3=5598x[2]3

    3. T={(815,2815,0),(107,5,0)}.

    4. W={(8,0,0),(107,5,5598),(815,2815,2),(3,5,0)}.

    Iteration 3

    1. (x[3]1,x[3]2,x[3]3)=(815,2815,2).

    2. x3=2=x[3]3

    3. x2=2815=x[3]2

    4. The point (x[3]1,x[3]2,x[3]3)=(815,2815,2) is the optimal solution.

    As demonstrated in the solving process of this problem, although the number of iterations and the optimal solution found by the two algorithms are the same, the number of optimization problems needed to be solved in each iteration of the Kth-Best algorithm [19] are more than the number of optimization problems needed to be solved in the modified Kth-Best algorithm. Then the amount of computations in each iteration of the modified Kth-Best algorithm is less than that of the corresponding iteration in the Kth-Best algorithm..

    The two following examples show some discrepancies in the Kth-Best algorithm [19] that cause an erroneous result.

    Example 5.2.

    minxf1(x,y,z)=x4z+2ywhere y, z soleve:s.tminyf2(x,y,z)=3y2zwhere z solves:s.tminzf3(x,y,z)=2zys.tx+y+z20x,y,z1

    In this example, we have IR={(x,0,0):0x1}. The constraint region and inducible region are shown in Figure 3 by gray area and hatched line, respectively. It is easy to see that the constraint region is a compact set and lower levels reaction sets are single-valued. Therefore, all the assumptions of the trilevel Kth-Best algorithm [19] hold.

    Figure 3. IR and constraint region of Example 5.2.

    The Kth-Best algorithm process [19] for solving this problem is as follows:

    Iteration 1 : (x[1],y[1],z[1])=(1,0,1), (y[1],z[1])=(0,1), z[1]=0 and z[1]z[1].

    Therefore, (x[1],y[1],z[1])=(1,0,1) is not the optimal solution of the LTLP problem and we have to find the next best adjacent extreme point.

    Iteration 2 : (x[2],y[2],z[2])=(0,0,1), (y[2],z[2])=(0,1), z[2]=0. Since z[2]z[2], then this point is not the optimal solution either. Following the algorithm, at iteration 7, we obtain:

    Iteration 7 : (x[7],y[7],z[7])=(0,1,0). This is the last accessible extreme point which should be examined. At this iteration, we have (y[7],z[7])=(0,1) and since z[7]z[7], this point is not the optimal solution either. Therefore, the trilevel Kth-Best algorithm [19] fails to find an optimal solution to this problem.

    By solving the example via the modified trilevel Kth-Best algorithm, the process is as follows:

    Iteration 1

    1. (x[1],y[1],z[1])=(1,0,1).

    2. z=0z[1]

    3. W={(0,0,1),(0,1,1),(1,0,0),(1,1,0)}.

    Iteration 2

    1. (x[2],y[2],z[2])=(0,0,1)

    2. z=0z[2]

    3. W={(0,1,1),(1,0,0),(0,0,0),(1,1,0)}

    Continuing this method, at iteration 4 we get:

    (x[4],y[4],z[4])=(1,0,0), z=0 and y=0. Therefore, the point (1,0,0) is the optimal solution which is equal to the solution obtained by the multi-parametric approach [5].

    Note that, in the trilevel Kth-Best algorithm [19], the bottom-level optimal solution which is found for some fixed values of upper and middle-level variables, is not considered as a constraint for the second level problem. This causes the Kth-best algorithm is not capable of finding an optimal solution for some LTLP problems. This fact is considered in step 5 of the modified trilevel Kth-Best algorithm by fixing the lower level variable which is found as the optimal solution of problem (4.2) and substituting it in the problem (4.3).

    Example 5.3.

    minx1x14x2+2x3x1x233x1+2x2x310where x2,x3 solve:minx2x1+x2x32x1+x22x312x1+x2+4x314where x3 solves:minx3x12x22x32x1x2x32x1,x2,x30 (5.1)

    The process of the modified trilevel Kth-Best algorithm to solve this problem is as follows:

    Iteration 1

    1. (x[1]1,x[1]2,x[1]3)=(3.75,6.5,0).

    2. The bottom level problem corresponding to (x1,x2)=(3.75,6.5) is unbounded.

    3. T={(3.75,6.5,0)}.

    4. W={(4,6,0),(43,53,0),(0,4,2.5)}.

    5. W=W.

    Iteration 2

    1. (x[2]1,x[2]2,x[2]3)=(4,6,0).

