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Location Selection of Express Distribution Centre with Probabilistic Linguistic MABAC Method Based on the Cumulative Prospect Theory

Abstract

In our daily life, we could be confronted with numerous multiple attribute group decision making (MAGDM) problems. For such problems we designed a model which employs probabilistic linguistic MABAC (multi-attributive border approximation area comparison) based on the cumulative prospect theory (CPT-PL-MABAC) method to solve the MAGDM. The CPT-PL-MABAC method can take experts’ psychological behaviour and preferences into consideration. Furthermore, we utilize the combined weight consisting of subjective weight and objective weight. The objective weight is acquired by the entropy method. Additionally, the concrete calculating steps of CPT-PL-MABAC method are proposed to solve the MAGDM for selecting the optimal location of express distribution centre. Also, a numerical example for location selection of express distribution centre is given as the justification of the usefulness of the designed method. Finally, we compare the designed model with the other three existing models, and summarize the advantages and shortcomings.

1Introduction

Multiple attribute decision making (MADM) or multiple attribute group decision making (MAGDM) is an effective approach to solve complex decision-making issues (Huang et al., 2021; Lei et al., 2021; Liu et al., 2018; Zhang D. et al., 2021; Zhang et al., 2018). In the decision-making process, decision makers are usually experts in their fields. Therefore, decision makers (DMs) would like to use linguistic terms rather than utilize the exact real numbers due to the complication of the socioeconomic setting and fuzziness of human beings’ thinking (Lei et al., 2021; Wei et al., 2021a). It means that the linguistic terms given by experts contain uncertainty and preference. To solve the uncertainty of decision-making problems, a lot of effective work has been done. Wang and Garg (2021) proposed new interaction Pythagorean operators and designed an algorithm to solve the MADM issues with Pythagorean fuzzy uncertainties. Yazdi et al. (2020) proposed an integrated method which combined BWM with Weighted Aggregated Sum-Product Assessment (WASPAS) on uncertain decision-making environments with Z-numbers. Xiao et al. (2021) built Taxonomy method for MAGDM based on interval-valued intuitionistic fuzzy information. Zhang H. et al. (2021) defined the CPT-MABAC method for spherical fuzzy MAGDM. Zhang S. et al. (2021) defined the grey relational analysis method based on cumulative prospect theory for intuitionistic fuzzy MAGDM.

The decision makers are more likely to choose ‘good’, ‘medium’, ‘a little good’ and ‘excellent’ to evaluate alternatives. Therefore, Rodriguez et al. (2012) defined hesitant fuzzy linguistic term set (HFLTS) to use the hesitancy degree in the linguistic context. Zeng et al. (2019) introduced several weighted operators to aggregate weighted hesitant fuzzy linguistic information. Liu et al. (2019) improved incomplete hesitant fuzzy linguistic preference relations (IHFLPRs). These concepts can describe ambiguity and preference in linguistic term sets, but ignored differences in the importance of evaluation information. Thus, Pang et al. (2016) used probabilistic linguistic term sets (PLTSs) to depict fuzziness and uncertainty with certain probabilities. They proposed some rules of operation and aggregation operators for PLTSs. We can find that PLTSs can more comprehensively and precisely represent the attitude of decision makers. Furthermore, many improvements have been made in decision-making issues on PLTSs. Yue et al. (2020b) put forward the group utility measure, the individual regret measure and the compromise measure under PLTSs. Some studies discussed decision making methods under PLTSs. Wei et al. (2021b) built the DAS method for probabilistic linguistic MAGDM. Chen et al. (2020) combined distillation algorithm with ELECTRE III method on PLTSs. He et al. (2021) modified the FMEA (the failure mode and effect analysis) model on the PLTSs. You et al. (2020) designed PL-VIKOR method and modified the distance measure. Some studies have introduced and defined some new distance formulas. Chang et al. (2021) introduced Hellinger distance measure. Jiang and Liao (2021) defined Kolmogorov-Smirnov distance measure on the PLTSs. Some studies have proposed effective tools to solve decision-making issues under PLTSs. Du and Liu (2021) researched quality function deployment tool under PLTSs. Lin et al. (2021) proposed score C-PLTSs and probability splitting algorithm. And a novel PLTS correlation coefficient was put forward by Luo et al. (2020). Peng and Wang (2020) introduced linguistic scale functions. Shen et al. (2021) came up with a model to reduce limitations of evaluation on the PLTSs. Teng et al. (2021) designed the Choquet integral operator under PLTSs. Wang and Liang (2020) put away a preference degree for g-granularity PLTS. Wang et al. (2021) extended the operational laws of PLTSs. Wang et al. (2020) proposed probabilistic linguistic Z-numbers to describe related information. Xie et al. (2020) defined the dual probabilistic linguistic correlation coefficient. Xu et al. (2020) proposed a method to make probabilistic linguistic more complete in describing evaluation information. Yu et al. (2020) combined stochastic dominance degrees with PLTSs. Yue et al. (2020a) introduced the projection formulas and Qu et al. (2020) introduced new utility functions on the PLTSs. Su et al. (2021a) built PT-TODIM method for probabilistic linguistic MAGDM.

