#' two stage procedure in parallel (see details).
#' Input series must be sampled on the same time grid, no missing values.
#'
-#' @details Summary of the function execution flow:
+#' Summary of the function execution flow:
+#' \enumerate{
+#' \item Compute and serialize all contributions, obtained through discrete wavelet
+#' decomposition (see Antoniadis & al. [2013])
+#' \item Divide series into \code{ntasks} groups to process in parallel. In each task:
#' \enumerate{
-#' \item Compute and serialize all contributions, obtained through discrete wavelet
-#' decomposition (see Antoniadis & al. [2013])
-#' \item Divide series into \code{ntasks} groups to process in parallel. In each task:
-#' \enumerate{
-#' \item iterate the first clustering algorithm on its aggregated outputs,
-#' on inputs of size \code{nb_items_clust}
-#' \item optionally, if WER=="mix":
-#' a) compute the K1 synchrones curves,
-#' b) compute WER distances (K1xK1 matrix) between synchrones and
-#' c) apply the second clustering algorithm
-#' }
-#' \item Launch a final task on the aggregated outputs of all previous tasks:
-#' in the case WER=="end" this task takes indices in input, otherwise
-#' (medoid) curves
+#' \item iterate the first clustering algorithm on its aggregated outputs,
+#' on inputs of size \code{nb_items_clust1}
+#' \item optionally, if WER=="mix":
+#' a) compute the K1 synchrones curves,
+#' b) compute WER distances (K1xK1 matrix) between synchrones and
+#' c) apply the second clustering algorithm
#' }
-#' The main argument -- \code{getSeries} -- has a quite misleading name, since it can be
-#' either a [big.]matrix, a CSV file, a connection or a user function to retrieve
-#' series; the name was chosen because all types of arguments are converted to a function.
-#' When \code{getSeries} is given as a function, it must take a single argument,
-#' 'indices', integer vector equal to the indices of the curves to retrieve;
-#' see SQLite example. The nature and role of other arguments should be clear
+#' \item Launch a final task on the aggregated outputs of all previous tasks:
+#' in the case WER=="end" this task takes indices in input, otherwise
+#' (medoid) curves
+#' }
+#' \cr
+#' The main argument -- \code{getSeries} -- has a quite misleading name, since it can be
+#' either a [big.]matrix, a CSV file, a connection or a user function to retrieve
+#' series; the name was chosen because all types of arguments are converted to a function.
+#' When \code{getSeries} is given as a function, it must take a single argument,
+#' 'indices', integer vector equal to the indices of the curves to retrieve;
+#' see SQLite example. The nature and role of other arguments should be clear.
+#' WARNING: the return value must be a matrix (in columns), or NULL if no matches.
+#' \cr
+#' Note: Since we don't make assumptions on initial data, there is a possibility that
+#' even when serialized, contributions or synchrones do not fit in RAM. For example,
+#' 30e6 series of length 100,000 would lead to a +4Go contribution matrix. Therefore,
+#' it's safer to place these in (binary) files; that's what we do.
#'
#' @param getSeries Access to the (time-)series, which can be of one of the three
#' following types:
#' @param K1 Number of clusters to be found after stage 1 (K1 << N [number of series])
#' @param K2 Number of clusters to be found after stage 2 (K2 << K1)
#' @param nb_series_per_chunk (Maximum) number of series to retrieve in one batch
-#' @param algo_clust1 Clustering algorithm for stage 1. A function which takes (data, K)
+#' @param algoClust1 Clustering algorithm for stage 1. A function which takes (data, K)
#' as argument where data is a matrix in columns and K the desired number of clusters,
-#' and outputs K medoids ranks. Default: PAM
-#' @param algo_clust2 Clustering algorithm for stage 2. A function which takes (dists, K)
+#' and outputs K medoids ranks. Default: PAM. In our method, this function is called
+#' on iterated medoids during stage 1
+#' @param algoClust2 Clustering algorithm for stage 2. A function which takes (dists, K)
#' as argument where dists is a matrix of distances and K the desired number of clusters,
-#' and outputs K clusters representatives (curves). Default: k-means
+#' and outputs K medoids ranks. Default: PAM. In our method, this function is called
+#' on a matrix of K1 x K1 (WER) distances computed between synchrones
#' @param nb_items_clust1 (~Maximum) number of items in input of the clustering algorithm
#' for stage 1. At worst, a clustering algorithm might be called with ~2*nb_items_clust1
#' items; but this could only happen at the last few iterations.