    2. The bottom level problem corresponding to (x1,x2)=(4,6) is unbounded.

    3. T={(3.75,6.5,0),(4,6,0)}.

    4. W={(3.75,6.5,0),(53,43,0),(3113,813,2813)}.

    5. W={(43,53,0),(0,4,2.5),(53,43,0),(3113,813,2813)}.

    Iteration 3

    1. (x[3]1,x[3]2,x[3]3)=(0,4,2.5).

    2. The bottom level problem corresponding to (x1,x2)=(0,4) is unbounded.

    3. T={(3.75,6.5,0),(4,6,0),(0,4,2.5)}.

    4. W={(0,3,2.75),(0,3,2),(3.75,6.5,0)}

    5. W={(43,53,0),(0,3,2),(53,43,0),(3113,813,2813),(0,3,2.75)}.

    Iteration 4

    1. (x[4]1,x[4]2,x[4]3)=(0,3,2).

    2. The bottom level problem corresponding to (x1,x2)=(0,3) is unbounded.

    3. T={(3.75,6.5,0),(4,6,0),(0,4,2.5),(0,3,2)}.

    4. W={(0,4,2.5),(0,3,2.75)}.

    5. W={(43,53,0),(53,43,0),(3113,813,2813),(0,3,2.75)}.

    Iteration 5

    1. (x[5]1,x[5]2,x[5]3)=(0,3,2.75).

    2. The bottom level problem corresponding to (x1,x2)=(0,3) is unbounded.

    3. T={(3.75,6.5,0),(4,6,0),(0,4,2.5),(0,3,2),(0,3,2.75)}.

    4. W={(0,3,2),(0,4,2.5),(3113,813,2813)}.

    5. W={(43,53,0),(53,43,0),(3113,813,2813)}.

    Iteration 6

    1. (x[6]1,x[6]2,x[6]3)=(43,53,0).

    2. The bottom level problem corresponding to (x1,x2)=(43,53) is unbounded.

    3. T={(3.75,6.5,0),(4,6,0),(0,4,2.5),(0,3,2),(0,3,2.75),(43,53,0)}.

    4. W={(3.75,6.5,0),(53,43,0)(0,3,2)}.

    5. W={(53,43,0),(3113,813,2813)}.

    Iteration 7

    1. (x[7]1,x[7]2,x[7]3)=(53,43,0).

    2. The bottom level problem corresponding to (x1,x2)=(53,43) is unbounded.

    . T={(3.75,6.5,0),(4,6,0),(0,4,2.5),(0,3,2),(0,3,2.75),(43,53,0),(53,43,0)}.

    4. W={(4,6,0),(3113,813,2813),(43,53,0)}.

    5. W={(3113,813,2813)}.

    Iteration 8

    1. (x[8]1,x[8]2,x[8]3)=(3113,813,2813).

    2. The bottom level problem corresponding to (x1,x2)=(3113,813) is unbounded.

    3. T={(3.75,6.5,0),(4,6,0),(0,4,2.5),(0,3,2),(0,3,2.75),(43,53,0),(53,43,0),(3113,813,2813)}.

    4. W=.

    5. There is no optimal solution.

    In the above example, the constraint region is a bounded polyhedron. Let (x1,x2)SX1,X2 be chosen arbitrarily. To find the mapping Ψ3(x1,x2), the following parametric linear programming should be solved:

    minx3x12x22x32x1x2x32x1=x1 , x2=x2 , x30 (5.2)

    It is easy to see that the problem (5.2) is unbounded. Therefore, Ψ3(x1,x2)= for all (x1,x2)SX1,X2. Consequently, IR is also empty and the problem (5.1) does not have any feasible solution and so any optimal solution. The constraint region is represented at Figure 4. Therefore, the modified trilevel Kth-Best algorithm concludes that the problem does not have an optimal solution, while the trilevel Kth-Best algorithm [19] has obtained the point (4,6,0) as the optimal solution ([19], section 5.1) which is incorrect.

    Figure 4. An empty inducible region.