Applying PLTSs and related methods to some practical cases can reflect advantages and the applicability of PLTSs. Liang et al. (2020) improved customer satisfaction evaluation system on PLTSs. Mo (2020) proposed the D-PLTS method to settle emergency decision-making issues. Pan et al. (2021) designed a probabilistic linguistic data envelopment analysis model. Xu C. et al. (2020) applied probabilistic linguistic preference relations to handle the healthcare insurance audits in China. Gao et al. (2021) proposed the PLTSs to describe information and built the MCGDM framework for the risk assessment. Luo et al. (2021) designed the IDOCRIW-COCOSO model to evaluate tourism attractions on the PLTSs. Ming et al. (2020) structured a medical service evaluation criteria system under PLTSs.

The MABAC method is an effective method to address some difficult decision making issues. Xu et al. (2019) used the MABAC algorithm to select the optimal green supplier. To select the optimal university, Gong et al. (2020) designed a new UTAE (undergraduate teaching audit and evaluation) approach combined with the MABAC method. Biswas (2020) selected the MABAC method to prepare a comparative analysis of supply chain performances. In order to make better use of the MABAC method, experts put it in different linguistic environments. Verma (2021) applied IFS (intuitionistic fuzzy set) with the MABAC algorithm. Liang et al. (2019) came up with the MABAC approach based on TFN to evaluate the risk of rock-burst. Hu et al. (2019) combined the MABAC method with the similarity of interval type-2 fuzzy numbers (IT2FNs). Sun et al. (2018) extended the MABAC method to HFLTSs (hesitant fuzzy linguistic term sets) for patients’ prioritization. Aydin (2021) applied the MABAC method with Fermantean fuzzy sets into decision-making process. Liu and Zhang (2021) integrated the MABAC model with prospect theory (PT) on a normal wiggly hesitant fuzzy set (NWHFS). Additionally, many studies combined MABAC with another algorithm to solve MADM or MAGDM problems. Pamucar et al. (2018) defined the IR-AHP-MABAC (interval rough analytic hierarchy process-MABAC) model to assess the quality of websites. Jiang et al. (2022) built the picture fuzzy MABAC method based on prospect theory for MAGDM.

The above investigations described a particular assumption that DMs are perfectly rational. However, many studies show that people’s behaviour is affected by their emotions. For example, people are inclined to be more sensitive to losses than to gains. That’s to say, the perception of equal gains and losses are not the same for DMs. In general, people are inclined to be risk-averse. Based on these assumptions of bounded rationality, the cumulative prospect theory (CPT) (Tversky and Kahneman, 1992) broke through the classical utility theory and defined the weight function and value function. Gong et al. (2018) built a new model based on CPT to tackle portfolio selection. Zhao et al. (2021b) combined CPT with TODIM method under several linguistic environments, such as pythagorean fuzzy sets (2021), the 2-tuple linguistic pythagorean fuzzy sets (Zhao et al., 2021c). Additionally, Zhao et al. (2021a) introduced the intuitionistic fuzzy MABAC method based on CPT. Furthermore, picture fuzzy sets (Jiang et al., 2021a, 2021b) were dealt with CPT. Su et al. (2021b) built the probabilistic uncertain linguistic EDAS method based on prospect theory for MAGDM.

In the originalMABAC method, the psychological factor such as the DMs’ preference towards risk will affect the distance between the border approximation area. Furthermore, there are relatively few researches on constructing the MABAC method for MAGDM depending on the CPT under PLTSs. The main research significance of this paper is the modified MABAC method with CPT which can reduce the affection. Therefore, the PL-MABAC based on cumulative prospect theory (CPT-PL-MABAC) method in this paper is defined to solve the location selection of express distribution centre, which is a classical MAGDM issue. This article makes contributions as follows: (1) the concept of CPT is integrated into the PL-MABAC method for MAGDM. This method not only has unambiguous logic and relatively simple calculation, but also expresses the DM’s psychological state, which is closer to reality; (2) we improved the entropy method, which is characterized by the mean value of attributes as the reference point; (3) the combined attribute weights are obtained through objective weight by the entropy method and by getting the subjective weight given by decision makers; (4) the effectiveness and stability of this new method is fully testified by taking advantage of a case about location selection of express distribution centre and comparisons with the existing methods.

