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#'@title PFS similarity measure simWW3
#'@description PFS similarity measure values using simWW3 computation technique with membership, and non-membership values of two objects or set of objects.
#'@param ma PFS membership values for the data set x computed using either triangular or trapezoidal or guassian membership function
#'@param na PFS non-membership values for the data set x computed using either Sugeno and Terano's or Yager's non-membership function
#'@param mb PFS membership values for the data set y computed using either triangular or trapezoidal or guassian membership function
#'@param nb PFS non-membership values for the data set y computed using either Sugeno and Terano's or Yager's non-membership function
#'@param k A constant value, considered as 1
#'@return The PFS similarity values of data set y with data set x
#'@references G.Wei and Y.Wei. Similarity measures of pythagorean fuzzy sets based on the cosine function and their applications. International Journal of Intelligent Systems, 33(3):634 - 652, 2018.
#'@examples
#'x<-matrix(c(12,9,14,11,21,16,15,24,20,17,14,11),nrow=4)
#'y<-matrix(c(11,21,6),nrow=1)
#'a<-mn(x)
#'b<-std(x)
#'a1<-mn(y)
#'b1<-std(y)
#'lam<-0.5
#'ma<-memG(a,b,x)
#'na<-nonmemS(ma,lam)
#'mb<-memG(a1,b1,y)
#'nb<-nonmemS(mb,lam)
#'k<-1
#'simWW3(ma,na,mb,nb,k)
#'#[1] 0.7362461 0.7150021 0.9511755 0.9511755
#'@export
simWW3<-function(ma,na,mb,nb,k){
c<-matrix(0,nrow=nrow(ma),ncol=ncol(ma))
for (i in 1:nrow(ma)) {
for(j in 1:ncol(ma))
c[i,j]<-cos((pi/2)*max(abs(ma[i,j]^2-mb[k,j]^2),abs(na[i,j]^2-nb[k,j]^2)))
}
for(j in 1:ncol(c)){
sum<-(1/ncol(c))*rowSums(c)
}
sum
}
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