    6. Conclusion

    In this study, the linear trilevel programming problem whereby each planner has his (her) own constraints, was considered. Some geometric properties of the inducible region were discussed. Under certain assumptions, it is proved that if the inducible region is non-empty, then it is composed of the union of some non-empty faces of the constraint region S and at least an optimal solution occurs at an extreme point of IR which is also an extreme point of S. Then, we proposed a modified trilevel Kth-Best algorithm to find an optimal solution. Finally, we presented some numerical examples to highlight some discrepancies between the modified trilevel Kth-Best algorithm and the trilevel Kth-Best algorithm.


    Conflict of Interest

    The authors declare no conflict of interest in this paper.




    [1] Aabo T, Hansen MA, Muradoglu YG (2015) Foreign Debt Usage in Non-Financial Firms: A Horse Race between Operating and Accounting Exposure Hedging. Eur Financ Manag 21: 590-611. https://doi.org/10.1111/j.1468-036X.2013.12032.x doi: 10.1111/j.1468-036X.2013.12032.x
    [2] Abdel-khalik AR, Chen PC (2015) Growth in financial derivatives: The public policy and accounting incentives. J Account Public Pol 34: 291-318. https://doi.org/10.1016/j.jaccpubpol.2015.01.002 doi: 10.1016/j.jaccpubpol.2015.01.002
    [3] Abdullah A, Ismail KNIK (2016) The effectiveness of risk management committee and hedge accounting practices in Malaysia. Inform J 19: 2971-2976. https://doi.org/10.31235/osf.io/89cbp doi: 10.31235/osf.io/89cbp
    [4] Allayannis G, Weston JP (2001) The use of foreign currency derivatives and firm market value. Rev Financ Stud 14: 243-276. https://doi.org/10.1093/rfs/14.1.243 doi: 10.1093/rfs/14.1.243
    [5] Beatty A, Petacchi R, Zhang H (2012) Hedge commitments and agency costs of debt: Evidence from interest rate protection covenants and accounting conservatism. Rev Account Stud 17: 700-738. https://doi.org/10.1007/s11142-012-9189-4 doi: 10.1007/s11142-012-9189-4
    [6] Beneda N (2013) The impact of hedging with derivative instruments on reported earnings volatility. Appl Financ Econ 23: 165-179. https://doi.org/10.1080/09603107.2012.709599 doi: 10.1080/09603107.2012.709599
    [7] Bleck A, Liu X (2007) Market Transparency and the Accounting Regime. J Account Res 45: 229-256. https://doi.org/10.1111/j.1475-679X.2007.00231.x doi: 10.1111/j.1475-679X.2007.00231.x
    [8] Bratten B, Causholli M, Khan U (2016) Usefulness of fair values for predicting banks' future earnings: evidence from other comprehensive income and its components. Rev Account Stud 21: 280-315. https://doi.org/10.1007/s11142-015-9346-7 doi: 10.1007/s11142-015-9346-7
    [9] Cameran M, Perotti P (2014) Audit fees and IAS/IFRS adoption: Evidence from the banking industry. Int J Audit 18: 155-169. https://doi.org/10.1111/ijau.12019 doi: 10.1111/ijau.12019
    [10] Camfferman K (2015) The Emergence of the 'Incurred-Loss' Model for Credit Losses in IAS 39. Account Europe 12: 1-35. https://doi.org/10.1080/17449480.2015.1012526 doi: 10.1080/17449480.2015.1012526
    [11] Campbell JL (2015) The fair value of cash flow hedges, future profitability, and stock returns. Contemp Account Res 32: 243-279. https://doi.org/10.1111/1911-3846.12069 doi: 10.1111/1911-3846.12069
    [12] Campbell JL, Downes JF, Schwartz WC (2015) Do sophisticated investors use the information provided by the fair value of cash flow hedges? Rev Account Stud 20: 934-975. https://doi.org/10.1007/s11142-015-9318-y doi: 10.1007/s11142-015-9318-y
    [13] Campbell JL, Mauler LM, Pierce SR (2019) A review of derivatives research in accounting and suggestions for future work. J Account Lit 42: 44-60. https://doi.org/10.1016/j.acclit.2019.02.001 doi: 10.1016/j.acclit.2019.02.001