To sum up, the structure of this paper is built as follows. The second part mainly introduces and reviews the basic knowledge, including the PLTSs and CPT. In Section 3, the PL-MABAC based on cumulative prospect theory (CPT-PL-MABAC) method is defined to solve the MAGDM. In Section 4, a case for location selection of express distribution centre is given as the justification of the usefulness of the designed method. Also, we compared our method with existing methods and demonstrated the stability and availability of this method. Finally, the main contributions of this paper, the limitations of the new method and future research directions are included.

2Preliminaries

In order to illustrate the CPT-PL-MABAC model, some relevant knowledge is introduced.

2.1PLTSs

Sometimes, decision makers give fuzzy evaluation information that cannot be expressed exactly. Pang et al. (2016) came up with PLTS, which have different weights and probabilities.

Definition 1

Definition 1(Gou et al., 2017).

Let L={ζƛ|ƛ=,,2,1,0,1,2,,} be an LTS, and the linguistic terms ζƛ can be denoted as the value information χ by transformation function κ, and the formula is as follows:

(1)
κ:[ζƛ,ζƛ][0,1],κ(ζƛ)=ƛ+2=χ.
χ can also be translated into linguistic terms ζƛ by the shifting function κ1:
(2)
κ1:[0,1][ζƛ,ζƛ],κ1(χ)=ζ(2χ1)=ζƛ.

Definition 2

Definition 2(Pang et al., 2016).

Suppose L={ζƛ|ƛ=,,2,1,0,1,2,,} is an LTS, then the PLTS could be defined as follows:

(3)
L(p)={ζ(γ)(p(γ))|ζ(γ)L,p(γ)0,γ=1,2,,#L(p),γ=1#L(p)p(γ)1}.
In this formula, ζ(γ)(p(γ)) denotes γth linguistic term ζ(γ) and its corresponding probability value p(γ). The linguistic terms ζ(γ) are arranged in ascending order in the set L(p). #L(p) represents the linguistic terms’ length in L(p).

To make the PLTSs easier to deal with, Pang et al. (2016) normalized the PLTS L(p) as NL(p˜)={ζ(γ)(p˜(γ))|ζ(γ)L,p˜(γ)0,γ=1,2,,#L(p˜),γ=1#L(p)p˜(γ)=1}, where p˜(γ)=p(γ)/γ=1#L(p)p(γ) for all γ=1,2,,#L(p˜).

Definition 3

Definition 3(Pang et al., 2016).

Suppose L={hε|ε=ϑ,,1,0,1,ϑ} is an LTS, NL1(p˜)={ζ1(γ)(p˜1(γ))|γ=1,2,,#NL1(p˜)} and NL2(p˜)={ζ2(γ)(p˜2(γ))|γ=1,2,,#NL2(p˜)} are two PLTSs, where #NL1(p˜) represents the linguistic term length of PLTS NL1(p˜). #NL2(p˜) reasonably represents the corresponding length of NL2(p˜). To make the subscript of PLTS symmetric, we add #NL1(p˜)#NL2(p˜) linguistic terms to NL2(p˜) when #NL1(p˜)>#NL2(p˜). It should be noted that the added linguistic term defaults to the minimum linguistic term in NL2(p˜) and its corresponding probability is zero.

Definition 4

Definition 4(Pang et al., 2016).

Suppose NL(p˜)={ζ(γ)(p˜(γ))|γ=1,2,,#NL(p˜)} is a PLTS, then the score formula and deviation formula of the PLTS is as follows:

(4)
SF(NL(p˜))=γ=1#NL(p˜)κ(NL(p˜))p˜(γ)/γ=1#NL(p˜)p˜(γ),
(5)
DF(NL(p˜))=γ=1#NL(p˜)(κ(NL(p˜))p˜(γ)SF(NL(p˜)))2/γ=1#NL(p˜)p˜(γ).

We can obtain the order relation between two PLTSs by Eqs. (4) and (5).

  • (1) If SF(NL1(p˜))>SF(NL2(p˜)), then NL1(p˜)>NL2(p˜);

  • (2) If SF(NL1(p˜))=SF(NL2(p˜)), then DF(NL1(p˜))=DF(NL2(p˜)) and NL1(p˜)=NL2(p˜); if DF(NL1(p˜))<DF(NL2(p˜)), then NL1(p˜)>NL2(p˜).

Definition 5

Definition 5(Lin et al., 2019).

