a variable named as model. The code below shows how to use
puts. Two outputs (model$x and model$y) were used to call
s function to generate a density curve. The result of running the
g code is shown in Figure 2.11.
.24,-1.24,0.74,0.38,1.49,0.19,0.30,
0.99,0.58,-0.46,1.17,-2.89,-2.04,
0.82,0.92,0.91,-0.88,1.06,0.95,0.44,
1.16,-1.12,10.75,4.05,3.23,7.85,
1.56,4.21,9.34,8.05)
density(x)
,nclass=20,prob=TRUE)
model$x,model$y)
g. 2.11. An illustration of using the output of the density function.
he K-nearest neighbour approach
arest neighbour approach estimates a density function for a data
ed on the density of a ball (or a spherical volume) centred at the
t with K nearest neighbours [Bailey and Jain, 1978]. Suppose a
nt is denoted by x and the number of the nearest neighbours is
by K. The K-nearest neighbour approach estimates the density for
int using the following equation, where N is the total number of
ts, d stands for the data dimension and ܸௗ is the volume of a ball
radius denoted as ܴሺݔሻ,
݂ሺݔሻൌܭ
ܰ
1
ܸௗܴሺݔሻ
(2.7)