    [14] Chang YL, Liu CC, Ryan SG (2018) Accounting Policy Choice During the Financial Crisis: Evidence From Adoption of the Fair Value Option. J Account Audit Financ 36: 108-141. https://doi.org/10.1177/0148558X18793970 doi: 10.1177/0148558X18793970
    [15] Cheong CWH (2018) The Islamic gold dinar: a hedge against exchange rate volatility. Manag Financ 44: 722-738. https://doi.org/10.1108/MF-12-2016-0351 doi: 10.1108/MF-12-2016-0351
    [16] Choi JJ, Mao CX, Upadhyay AD (2015) Earnings management and derivative hedging with fair valuation: Evidence from the effects of FAS 133. Account Rev 90: 1437-1467. https://doi.org/10.2308/accr-50972 doi: 10.2308/accr-50972
    [17] Deloitte (2018) NIIF 9 Instrumentos financieros. Available from: https://www2.deloitte.com/content/dam/Deloitte/cr/Documents/audit/documentos/niif-2019/NIIF%209%20-%20Instrumentos%20Financieros.pdf.
    [18] Di Clemente A (2015) Hedge accounting and risk management: An advanced prospective model for testing hedge effectiveness. Econ Notes 44: 29-55. https://doi.org/10.1111/ecno.12029 doi: 10.1111/ecno.12029
    [19] Dionne G, Chun OM, Triki T (2019) The governance of risk management: The importance of directors' independence and financial knowledge. Risk Manag Insur Rev 22: 247-277. https://doi.org/10.1111/rmir.12129 doi: 10.1111/rmir.12129
    [20] Duangploy O, Helmi D (2000) Foreign currency hedge accounting: multi-currency versus functional currency accounting. Manag Audit J 15: 232-246. https://doi.org/10.1108/02686900010339364 doi: 10.1108/02686900010339364
    [21] Duh RR, Hsu AW, Alves PAP (2012) The impact of IAS 39 on the risk-relevance of earnings volatility: Evidence from foreign banks cross-listed in the USA. Econ J Contemp Account 8: 23-38. https://doi.org/10.1016/j.jcae.2012.03.002 doi: 10.1016/j.jcae.2012.03.002
    [22] Dybvig PH, Marshall WJ (2013) The new risk management: The good, the bad, and the ugly. Fed Reserve Bank St 95: 273-291. https://doi.org/10.20955/r.95.273-291 doi: 10.20955/r.95.273-291
    [23] Figueiredo DB, Paranhos R, da Silva Júnior JA, et al. (2014) O que é, para que serve e como se faz uma meta-análise? Teor Pesqui 23: 205-228. https://doi.org/10.4322/tp.2014.018 doi: 10.4322/tp.2014.018
    [24] Frestad D (2018) Managing earnings risk under SFAS 133/IAS 39: the case of cash flow hedges. Rev Quantit Financ Account 51: 159-197. https://doi.org/10.1007/s11156-017-0667-4 doi: 10.1007/s11156-017-0667-4
    [25] Frestad D, Beisland LA (2015) Hedge Effectiveness Testing as a Screening Mechanism for Hedge Accounting: Does It Work? J Account Audit Financ 30: 35-56. https://doi.org/10.1177/0148558X14549457 doi: 10.1177/0148558X14549457
    [26] Galdi FC, Guerra LFG (2009) Determinantes para utilização do hedge accounting: uma escolha contábil. Rev de Educação e Pesqui Em Contabilidade 3: 23-44.
    [27] Galvão TF, Pereira MG (2014) Revisões sistemáticas da literatura: passos para sua elaboração. Epidemiol e Serviços de Saúde 23: 183-184. https://doi.org/10.5123/s1679-49742014000100018 doi: 10.5123/s1679-49742014000100018
    [28] Gigler F, Kanodia C, Venugopalan R (2007) Assessing the information content of mark-to-market accounting with mixed attributes: The case of cash flow hedges. J Account Res 45: 257-276. https://doi.org/10.1111/j.1475-679X.2007.00232.x doi: 10.1111/j.1475-679X.2007.00232.x
    [29] Glaum M, Klcker A (2011) Hedge accounting and its influence on financial hedging: When the tail wags the dog. Account Bus Res 41: 459-489. https://doi.org/10.1080/00014788.2011.573746 doi: 10.1080/00014788.2011.573746
