\name{tree_split} \alias{tree_split} \title{Split a Leaf in a Hierarchical Clustering Model} \description{ Adds an additional binary partition to an existing hierarchical clustering model produced by one of mcdc, mddc and ncutdc. } \usage{ tree_split(sol, node, ...) } \arguments{ \item{sol}{a clustering solution arising from one of the functions mcdc, mddc and ncutdc.} \item{node}{the node to be further partitioned. can be either an integer specifying the node number in sol$nodes or a vector of length two specifying c(depth, position at depth) of the node.} \item{...}{any modifications to parameters used in optimisation. these should have the same names and types as the corresponding arguments for the method used to construct sol.} } \value{ a list with the same components as sol. the $args field will reflect any changes included in ... above. } \examples{ ## load the optidigits dataset data(optidigits) ## cluster using minimum normalised cut hyperplanes, ## assuming no domain knowledge begin with 8 clusters sol <- ncutdc(optidigits$x, 8) ## visualise solution tree_plot(sol, node.numbers = TRUE) ## node 13 shows evidence of multiple clusters. Inspect this node more closely node_plot(sol, 13) ## split node 13 sol_new <- tree_split(sol, 13) ## compare the solutions using external cluster validity metrics cluster_performance(sol$cluster, optidigits$c) cluster_performance(sol_new$cluster, optidigits$c) } \keyword{file}