Description Usage Arguments Value Note See Also Examples
sDmatCluster
is supposed to obtain clusters from a grid map. It
returns an object of class "sBase".
1 2 3 4 5 6 7 8 | sDmatCluster(
sMap,
which_neigh = 1,
distMeasure = c("mean", "median", "min", "max"),
constraint = TRUE,
clusterLinkage = c("average", "complete", "single", "bmh"),
reindexSeed = c("hclust", "svd", "none")
)
|
sMap |
an object of class "sMap" |
which_neigh |
which neighbors in 2D output space are used for the calculation. By default, it sets to "1" for direct neighbors, and "2" for neighbors within neighbors no more than 2, and so on |
distMeasure |
distance measure used to calculate distances in high-dimensional input space. It can be one of "median", "mean", "min" and "max" measures |
constraint |
logic whether further constraint applied. If TRUE, only consider those hexagons 1) with 2 or more neighbors; and 2) neighbors are not within minima already found (due to the same distance) |
clusterLinkage |
cluster linkage used to derive clusters. It can be "bmh", which accumulates a cluster just based on best-matching hexagons/rectanges but can not ensure each cluster is continuous. Instead, each cluster is continuous when using region-growing algorithm with one of "average", "complete" and "single" linkages |
reindexSeed |
the way to index seed. It can be "hclust" for reindexing seeds according to hierarchical clustering of patterns seen in seeds, "svd" for reindexing seeds according to svd of patterns seen in seeds, or "none" for seeds being simply increased by the hexagon indexes (i.e. always in an increasing order as hexagons radiate outwards) |
an object of class "sBase", a list with following components:
seeds
: the vector to store cluster seeds, i.e., a list of
local minima (in 2D output space) of distance matrix (in input space).
They are represented by the indexes of hexagons/rectangles
bases
: the vector with the length of nHex to store the
cluster memberships/bases, where nHex is the total number of
hexagons/rectanges in the grid
ig
: an igraph object storing neighbor relations between
bases, with node attributes 'name' (base), 'index', 'xcoord' and
'ycoord' (based on seeds)
hclust
: a hclust object storing tree-like relations
between bases (based on seed model vectors)
call
: the call that produced this result
The first item in the return "seeds" is the first cluster, whose memberships are those in the return "bases" that equals 1. The same relationship is held for the second item, and so on
sPipeline
, sDmatMinima
, sBMH
,
sNeighDirect
, sDistance
,
visDmatCluster
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 | # 1) generate an iid normal random matrix of 100x10
data <- matrix( rnorm(100*10,mean=0,sd=1), nrow=100, ncol=10)
# 2) get trained using by default setup
sMap <- sPipeline(data=data)
# 3) partition the grid map into clusters based on different criteria
# 3a) based on "bmh" criterion
# sBase <- sDmatCluster(sMap=sMap, which_neigh=1, distMeasure="median", clusterLinkage="bmh")
# 3b) using region-growing algorithm with linkage "average"
sBase <- sDmatCluster(sMap=sMap, which_neigh=1, distMeasure="median",
clusterLinkage="average")
# 4) visualise clusters/bases partitioned from the sMap
visDmatCluster(sMap,sBase)
|
Loading required package: hexbin
Start at 2018-05-24 05:05:08
First, define topology of a map grid (2018-05-24 05:05:08)...
Second, initialise the codebook matrix (61 X 10) using 'linear' initialisation, given a topology and input data (2018-05-24 05:05:08)...
Third, get training at the rough stage (2018-05-24 05:05:08)...
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Next, identify the best-matching hexagon/rectangle for the input data (2018-05-24 05:05:08)...
Finally, append the response data (hits and mqe) into the sMap object (2018-05-24 05:05:08)...
Below are the summaries of the training results:
dimension of input data: 100x10
xy-dimension of map grid: xdim=9, ydim=9, r=5
grid lattice: hexa
grid shape: suprahex
dimension of grid coord: 61x2
initialisation method: linear
dimension of codebook matrix: 61x10
mean quantization error: 5.23901546357726
Below are the details of trainology:
training algorithm: batch
alpha type: invert
training neighborhood kernel: gaussian
trainlength (x input data length): 7 at rough stage; 25 at finetune stage
radius (at rough stage): from 3 to 1
radius (at finetune stage): from 1 to 1
End at 2018-05-24 05:05:08
Runtime in total is: 0 secs
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