    [30] Goodman T, Neamtiu M, Zhang XF (2018) Fundamental analysis and option returns. J Account Audit Financ 33: 72-97. https://doi.org/10.1177/0148558X17733593 doi: 10.1177/0148558X17733593
    [31] Guay WR (1999) The impact of derivatives on firm risk: An empirical examination of new derivative users. J Account Econ 26: 319-351. https://doi.org/10.1016/S0165-4101(98)00032-9 doi: 10.1016/S0165-4101(98)00032-9
    [32] Gumb B, Dupuy P, Baker CR, et al. (2018) The impact of accounting standards on hedging decisions. Account Audit Accoun J 31: 193-213. https://doi.org/10.1108/AAAJ-03-2016-2448 doi: 10.1108/AAAJ-03-2016-2448
    [33] Hassan MS, Percy M, Stewart J (2006) The value relevance of fair value disclosures in australian firms in the extractive industries. Asian Acad Manag J Account Financ 2: 41-61.
    [34] Hope OK, Kang T, Thomas WB, et al. (2008) Pricing and mispricing effects of SFAS 131. J Bus Financ Account 35: 281-306. https://doi.org/10.1111/j.1468-5957.2007.02071.x doi: 10.1111/j.1468-5957.2007.02071.x
    [35] Huan X, Parbonetti A (2019) Financial derivatives and bank risk: evidence from eighteen developed markets. Account Bus Res 49: 847-874. https://doi.org/10.1080/00014788.2019.1618695 doi: 10.1080/00014788.2019.1618695
    [36] Hughen L (2010) When Do Accounting Earnings Matter More than Economic Earnings? Evidence from Hedge Accounting Restatements. J Bus Financ Account 37: 1027-1056. https://doi.org/10.1111/j.1468-5957.2010.02216.x doi: 10.1111/j.1468-5957.2010.02216.x
    [37] Hwang ALJ (2002) Comparative analysis of accounting treatments for derivatives. J Account Educ 20: 05-233. https://doi.org/10.1016/S0748-5751(02)00004-0 doi: 10.1016/S0748-5751(02)00004-0
    [38] IASB (2018) IFRS 9 Instrumentos financeiros. Available from: https://bit.ly/3v3268c.
    [39] Juhl T, Kawaller IG, Koch PD (2012) The effect of the hedge horizon on optimal hedge size and effectiveness when prices are cointegrated. J Futures Markets 32: 37-876. https://doi.org/10.1002/fut doi: 10.1002/fut
    [40] Kanagaretnam K, Mathieu R, Shehata M (2009) Usefulness of comprehensive income reporting in Canada. J Account Public Pol 28: 49-365. https://doi.org/10.1016/j.jaccpubpol.2009.06.004 doi: 10.1016/j.jaccpubpol.2009.06.004
    [41] Kanodia C (2010) Accounting Disclosure and Real Effects. Account Rev 85: 119-1120. https://doi.org/10.2308/accr.2010.85.3.1119 doi: 10.2308/accr.2010.85.3.1119
    [42] Kawaller IG, Koch PD (2013) Hedge Effectiveness Testing Revisited. J Deriv Fall 21: 83-94. https://doi.org/10.3905/jod.2013.21.1.083 doi: 10.3905/jod.2013.21.1.083
    [43] Kharbanda V, Singh A (2018) Futures market efficiency and effectiveness of hedge in Indian currency market. Int J Emerg Mark 13: 2001-2027. https://doi.org/10.1108/IJoEM-08-2017-0320 doi: 10.1108/IJoEM-08-2017-0320
    [44] Kharbanda V, Singh A (2020) Hedging and effectiveness of Indian currency futures market. J Asia Bus Stud 14: 581-597. https://doi.org/10.1108/JABS-10-2018-0279 doi: 10.1108/JABS-10-2018-0279
    [45] Kim JB, Shroff P, Vyas D, et al. (2018). Credit Default Swaps and Managers' Voluntary Disclosure. J Account Res 56: 53-988. https://doi.org/10.1111/1475-679X.12194 doi: 10.1111/1475-679X.12194
    [46] Lima IS, Lopes AB, Galdi FC (2011) Manual de Contabilidade e Tributação de Instrumentos Financeiros e Derivativos, 2 Eds., Atlas.
    [47] Lombardi LJ (2010) Monitoring changes in capital and hedge effectiveness under fair value accounting principles. N Am Actuar J 14: 1-15. https://doi.org/10.1080/10920277.2010.10597574 doi: 10.1080/10920277.2010.10597574