Suppose L={ζƛ|ƛ=,,1,0,1,,} is an LTS. Calculate the distance from NL1(p˜)={ζ1(γ)(p˜1(γ))|γ=1,2,,#NL1(p˜)} to NL2(p˜)={ζ2(γ)(p˜2(γ))|γ=1,2,,#NL2(p˜)} by the Hamming distance as follows:

(6)
d(NL1(p˜),NL2(p˜))=γ=1#NL1(p˜)|p˜1(γ)κ(ζ1(γ))p˜2(γ)κ(ζ2(γ))|#NL(p˜).

2.2Cumulative Prospect Theory

In the cumulative prospect theory (CPT) (Tversky and Kahneman, 1992), DMs will go through two stages when they are faced with choices and make decisions: editing stage and evaluation stage. In the editing stage, the decision-makers will collect information and do some preprocessing to find out the reference point; in the evaluation stage, the decision makers will evaluate the prospect which has been pretreated and choose the best prospect based on a value function λ(xj) and a weight function w(pi). Therefore, the specific form of the total value function of prospect theory is as follows Tversky and Kahneman (1992):

(7)
Λ(xj)=j=1mλ(xj)w(pj),
where m is the number of attributes for alternatives; j expresses the jth attribute; λ(xj) reflects the DMs’ subjective feeling value according to the actual gains or the losses. The formula of λ(xj) is defined as follows Tversky and Kahneman (1992):
(8)
λ(xj)=(Δx)τ,ifΔx0,θ(Δx)ς,ifΔx<0,0<τ,ς<1.

In this formula, xj signifies the value of the jth attribute. Δ>0 signifies the gain, Δx<0 signifies the loss and Δx=0 signifies no gain or loss. τ and ς represent the parameters of risk attitudes. These depict the sensitivity of decision makers to gains and losses. θ depicts the coefficient of loss aversion, and θ>1. The higher the value of θ, the more risk averse the decision maker is. Tversky and the others obtained the parameters of the value function in CPT with the method of linear regression when the parameters were τ=ς=0.88, θ=2.25. It was more consistent with the empirical data. And it is worth mentioning that we take the probabilistic linguistic border approximation area as the reference point to gains and losses in this paper.

3CPT-PL-MABAC Model for MAGDM Issues

We will introduce the MABAC method based on CPT and on the PLTS. We will also give the following mathematical symbols which are used to express the relevant information. We suppose that there is a collection of alternatives ={1,2,,m} and n qualitative attributes ={1,2,,n}. Experts will evaluate every attribute and use linguistics ζijk (i=1,2,,m,j=1,2,,n,k=1,2,,q) to express the value of evaluation. ϖ=(ϖ1,ϖ2,,ϖn) represents the attribute weight vector, where ϖj[0,1], j=1nϖj=1 and ={1,2,,q} is a collection of q experts.

We designed the new PL-MABAC method in which the CPT is introduced to address MAGDM problems. A laconic frame diagram and the specific calculating procedure as follows:

3.1The CPT-PL-MABAC Frame Diagram

See Fig. 1.

Fig. 1

CPT-PL-MABAC frame diagram.

CPT-PL-MABAC frame diagram.

3.2The CPT-PL-MABAC Calculating Procedure

Step 1. Transform cost attributes into beneficial ones.

Given an LTS L={ζƛ|ƛ=,,1,0,1,}, and transform the cost attribute ζƛ into the beneficial attribute ζƛ.

Step 2. Shift the value of evaluation information L={ζijk|k=1,2,,q,i=1,2,,m,j=1,2,,n} into PLTSs PL={ζij(γ)(pij(γ))|γ=1,2,,#Lij(p)}. Build the evaluation matrix M=(PLij(p))m×n, PLij(p)={ζij(γ)(pij(γ))|γ=1,2,,#Lij(p)} (i=1,2,,m,j=1,2,,n).

Step 3. Obtain the normalized decision matrix NM=(NPLij(p˜))m×n with PLTSs, NPLij(p˜)={ζij(γ)(p˜ij(γ))|γ=1,2,,#Lij(p˜),γ=1#Lij(p˜)p˜ij(γ)=1} (i=1,2,,m,j=1,2,,n).

Step 4. Figure up the combined weight of attributes.

We acquire the objective weight by the entropy method and get the subjective weight given by decision makers.

First, we introduce the specific procedure of the entropy method. It should be noted that when calculating entropy, we use the mean value of the attribute as the reference point to calculate its distance from the normalized attribute value.

  • 1. Calculate the mean value of jth attribute, the formula is expressed below:

    (9)
    MLj(p¯j)={ζj(γ)(pj(γ))|ϕ=1,2,,#Lij(p)},
    (10)
    ζj(γ)(pj(γ))=1mi=1mζij(γ)(1mi=1mpij(γ)).

