This section describes a methodology for achieving effective NPIS by means of fuzzy BWM. It consists of two major phases, namely (i) hierarchical structure for state-of-the-art NPIS, and (ii) fuzzy BWM for the NPIS. Overall, a systematic approach is developed for conducting pairwise comparisons by decision makers to rank and select the most appropriate new product idea for companies.
3.2. Fuzzy Best-Worst Method for the NPIS
In order to select the most suitable new product idea, the fuzzy BWM, which is promising to determine fuzzy weights of criteria and sub-criteria, is adopted in the proposed model [
23]. Instead of assigning the Saaty’s scale on the pairwise comparisons, a set of linguistic terms associated with the corresponding triangular fuzzy numbers are applied for enhanced ease of data collection. After conducting the fuzzy BWM, the weights of criteria and sub-criteria are presented in the form of triangular fuzzy numbers, called fuzzy weights, which requires a de-fuzzificiation process to convert into crisp values. Such an approach can contribute to the area of new product idea selection by considering various criteria and sub-criteria defined in the hierarchical structure.
Figure 3 shows the mechanism of using the fuzzy BWM to rank a set of alternatives for the NPIS.
According to the hierarchy structure, the goal, criteria, sub-criteria, and alternatives are defined for the new product idea selection problem, with n criteria and n × m sub-criteria, namely, Cn = {C1, C2, …, Cn} and Cnm = {C11, C12, …, C1m, C21, …, C2m, …, Cnm}, respectively. From the fuzzy BWM, the best (most important) and worst (least important) factors, which are the criteria or sub-criteria, are identified in each pairwise comparison to evaluate the weights, where the best and worst criteria are labelled as Cb and Cw, respectively. Subsequently, the fuzzy reference comparisons can be conducted for the pairwise comparisons with two scenarios, namely (i) between the best criteria and the others and (ii) between the worst criteria and the others. Each pairwise comparison is conducted by using linguistic terms, and the linguistics term i is represented by triangular fuzzy numbers (li, mi, ui), where li, mi, and ui denote the lower bound, mid-point, and upper bound for the linguistic term, respectively. For example, the linguistics term “weakly important” can be represented by the triangular fuzzy number (1, 2, 3). According to the defined hierarchical structure, the pairwise comparisons are conducted in three scenarios: (i) between five criteria, (ii) between three sub-criteria at each criterion, and (iii) between five alternatives at each sub-criterion. Moreover, the equivalent fuzzy number of the triangular fuzzy number can be calculated using graded mean integration representation (GMIR), which is referred to as the graded λ-preference integration representation (where λ = 1/2 and k = 1).
To deal with the computations in the optimisation problem in the fuzzy BWM, two definitions, namely (i) operations of triangular fuzzy numbers and (ii) GMIR of triangular fuzzy numbers, are elaborated as follows:
Definition 1. Let linguistic terms A and B be associated with triangular fuzzy numbers (lA, mA, uA) and (lB, mB, uB), respectively, where −∞ < lA ≤ mA ≤ uA < ∞ and −∞ < lB ≤ mB ≤ uB < ∞. The addition and subtraction between two triangular fuzzy numbers are referred to in Equations (8) and (9) [28]. Moreover, assuming that two fuzzy numbers are on the same sign, the multiplication and division between two triangular fuzzy numbers are referred to in Equations (10) and (11) [
28].
Definition 2. The evaluation of GMIR for a triangular fuzzy number is rooted from graded λ-preference integration representation, where λ = 1/2 at 1st order plane curve fuzzy numbers (k = 1) for the linguistic term A associated with triangular fuzzy number (lA, mA, uA) [29], as in Equation (5). When decision makers assign the appropriate rates in the pairwise comparison, the corresponding vectors can be formulated to optimize fuzzy weights. The objective to determine the optimal fuzzy weights is to minimize the absolute gap
ξ such that the differences between
wb/
wj and triangular fuzzy number of the best criterion
Ab, and between
wj/
ww and triangular fuzzy number of the worst criterion
Aw, are minimized. The factors
wb,
ww, and
wj denote the weights to be determined for the best criterion, the worst criterion, and other criteria
j, respectively. The objective function for minimizing the absolute gap
ξ, which is the
k value in (
l,
m,
u), is formulated, as in Equation (6). The constraints of this optimization problem are presented as follows: constraint (7) examines the absolute gap between the
wb/
wj and triangular fuzzy number of the best criterion
Ab, which is limited to
ξ; similarly, constraint (8) examines the absolute gap between the
wj/
ww and triangular fuzzy number of the best criterion
Aw, which is limited to
ξ; constraint (9) calculates the triangular fuzzy number using GMIR, and the sum of GMIR among all criteria is equal to 1; constraint (10) ensures the reasonable range of triangular fuzzy number (
l,
m,
u); and constraint (11) ensures the non-negativity integrality of the absolute gap
ξ.
Subject to the following:
Therefore, the outcome of this optimization problem determines the value of the absolute gap
ξ, and fuzzy weights of the major criteria and sub-criteria for the NPIS. After the optimisation problems to minimise the absolute gaps are solved, the results of (i) adjusted weights of criteria
ωi for the major criterion
i, (ii) adjusted weights of sub-criteria
ωij for sub-criterion
j under criterion
i, and (iii) priority vector
vijk for sub-criterion
j under criterion
i at alternative
k can be obtained. From the priority vector, the value
vijk represents the specific priority value of the alternative under the designated criteria and sub-criteria. Eventually, the composited weight
γk for alternative
i can be computed by aggregating the adjusted weights and priority vectors, as in Equation (12), where there are five criteria and each criterion has three corresponding sub-criteria. The sum of products between values of the priority vector and weights of three sub-criteria are calculated, which are used to compute the sum of products with five major criteria. Therefore, the new product ideas can be ranked in a systematic manner, while the most appropriate idea with respect to five dimensions can be selected. Regarding the group decision-making process, the finalized weight
for alternative
k is updated by averaging all composited weights from the total number of decision makers.