    [48] Makar SD, Huffman SP (2008) UK multinationals' effective use of financial currency-hedge techniques: Estimating and explaining foreign exchange exposure using bilateral exchange rates. J Int Financ Managt Account 19: 219-235. https://doi.org/10.1111/j.1467-646X.2008.01022.x doi: 10.1111/j.1467-646X.2008.01022.x
    [49] Makar S, Wang L, Alam P. (2013) The mixed attribute model in SFAS 133 cash flow hedge accounting: Implications for market pricing. Rev Account Stud 18: 66-94. https://doi.org/10.1007/s11142-012-9201-z doi: 10.1007/s11142-012-9201-z
    [50] Malaquias RF, Zambra P (2018) Disclosure of financial instruments: Practices and challenges of Latin American firms from the mining industry. Res Int Bus Financ 45: 158-167. https://doi.org/10.1016/j.ribaf.2017.07.144 doi: 10.1016/j.ribaf.2017.07.144
    [51] Malaquias RF, Zambra P (2019) Complexity in accounting for derivatives: Professional experience, education and gender differences. Accounting Research Journal 33: 108-127. https://doi.org/10.1108/ARJ-11-2017-0192 doi: 10.1108/ARJ-11-2017-0192
    [52] Manchiraju H, Hamlen S, Kross W, et al. (2016) Fair value gains and losses in derivatives and CEO Compensation. J Account Audit Financ 31: 311-338. https://doi.org/10.1177/0148558X15584238 doi: 10.1177/0148558X15584238
    [53] Melumad ND, Weyns G, Ziv A (1999) Comparing alternative hedge accounting standards: Shareholders' perspective. Rev Account Stud 4: 265-292. https://doi.org/10.2139/ssrn.189853 doi: 10.2139/ssrn.189853
    [54] Middelberg SL, Buys PW, Styger P (2012) The accountancy implications of commodity derivatives: A South African agricultural sector case study. Agrekon 51: 97-116. https://doi.org/10.1080/03031853.2012.749571 doi: 10.1080/03031853.2012.749571
    [55] Minton BA, Stulz R, Williamson R (2009) How Much Do Banks Use Credit Derivatives to Hedge Loans? J Financ Serv Res 35: 1-31. https://doi.org/10.1007/s10693-008-0046-3 doi: 10.1007/s10693-008-0046-3
    [56] Morais LC, Cezar IM, de Souza CC (2011) Uso de derivativos agropecuários como mecanismo de comercialização de soja, no município de Rio Verde, Goiás. Rev Ceres 58: 567-575. https://doi.org/10.1590/s0034-737x2011000500006 doi: 10.1590/s0034-737x2011000500006
    [57] Naylor M, Greenwood R (2008) The characteristics of foreign exchange hedging: A comparative analysis. J Asia Pac Bus 9: 121-152. https://doi.org/10.1080/10599230801981886 doi: 10.1080/10599230801981886
    [58] Novotny-Farkas Z (2016) The Interaction of the IFRS 9 Expected Loss Approach with Supervisory Rules and Implications for Financial Stability. Account Europe 13: 197-227. https://doi.org/10.1080/17449480.2016.1210180 doi: 10.1080/17449480.2016.1210180
    [59] Oktavia O, Siregar SV, Wardhani R, et al. (2019) The effects of financial derivatives on earnings management and market mispricing. Gadjah Mada Int J Bus 21: 289-307. https://doi.org/10.22146/gamaijb.34112 doi: 10.22146/gamaijb.34112
    [60] Panaretou A, Shackleton MB, Taylor PA (2013) Corporate risk management and hedge accounting. Contemp Account Res 30: 116-139. https://doi.org/10.1111/j.1911-3846.2011.01143.x doi: 10.1111/j.1911-3846.2011.01143.x
    [61] Potin SA, Bortolon PM, Sarlo Neto A (2016) Hedge accounting in the Brazilian stock market: Effects on the quality of accounting information, disclosure, and information asymmetry. Rev Contab Financ 27: 202-216. https://doi.org/10.1590/1808-057x201602430 doi: 10.1590/1808-057x201602430
    [62] Richie N, Glegg C, Gleason KC (2006) The effects of SFAS 133 on foreign currency exposure of US-based multinational corporations. J Multinatl Financ M 16: 424-439. https://doi.org/10.1016/j.mulfin.2005.10.001 doi: 10.1016/j.mulfin.2005.10.001