  • 2. Let j be the entropy of the jth attribute, and calculate it by using Eq. (11):

    (11)
    j=1lnmi=1m×[d(NLij(p˜j),MLj(p¯j))i=1md(NLij(p˜j),MLj(p¯j))ln(d(NLij(p˜j),MLj(p¯j))i=1md(NLij(p˜j),MLj(p¯j)))].

  • 3. Compute the objective weights of the jth attribute by using Eq. (12):

    (12)
    woj=1jj=1n(1j),j=1,2,n,
    where woj[0,1] and j=1nwoj=1.

Then, we calculate the combined weights by using the following equation. The advantage of using combined weight is that the influence of subjective weight and objective weight can be considered comprehensively.

Decision makers gave the subjective weights wsj=(ws1,ws2,,wsn), where wsj[0,1], j=1,2,,n, j=1nwsj=1. The objective weight woj=(wo1,wo2,,won) is calculated by using Eq. (12) directly, where woj[0,1], j=1,2,,n, j=1nwoj=1. Therefore, the combined weights of attributes wcj=(wc1,wc2,,wcn) could be defined:

(13)
wcj=wojwsjj=1nwojwsj,
where wcj[0,1], j=1,2,,n, j=1nwcj=1.

Step 5. Figure out the probabilistic linguistic border approximation area (PLBAA) matrix PLBAA=(PLBAAj)1×n. The PLBAA could be obtained according to Eqs. (14)–(16).

(14)
PLBAA=(PLBAAj)1×n,
(15)
PLBAAj={ζj(γ)(pj(γ))|γ=1,2,,#NLij(p)},
(16)
ζj(γ)(pj(γ))=κ1(i=1mκ(ζij(γ))m)(i=1mpij(γ)m).

Step 6. Figure up the Hamming distance from PLBAA by Eq. (17) and the cumulative prospect distance matrix by using Eq. (18).

(17)
d(NLij(p˜),PLBAAj)=(γ=1#NLij(p˜)|κ(ζij(γ))(pij(γ))κ(ζj(γ))(pj(γ))|)/#NLij(p˜),
(18)
Λij=[d(NLij(p˜),PLBAAj)]τwj,if(γ=1#NLij(p˜)κ(ζij(γ))(pij(γ))κ(ζj(γ))(pj(γ)))/#NLij(p˜)>0,0,if(γ=1#NLij(p˜)κ(ζij(γ))(pij(γ))κ(ζj(γ))(pj(γ)))/#NLij(p˜)=0,θ[d(NLij(p˜),PLBAAj)]ςwj,if(γ=1#NLij(p˜)κ(ζij(γ))(pij(γ))κ(ζj(γ))(pj(γ)))/#NLij(p˜)<0.

We take PLBAAj as reference point and the parameters in value function are τ=ς=0.88, θ=2.25.

Step 7. Calculate the probabilistic linguistic total prospect value.

(19)
Λi=j=1nΛij,i=1,2,,m.

Step 8. Rank the value of Λi (i=1,2,,m) to obtain the best alternative.

4An Example Analysis and Comparative Analysis

4.1An Example Analysis

In the background of e-commerce, online shopping has become a very common way of consumption in people’s lives. The recent epidemic situation also makes people more accustomed to using online shopping for consumption. Therefore, express delivery has become a matter of great concern. Reasonable and effective site selection can improve the service quality and win the favour of customers, so as to achieve the all-win goal of Express Distribution Centre, businesses and consumers. The express industry is the product of rapid economic development. It means that the consumption capacity of a region has a crucial impact on the express business volume. How to choose a proper express distribution centre is of great importance to both express companies and consumers. Generally speaking, the more developed the region is, the more its express business volume will be, and the number of distribution centres will be more and more centralized. Additionally, the site selection also needs to consider the local population and demand. For example, the closer to the central business district, the denser the population, the more demand for express delivery. Besides, for the areas where e-commerce self-employed households are concentrated, the demand for express delivery is very large, which should be considered as the key object. Moreover, to choose a reasonable address for the express delivery centre, we must consider the problem of cost minimization. And convenient transportation can effectively ensure the timeliness of express delivery. Otherwise, in order to ensure service quality, express enterprises can only add more outlets or send more vehicles, no matter which way it will lead to increased costs. We know that choosing the best address of Express Distribution Centre is a classic MADM or MAGDM problem. In this case, we gave five alternative sites i (i=1,2,3,4,5) to choose from. The experts selected four attributes to consider five alternative addresses: (1) 1 is the degree of economic development; (2) 2 is the construction and transportation cost; (3) 3 is the population status and demand; and (4) 4 is the degree of convenient transportation. These five potential addresses i (i=1,2,3,4,5) must be evaluated by using the LTSs:

{ζ3=deeply inapposite(DI),ζ2=so inapposite(SI),ζ1=inapposite(I)ζ0=middling(M),ζ1=apposite(A),ζ2=so apposite(SA),ζ3=deeply apposite(DA)}.
by the five DMs within the above four beneficial attributes. The evaluation information by using the LTSs is listed in Tables 15.