#' @param contrib_type Type of contribution: "relative", "logit" or "absolute" (any prefix)
#' @param WER "end" to apply stage 2 after stage 1 has fully iterated, or "mix" to apply
#' stage 2 at the end of each task
+#' @param nvoice Number of voices within each octave for CWT computations
#' @param random TRUE (default) for random chunks repartition
#' @param ntasks Number of tasks (parallel iterations to obtain K1 [if WER=="end"]
#' or K2 [if WER=="mix"] medoids); default: 1.
#' ref_series = matrix( c(cos(x),cos(2*x),cos(3*x),sin(x),sin(2*x),sin(3*x)), ncol=6 )
#' library(wmtsa)
#' series = do.call( cbind, lapply( 1:6, function(i)
-#' do.call(cbind, wmtsa::wavBootstrap(ref_series[i,], n.realization=400)) ) )
+#' do.call(cbind, wmtsa::wavBootstrap(ref_series[,i], n.realization=400)) ) )
#' #dim(series) #c(2400,10001)
#' medoids_ascii = claws(series, K1=60, K2=6, 200, verbose=TRUE)
#'
#' request <- paste(request, indexToID_inDB[i], ",", sep="")
#' request <- paste(request, ")", sep="")
#' df_series <- dbGetQuery(series_db, request)
-#' as.matrix(df_series[,"value"], nrow=serie_length)
+#' if (length(df_series) >= 1)
+#' as.matrix(df_series[,"value"], nrow=serie_length)
+#' else
+#' NULL
#' }
#' medoids_db = claws(getSeries, K1=60, K2=6, 200))
#' dbDisconnect(series_db)
#' digest::sha1(medoids_db)
#' }
#' @export
-claws <- function(getSeries, K1, K2, nb_series_per_chunk,
- nb_items_clust1=7*K1,
- algo_clust1=function(data,K) cluster::pam(data,K,diss=FALSE),
- algo_clust2=function(dists,K) stats::kmeans(dists,K,iter.max=50,nstart=3),
- wav_filt="d8", contrib_type="absolute",
- WER="end",
- random=TRUE,
- ntasks=1, ncores_tasks=1, ncores_clust=4,
- sep=",",
- nbytes=4, endian=.Platform$endian,
- verbose=FALSE, parll=TRUE)
+claws <- function(getSeries, K1, K2, nb_series_per_chunk, nb_items_clust1=7*K1,
+ algoClust1=function(data,K) cluster::pam(t(data),K,diss=FALSE)$id.med,
+ algoClust2=function(dists,K) cluster::pam(dists,K,diss=TRUE)$id.med,
+ wav_filt="d8", contrib_type="absolute", WER="end", nvoice=4, random=TRUE,
+ ntasks=1, ncores_tasks=1, ncores_clust=4, sep=",", nbytes=4,
+ endian=.Platform$endian, verbose=FALSE, parll=TRUE)
{
# Check/transform arguments
if (!is.matrix(getSeries) && !bigmemory::is.big.matrix(getSeries)
stop("'K1' cannot exceed 'nb_series_per_chunk'")
nb_items_clust1 <- .toInteger(nb_items_clust1, function(x) x>K1)
random <- .toLogical(random)
- tryCatch
- (
- {ignored <- wavelets::wt.filter(wav_filt)},
- error = function(e) stop("Invalid wavelet filter; see ?wavelets::wt.filter")
- )
+ tryCatch( {ignored <- wavelets::wt.filter(wav_filt)},
+ error = function(e) stop("Invalid wavelet filter; see ?wavelets::wt.filter") )
ctypes = c("relative","absolute","logit")
contrib_type = ctypes[ pmatch(contrib_type,ctypes) ]
if (is.na(contrib_type))
verbose <- .toLogical(verbose)
parll <- .toLogical(parll)
- # Since we don't make assumptions on initial data, there is a possibility that even
- # when serialized, contributions or synchrones do not fit in RAM. For example,
- # 30e6 series of length 100,000 would lead to a +4Go contribution matrix. Therefore,
- # it's safer to place these in (binary) files, located in the following folder.
- bin_dir <- ".epclust_bin/"
- dir.create(bin_dir, showWarnings=FALSE, mode="0755")
-
# Binarize series if getSeries is not a function; the aim is to always use a function,
# to uniformize treatments. An equally good alternative would be to use a file-backed
- # bigmemory::big.matrix, but it would break the uniformity.
