| Encoding: | UTF-8 | 
| Type: | Package | 
| Title: | K* Nearest Neighbors Algorithm | 
| Version: | 0.1.2 | 
| Description: | Prediction with k* nearest neighbor algorithm based on a publication by Anava and Levy (2016) <doi:10.48550/arXiv.1701.07266>. | 
| License: | GPL-2 | GPL-3 [expanded from: GPL (≥ 2)] | 
| Author: | Kei Nakagawa | 
| Maintainer: | Kei Nakagawa <kei.nak.0315@gmail.com> | 
| LazyData: | TRUE | 
| Imports: | Rcpp | 
| Depends: | R(≥ 3.0.2) | 
| LinkingTo: | Rcpp(≥ 0.10.6) | 
| RoxygenNote: | 6.1.1 | 
| NeedsCompilation: | yes | 
| Packaged: | 2019-03-28 09:53:44 UTC; SSunix | 
| Repository: | CRAN | 
| Date/Publication: | 2019-04-11 12:02:37 UTC | 
This function calculates the prediction value of k* nearest neighbors algorithm.
Description
This function calculates the prediction value of k* nearest neighbors algorithm.
Usage
ksNN(Label, Distance, L_C = 1)
Arguments
| Label | vectors of the known labels of the samples. | 
| Distance | vectors of the distance between the target sample we want to predict and the other samples. | 
| L_C | parameter of k* nearest neighbors algorithm. | 
Value
the prediction value(pred) and the weight of the samples(alpha).
Note
This algorithm is based on Anava and Levy(2017).
Examples
  library(ksNN)
  set.seed(1)
  #make the nonlinear regression problem
  X<-runif(100)
  Y<-X^6-3*X^3+5*X^2+2
  suffle<-order(rnorm(length(X)))
  X<-X[suffle]
  Y<-Y[suffle]
  test_X<-X[1]
  test_Y<-Y[1]
  train_X<-X[-1]
  train_Y<-Y[-1]
  Label<-train_Y
  Distance<-sqrt((test_X-train_X)^2)
  pred_ksNN<-ksNN(Label,Distance,L_C=1)
  #the predicted value with k*NN
  pred_ksNN$pred
  #the 'true' value
  test_Y
This function calculates the prediction value of k* nearest neighbors algorithm.
Description
This function calculates the prediction value of k* nearest neighbors algorithm.
Usage
rcpp_ksNN(Label, Distance, L_C = 1)
Arguments
| Label | vectors of the known labels of the samples. | 
| Distance | vectors of the distance between the target sample we want to predict and the other samples. | 
| L_C | parameter of k* nearest neighbors algorithm. | 
Value
the prediction value(pred) and the weight of the samples(alpha).
Note
This algorithm is based on Anava and Levy(2017).
Examples
  library(ksNN)
  set.seed(1)
  #make the nonlinear regression problem
  X<-runif(100)
  Y<-X^6-3*X^3+5*X^2+2
  suffle<-order(rnorm(length(X)))
  X<-X[suffle]
  Y<-Y[suffle]
  test_X<-X[1]
  test_Y<-Y[1]
  train_X<-X[-1]
  train_Y<-Y[-1]
  Label<-train_Y
  Distance<-sqrt((test_X-train_X)^2)
  pred_ksNN<-rcpp_ksNN(Label,Distance,L_C=1)
  #the predicted value with k*NN
  pred_ksNN$pred
  #the 'true' value
  test_Y