Table 1

Linguistic decision matrix by the first DM.

Alternatives1234
1SASIAM
2IDISII
3MIADI
4IDIII
5MIMM
Table 2

Linguistic decision matrix by the second DM.

Alternatives1234
1SIIDADA
2AIDIM
3SAMSAA
4DIMDIM
5AASII
Table 3

Linguistic decison matrix by the third DM.

Alternatives1234
1ASISASA
2IISII
3MSIADI
4SIDASAI
5MDAMA
Table 4

Linguistic decision matrix by the fourth DM.

Alternatives1234
1SAIDADA
2ADIAM
3MIAA
4SIDADIA
5MDASII
Table 5

Linguistic decision matrix by the fifth DM.

Alternatives1234
1SAMDADA
2SASIASI
3IIASI
4DISADIA
5ADAAI

For the convenience of calculation, we first express the evaluation information given by experts by using linguistic term sets (Tables 610).

Table 6

Decision matrix with linguistic term sets by the first DM.

Alternatives1234
1ζ2ζ2ζ1ζ0
2ζ1ζ3ζ2ζ1
3ζ0ζ1ζ1ζ3
4ζ1ζ3ζ1ζ1
5ζ0ζ1ζ0ζ0
Table 7

Decision matrix with linguistic term sets by the second DM.

Alternatives1234
1ζ2ζ1ζ3ζ3
2ζ1ζ1ζ3ζ0
3ζ2ζ0ζ2ζ1
4ζ3ζ0ζ3ζ0
5ζ1ζ1ζ2ζ1
Table 8

Decision matrix with linguistic term sets by the third DM.

Alternatives1234
1ζ1ζ2ζ2ζ2
2ζ1ζ1ζ2ζ1
3ζ0ζ2ζ1ζ3
4ζ2ζ3ζ2ζ1
5ζ0ζ3ζ0ζ1
Table 9

Decision matrix with linguistic term sets by the fourth DM.

Alternatives1234
1ζ2ζ1ζ3ζ3
2ζ1ζ3ζ1ζ0
3ζ0ζ1ζ1ζ1
4ζ2ζ3ζ3ζ1
5ζ0ζ3ζ2ζ1
Table 10

Decision matrix with linguistic term sets by the fifth DM.

Alternatives1234
1ζ2ζ0ζ3ζ3
2ζ2ζ2ζ1ζ2
3ζ1ζ1ζ1ζ2
4ζ3ζ2ζ3ζ1
5ζ1ζ3ζ1ζ1

Then, we choose the most appropriate site fot the logistics distribution centre by using CPT-PL-MABAC method.

Step 1. Transform the cost attribute 2 into a beneficial one. If the cost attribute value is ζλ, then transform it into beneficial attribute value ζλ (see Tables 1115).

Table 11

Linguistic evaluating value matrix by the first DM.

Alternatives1234
1ζ2ζ2ζ1ζ0
2ζ1ζ3ζ2ζ1
3ζ0ζ1ζ1ζ3
4ζ1ζ3ζ1ζ1
5ζ0ζ1ζ0ζ0
Table 12

Linguistic evaluating value matrix by the second DM.

Alternatives1234
1ζ2ζ1ζ3ζ3
2ζ1ζ1ζ3ζ0
3ζ2ζ0ζ2ζ1
4ζ3ζ0ζ3ζ0
5ζ1ζ1ζ2ζ1
Table 13

Linguistic evaluating value matrix by the third DM.

Alternatives1234
1ζ1ζ2ζ2ζ2
2ζ1ζ1ζ2ζ1
3ζ0ζ2ζ1ζ3
4ζ2ζ3ζ2ζ1
5ζ0ζ3ζ0ζ1
Table 14

Linguistic evaluating value matrix by the fourth DM.

Alternatives1234
1ζ2ζ1ζ3ζ3
2ζ1ζ3ζ1ζ0
3ζ0ζ1ζ1ζ1
4ζ2ζ3ζ3ζ1
5ζ0ζ3ζ2ζ1

Step 2. Shift the evaluation information with LTSs into a decision matrix M=(PLij(p))m×n with PLTSs (see Table 16).

Table 15

Linguistic evaluating value matrix by the fifth DM.