    [63] Rocha EM, Da Freitas JSS, Valdevino RQS, et al. (2019) Hedge Accounting: aplicação dos métodos prospectivos de eficácia nas instituições financeiras bancárias da B3. Rev Ciências Administrativas 25: 1-16. https://doi.org/10.5020/2318-0722.2019.7933 doi: 10.5020/2318-0722.2019.7933
    [64] Santos RB, Lima FG, Gatsios RC, et al. (2017) Risk management and value creation: new evidence for Brazilian non-financial companies. Appl Econ 49: 5815-5827. https://doi.org/10.1080/00036846.2017.1343451 doi: 10.1080/00036846.2017.1343451
    [65] Schöndube-Pirchegger B (2006) Hedging, hedge accounting, and speculation in a rational expectations equilibrium. J Account Public Pol 25: 687-705. https://doi.org/10.1016/j.jaccpubpol.2006.09.003 doi: 10.1016/j.jaccpubpol.2006.09.003
    [66] Shin HS (2007) Discussion of assessing the information content of mark-to-market accounting with mixed attributes: the case of cash flow hedges and market transparency and the accounting regime. J Account Res 45: 277-287. https://doi.org/10.1111/j.1475-679X.2007.00233.x doi: 10.1111/j.1475-679X.2007.00233.x
    [67] Sticca RM, Nakao SH (2019) Hedge accounting choice as exchange loss avoidance under financial crisis: Evidence from Brazil. Emerg Mark Rev 41: 100655. https://doi.org/10.1016/j.ememar.2019.100655 doi: 10.1016/j.ememar.2019.100655
    [68] Strnad P (2009) Fair value and interest rate risk of demand deposits. Ekon Cas 57: 682-699.
    [69] Strouhal J, Bonaci CG, Matis D (2010) Accounting for derivatives: Hedging or trading? WSEAS T Bus Econ 7: 242-251.
    [70] Strouhal J, Ištvánfyová J (2010) Financial crisis and hedge accounting: Some evidence from czech market. 2010 International Conference on Financial Theory and Engineering, ICFTE 2010, 85-88. https://doi.org/10.1109/ICFTE.2010.5499421 doi: 10.1109/ICFTE.2010.5499421
    [71] Tessema A, Deumes (2018) SFAS 133 and income smoothing via discretionary accruals: The role of hedge effectiveness and market volatility. J Int Financ Manag Account 29: 105-130. https://doi.org/10.1111/jifm.12070 doi: 10.1111/jifm.12070
    [72] Titova Y, Penikas H, Gomayun N (2020) The impact of hedging and trading derivatives on value, performance and risk of European banks. Empir Econ 58: 535-565. https://doi.org/10.1007/s00181-018-1545-1 doi: 10.1007/s00181-018-1545-1
    [73] Valenzuela-Fernandez L, Merigó JM, Lichtenthal JD, et al. (2019).A Bibliometric Analysis of the First 25 Years of the Journal of Business-to-Business Marketing. J Bus-Bus Mark 26: 75-94. https://doi.org/10.1080/1051712X.2019.1565142 doi: 10.1080/1051712X.2019.1565142
    [74] Vasvari FP (2012) Discussion of "Hedge commitments and agency costs of debt: Evidence from interest rate protection covenants and accounting conservatism. Rev Account Stud 17: 739-748. https://doi.org/10.1007/s11142-012-9196-5 doi: 10.1007/s11142-012-9196-5
    [75] Wang L, Makar S (2019) Hedge accounting and investors' view of FX risk. Int J Account Inform Manage 27: 407-424. https://doi.org/10.1108/IJAIM-10-2017-0121 doi: 10.1108/IJAIM-10-2017-0121
    [76] Wang SIL (2018) Bank External Financing and Early Adoption of SFAS 133. Rev Pac Basin Financ Mark Pol 21. https://doi.org/10.1142/S0219091518500157 doi: 10.1142/S0219091518500157
    [77] Zambra P, Malaquias RF, Rech IJ, et al. (2019) Complexidade no disclosure financeiro: O papel das características das empresas contratantes. Rev Contab Financ 30. https://doi.org/10.1590/1808-057x201807940 doi: 10.1590/1808-057x201807940
    [78] Zorzi R, Friedl B (2014) The optimal hedge ratio-an analytical decision model considering periodical accounting constraints. Rev Pac Basin Financ Mark Pol 17: 1-36. https://doi.org/10.1142/S0219091514500246 doi: 10.1142/S0219091514500246
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