+ # bigmemory::big.matrix, but it would break the "all-is-function" pattern.
if (!is.function(getSeries))
{
if (verbose)
- cat("...Serialize time-series\n")
- series_file = paste(bin_dir,"data",sep="") ; unlink(series_file)
- binarize(getSeries, series_file, nb_series_per_chunk, sep, nbytes, endian)
+ cat("...Serialize time-series (or retrieve past binary file)\n")
+ series_file = ".series.bin"
+ if (!file.exists(series_file))
+ binarize(getSeries, series_file, nb_series_per_chunk, sep, nbytes, endian)
getSeries = function(inds) getDataInFile(inds, series_file, nbytes, endian)
}
# Serialize all computed wavelets contributions into a file
- contribs_file = paste(bin_dir,"contribs",sep="") ; unlink(contribs_file)
+ contribs_file = ".contribs.bin"
index = 1
nb_curves = 0
if (verbose)
- cat("...Compute contributions and serialize them\n")
- nb_curves = binarizeTransform(getSeries,
- function(series) curvesToContribs(series, wf, ctype),
- contribs_file, nb_series_per_chunk, nbytes, endian)
+ cat("...Compute contributions and serialize them (or retrieve past binary file)\n")
+ if (!file.exists(contribs_file))
+ {
+ nb_curves = binarizeTransform(getSeries,
+ function(series) curvesToContribs(series, wav_filt, contrib_type),
+ contribs_file, nb_series_per_chunk, nbytes, endian)
+ }
+ else
+ {
+ # TODO: duplicate from getDataInFile() in de_serialize.R
+ contribs_size = file.info(contribs_file)$size #number of bytes in the file
+ contrib_length = readBin(contribs_file, "integer", n=1, size=8, endian=endian)
+ nb_curves = (contribs_size-8) / (nbytes*contrib_length)
+ }
getContribs = function(indices) getDataInFile(indices, contribs_file, nbytes, endian)
# A few sanity checks: do not continue if too few data available.
if (nb_series_per_task < K2)
stop("Too many tasks: less series in one task than final number of clusters")
- # Generate a random permutation of 1:N (if random==TRUE); otherwise just use arrival
- # (storage) order.
+ # Generate a random permutation of 1:N (if random==TRUE);
+ # otherwise just use arrival (storage) order.
indices_all = if (random) sample(nb_curves) else seq_len(nb_curves)
# Split (all) indices into ntasks groups of ~same size
indices_tasks = lapply(seq_len(ntasks), function(i) {
# Initialize parallel runs: outfile="" allow to output verbose traces in the console
# under Linux. All necessary variables are passed to the workers.
cl = parallel::makeCluster(ncores_tasks, outfile="")
- varlist = c("getSeries","getContribs","K1","K2","algo_clust1","algo_clust2",
- "nb_series_per_chunk","nb_items_clust","ncores_clust","sep",
- "nbytes","endian","verbose","parll")
- if (WER=="mix")
+ varlist = c("getSeries","getContribs","K1","K2","algoClust1","algoClust2",
+ "nb_series_per_chunk","nb_items_clust1","ncores_clust",
+ "nvoice","sep","nbytes","endian","verbose","parll")
+ if (WER=="mix" && ntasks>1)
varlist = c(varlist, "medoids_file")
parallel::clusterExport(cl, varlist, envir = environment())
}
# where n = N / ntasks, N being the total number of curves.
runTwoStepClustering = function(inds)
{
- # When running in parallel, the environment is blank: we need to load required
+ # When running in parallel, the environment is blank: we need to load the required
# packages, and pass useful variables.
if (parll && ntasks>1)
require("epclust", quietly=TRUE)
indices_medoids = clusteringTask1(
- inds, getContribs, K1, nb_series_per_chunk, ncores_clust, verbose, parll)
- if (WER=="mix")
+ inds, getContribs, K1, algoClust1, nb_series_per_chunk, ncores_clust, verbose, parll)
+ if (WER=="mix" && ntasks>1)
{
- if (parll && ntasks>1)
+ if (parll)
require("bigmemory", quietly=TRUE)
medoids1 = bigmemory::as.big.matrix( getSeries(indices_medoids) )
- medoids2 = clusteringTask2(medoids1, K2, getSeries, nb_curves, nb_series_per_chunk,
- nbytes, endian, ncores_clust, verbose, parll)
+ medoids2 = clusteringTask2(medoids1, K2, algoClust2, getSeries, nb_curves,
+ nb_series_per_chunk, nvoice, nbytes, endian, ncores_clust, verbose, parll)
binarize(medoids2, medoids_file, nb_series_per_chunk, sep, nbytes, endian)
return (vector("integer",0))