Alternatives1234
1ζ2ζ0ζ3ζ3
2ζ2ζ2ζ1ζ2
3ζ1ζ1ζ1ζ2
4ζ3ζ2ζ3ζ1
5ζ1ζ3ζ1ζ1

Step 3. Normalize the decision matrix with PLTSs. Transform the decision matrix M=(PLij(p))m×n into the normalized decision matrix NM=(NPLiij(p˜))m×n, NPLij(p˜)={ζij(γ)(p˜ij(γ))|γ=1,2,,#Lij(p˜),γ=1#Lij(p˜)p˜ij(γ)=1} (i=1,2,,m,j=1,2,,n) (see Table 17).

Table 16

Decision matrix with PLTSs.

Alternatives12
1{ζ2(0.2),ζ1(0.2),ζ2(0.6)}{ζ2(0.4),ζ1(0.4),ζ0(0.2)}
2{ζ1(0.4),ζ1(0.4),ζ2(0.2)}{ζ3(0.4),ζ2(0.2),ζ1(0.4)}
3{ζ1(0.2),ζ0(0.6),ζ2(0.2)}{ζ2(0.2),ζ1(0.6),ζ0(0.2)}
4{ζ3(0.4),ζ2(0.4),ζ1(0.2)}{ζ0(0.2),ζ2(0.2),ζ3(0.6)}
5{ζ0(0.0),ζ0(0.6),ζ1(0.4)}{ζ1(0.2),ζ1(0.6),ζ3(0.2)}
Alternatives34
1{ζ1(0.2),ζ2(0.2),ζ3(0.6)}{ζ0(0.2),ζ2(0.2),ζ3(0.6)}
2{ζ3(0.2),ζ2(0.4),ζ1(0.4)}{ζ2(0.2),ζ1(0.4),ζ0(0.4)}
3{ζ1(0.0),ζ1(0.8),ζ2(0.2)}{ζ3(0.4),ζ2(0.2),ζ1(0.4)}
4{ζ3(0.6),ζ1(0.2),ζ2(0.2)}{ζ1(0.4),ζ0(0.2),ζ1(0.4)}
5{ζ2(0.4),ζ0(0.4),ζ1(0.2)}{ζ1(0.6),ζ0(0.2),ζ1(0.2)}

Step 4. Figure out the combined weight.

Table 17

Normalized decision matrix with PLTSs.

Alternatives12
1{ζ2(0.2),ζ1(0.2),ζ2(0.6)}{ζ0(0.2),ζ1(0.4),ζ2(0.4)}
2{ζ1(0.4),ζ1(0.4),ζ2(0.2)}{ζ1(0.4),ζ2(0.2),ζ3(0.4)}
3{ζ1(0.2),ζ0(0.6),ζ2(0.2)}{ζ0(0.2),ζ1(0.6),ζ2(0.2)}
4{ζ3(0.4),ζ2(0.4),ζ1(0.2)}{ζ1(0.6),ζ1(0.2),ζ2(0.2)}
5{ζ0(0.0),ζ0(0.6),ζ1(0.4)}{ζ3(0.2),ζ1(0.6),ζ1(0.2)}
Alternatives34
1{ζ1(0.2),ζ2(0.2),ζ3(0.6)}{ζ0(0.2),ζ2(0.2),ζ3(0.6)}
2{ζ3(0.2),ζ2(0.4),ζ1(0.4)}{ζ2(0.2),ζ1(0.4),ζ0(0.4)}
3{ζ1(0.0),ζ1(0.8),ζ2(0.2)}{ζ3(0.4),ζ2(0.2),ζ1(0.4)}
4{ζ3(0.6),ζ1(0.2),ζ2(0.2)}{ζ1(0.6),ζ1(0.2),ζ2(0.2)}
5{ζ2(0.4),ζ0(0.4),ζ1(0.2)}{ζ1(0.6),ζ0(0.2),ζ1(0.2)}

Firstly, the objective weights are calculated by the entrophy method and the detailed calculation steps are as follows:

  • (1) The mean value of jth attribute is calculated by Eqs. (9)–(10) (see Table 18).

  • (2) The j is the entropy of the jth attribute, it is calculated by Eq. (11) (see Table 19).

  • (3) The objective weight of the jth attribute is computed by Eq. (12), and the results are as follows: wo1=0.515, wo2=0.136, wo3=0.215, wo4=0.134.

Table 18

The mean value for all attributes.

The mean value
1{ζ0.2700(0.2400),ζ0.5000(0.5200),ζ0.7000(0.2400)}
2{ζ0.3300(0.3200),ζ0.5300(0.4000),ζ0.7700(0.2800)}
3{ζ0.3000(0.2800),ζ0.5000(0.4000),ζ0.8000(0.3200)}
4{ζ0.2700(0.4000),ζ0.5000(0.2400),ζ0.7300(0.3600)}
Table 19

Probabilistic linguistic total prospect value of the all alternatives.