}
# Synchrones (medoids) need to be stored only if WER=="mix"; indeed in this case, every
# task output is a set of new (medoids) curves. If WER=="end" however, output is just a
# set of indices, representing some initial series.
- if (WER=="mix")
- {medoids_file = paste(bin_dir,"medoids",sep="") ; unlink(medoids_file)}
+ if (WER=="mix" && ntasks>1)
+ {medoids_file = ".medoids.bin" ; unlink(medoids_file)}
if (verbose)
{
}
# As explained above, indices will be assigned to ntasks*K1 medoids indices [if WER=="end"],
- # or nothing (empty vector) if WER=="mix"; in this case, medoids (synchrones) are stored
- # in a file.
+ # or nothing (empty vector) if WER=="mix"; in this case, synchrones are stored in a file.
indices <-
if (parll && ntasks>1)
unlist( parallel::parLapply(cl, indices_tasks, runTwoStepClustering) )
parallel::stopCluster(cl)
# Right before the final stage, two situations are possible:
- # a. data to be processed now sit in binary format in medoids_file (if WER=="mix")
+ # a. data to be processed now sit in a binary format in medoids_file (if WER=="mix")
# b. data still is the initial set of curves, referenced by the ntasks*K1 indices
# So, the function getSeries() will potentially change. However, computeSynchrones()
# requires a function retrieving the initial series. Thus, the next line saves future
# conditional instructions.
getRefSeries = getSeries
- if (WER=="mix")
+ if (WER=="mix" && ntasks>1)
{
indices = seq_len(ntasks*K2)
# Now series (synchrones) must be retrieved from medoids_file
if (verbose)
cat("...Serialize contributions computed on synchrones\n")
ignored = binarizeTransform(getSeries,
- function(series) curvesToContribs(series, wf, ctype),
+ function(series) curvesToContribs(series, wav_filt, contrib_type),
contribs_file, nb_series_per_chunk, nbytes, endian)
}
-#TODO: check THAT
-
-
# Run step2 on resulting indices or series (from file)
if (verbose)
cat("...Run final // stage 1 + stage 2\n")
- indices_medoids = clusteringTask1(
- indices, getContribs, K1, nb_series_per_chunk, ncores_tasks*ncores_clust, verbose, parll)
+ indices_medoids = clusteringTask1(indices, getContribs, K1, algoClust1,
+ nb_series_per_chunk, ncores_tasks*ncores_clust, verbose, parll)
medoids1 = bigmemory::as.big.matrix( getSeries(indices_medoids) )
- medoids2 = clusteringTask2(medoids1, K2, getRefSeries, nb_curves, nb_series_per_chunk,
- nbytes, endian, ncores_tasks*ncores_clust, verbose, parll)
+ medoids2 = clusteringTask2(medoids1, K2, algoClust2, getRefSeries, nb_curves,
+ nb_series_per_chunk, nvoice, nbytes, endian, ncores_tasks*ncores_clust, verbose, parll)
- # Cleanup: remove temporary binary files and their folder
- unlink(bin_dir, recursive=TRUE)
+ # Cleanup: remove temporary binary files
+ tryCatch(
+ {unlink(series_file); unlink(contribs_file); unlink(medoids_file)},
+ error = function(e) {})
# Return medoids as a standard matrix, since K2 series have to fit in RAM
# (clustering algorithm 1 takes K1 > K2 of them as input)
#' @return A [big.]matrix of size log(L) x n containing contributions in columns
#'
#' @export
-curvesToContribs = function(series, wav_filt, contrib_type)
+curvesToContribs = function(series, wav_filt, contrib_type, coin=FALSE)
{
+ series = as.matrix(series) #1D serie could occur
L = nrow(series)
D = ceiling( log2(L) )
+ # Series are interpolated to all have length 2^D
nb_sample_points = 2^D
apply(series, 2, function(x) {
interpolated_curve = spline(1:L, x, n=nb_sample_points)$y
- W = wavelets::dwt(interpolated_curve, filter=wf, D)@W
+ W = wavelets::dwt(interpolated_curve, filter=wav_filt, D)@W
+ # Compute the sum of squared discrete wavelet coefficients, for each scale
nrj = rev( sapply( W, function(v) ( sqrt( sum(v^2) ) ) ) )
if (contrib_type!="absolute")
nrj = nrj / sum(nrj)