Alternatives1234
j0.86890.96530.94530.9657

Secondly, the subjective weights are given by experts, which are: ws1=0.1, ws2=0.4, ws3=0.3, ws4=0.2.

Finally, the combined weight can be calculated by Eq. (13), and the results are as follows: wc1=0.261, wc2=0.276, wc3=0.326, wc4=0.136.

Step 5. According to Eqs. (14)–(16), the PLBAA=(PLBAAj)1×4 for all attributes can be obtained (see Table 20).

Step 6. The Hamming distance can be calculated by using Eq. (17) and the cumulative prospect Hamming distance can be calculated by using Eq. (18) (see Tables 2122).

Table 20

PLBAA for all attributes.

PLBAA
1{ζ0.0000(0.0000),ζ0.4503(0.5102),ζ0.6635(0.2297)}
2{ζ0.0000(0.2862),ζ0.4599(0.3565),ζ0.7463(0.2639)}
3{ζ0.0000(0.0000),ζ0.4342(0.3482),ζ0.7905(0.2862)}
4{ζ0.0000(0.3565),ζ0.4342(0.2297),ζ0.7137(0.3288)}
Table 21

The Hamming distance matrix.

Alternatives1234
10.07260.11300.27790.1774
20.06150.1575−0.04170.0338
30.05040.12210.1472−0.0328
4−0.0830−0.0759−0.04800.1005
50.0615−0.03320.06950.1005

Step 7. Figure up the probabilistic linguistic total prospect value, which is computed by using Eq. (19) (see Table 23).

Table 22

The cumulative prospect distance matrix.

Alternatives1234
10.02360.04190.07240.0307
20.02040.0561−0.04620.0072
30.01710.04480.0624−0.0157
4−0.0596−0.0664−0.05240.0186
50.0204−0.03210.03220.0186

Step 8. According to the above calculation, the rank of alternatives is 1>3>5>2>4, and the optimal location is N1.

Table 23

Probabilistic linguistic total prospect value of the all alternatives.

Alternatives12345
Λi0.16860.03740.1087−0.15980.0391

4.2Comparative Analysis

We compared our proposed model with three existing methods, which are the PLWA operator (Pang et al., 2016), the PL-TOPSIS method (Pang et al., 2016) and the PL-GRA method (Liang et al., 2018) (let ρ=0.5) (see Table 24).

Table 24

Order by using diverse methods.

MethodsOrderOptimal alternativeBad alternative
PLWA operator (Pang et al., 2016)1>3>2>5>414
PL-TOPSIS method (Pang et al., 2016)1>3>2>5>414
PL-GRA method (Liang et al., 2018)1>2>3>5>414
PL-MABAC1>2>3>5>414
CPT-PL-MABAC method1>3>5>2>414

As you can see from the table above, all four methods obtain the same optimal site N1 and the same nonoptimal site N4. It means that our method is stable and valid. We can also find the other sites are ranked slightly differently because each method has different emphases. The PL-GRA method emphasizes the shape similarity degree from the PIS, the PL-TOPSIS method emphasizes the distance closeness degree from the PIS and NIS, and the PLWA operator emphasizes the group influences degrees. Additionally, the PL-MABAC emphasizes the distance from the border approximation area. The new CPT-PL-MAC is not only an efficient and reliable decision-making tool with direct computation algorithms and a steady solution, but also introduced the psychological factor of experts.

5Conclusion

The location selection of the express distribution centre is of great significance in the development of the express delivery industry. Therefore, a new PL-MAGDM method (CPT-PL-MABAC) is established to be applied to this issue. The main contributions of this article can be summarized as follows. Firstly, we introduce the CPT into the original MABAC method under PLTSs. The psychological factors of experts are introduced in the evaluation. Secondly, we improved the entropy method under PLTSs, which is characterized by the mean value of attributes as the reference point. Thirdly, we improved the distance formula between the evaluation values of the alternative and PLBBA. Finally, the new method enriches the decision-making method based on PLTS and enriches the model of location selection.

The CPT-PL-MABAC model is a stable decision-making tool with direct computation algorithms. Also, it can get comprehensive final sorting results because it considers the potential values of gains and losses. However, the method proposed is ineffective in the face of some problems when attribute weights and evaluation information are not completely known. Moreover, we only refer to reference points and value functions in CPT.

In future studies, we plan to deal with the situation where the weights are not completely known. Additionally, this method can be applied to other specific decision-making problems and many other unpredictable and fuzzy environments, for example, green energy supplier issues and other location selection issues.

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