X-Git-Url: https://git.auder.net/?a=blobdiff_plain;f=epclust%2FR%2Fclustering.R;h=87a5f914e137cb3f509443b58a1e59b80505b011;hb=3eef8d3df59ded9a281cff51f79fe824198a7427;hp=e27ea353e479fb8185afb124f02fbcab56c9d4e0;hpb=5c6529795907ba1b34d4552cbfd0e0cbb77cac0f;p=epclust.git diff --git a/epclust/R/clustering.R b/epclust/R/clustering.R index e27ea35..87a5f91 100644 --- a/epclust/R/clustering.R +++ b/epclust/R/clustering.R @@ -1,71 +1,85 @@ -oneIteration = function(..........) +# Cluster one full task (nb_curves / ntasks series) +clusteringTask = function(indices,getSeries,getSeriesForSynchrones,synchrones_file, + getCoefs,K1,K2,nb_series_per_chunk,ncores,to_file,ftype) { - cl_clust = parallel::makeCluster(ncores_clust) - parallel::clusterExport(cl_clust, .............., envir=........) - indices_clust = indices_task[[i]] - repeat - { - nb_workers = max( 1, round( length(indices_clust) / nb_series_per_chunk ) ) - indices_workers = list() - #indices[[i]] == (start_index,number_of_elements) - for (i in 1:nb_workers) - { - upper_bound = ifelse( i 0) + cl = parallel::makeCluster(ncores) + repeat { - curves = computeSynchrones(cl) - dists = computeWerDists(curves) - cl = computeClusters(dists, K2) + nb_workers = max( 1, round( length(indices) / nb_series_per_chunk ) ) + indices_workers = lapply(seq_len(nb_workers), function(i) { + upper_bound = ifelse( i serialize et append to file - -computeSynchrones = function(...) +# Cluster a chunk of series inside one task (~max nb_series_per_chunk) +computeClusters2 = function(indices, K2, getSeries, getSeriesForSynchrones, to_file, + nb_series_per_chunk, ftype) { + curves = computeSynchrones(indices, getSeries, getSeriesForSynchrones, nb_series_per_chunk) + dists = computeWerDists(curves) + medoids = cluster::pam(dists, K2, diss=TRUE)$medoids + if (to_file) + { + serialize(medoids, synchrones_file, ftype, nb_series_per_chunk) + return (NULL) + } + medoids +} +# Compute the synchrones curves (sum of clusters elements) from a clustering result +computeSynchrones = function(indices, getSeries, getSeriesForSynchrones, nb_series_per_chunk) +{ + #les getSeries(indices) sont les medoides --> init vect nul pour chacun, puis incr avec les + #courbes (getSeriesForSynchrones) les plus proches... --> au sens de la norme L2 ? + medoids = getSeries(indices) + K = nrow(medoids) + synchrones = matrix(0, nrow=K, ncol=ncol(medoids)) + counts = rep(0,K) + index = 1 + repeat + { + series = getSeriesForSynchrones((index-1)+seq_len(nb_series_per_chunk)) + if (is.null(series)) + break + #get medoids indices for this chunk of series + index = which.min( rowSums( sweep(medoids, 2, series[i,], '-')^2 ) ) + synchrones[index,] = synchrones[index,] + series[i,] + counts[index] = counts[index] + 1 + } + #NOTE: odds for some clusters to be empty? (when series already come from stage 2) + synchrones = sweep(synchrones, 1, counts, '/') } -#Entrée : courbes synchrones, soit après étape 1 itérée, soit après chaqure étape 1 -computeWerDist = function(conso) +# Compute the WER distance between the synchrones curves (in rows) +computeWerDist = function(curves) { if (!require("Rwave", quietly=TRUE)) stop("Unable to load Rwave library") - n <- nrow(conso) - delta <- ncol(conso) + n <- nrow(curves) + delta <- ncol(curves) #TODO: automatic tune of all these parameters ? (for other users) nvoice <- 4 - # noctave = 2^13 = 8192 half hours ~ 180 days ; ~log2(ncol(conso)) + # noctave = 2^13 = 8192 half hours ~ 180 days ; ~log2(ncol(curves)) noctave = 13 # 4 here represent 2^5 = 32 half-hours ~ 1 day #NOTE: default scalevector == 2^(0:(noctave * nvoice) / nvoice) * s0 (?) @@ -79,7 +93,7 @@ computeWerDist = function(conso) # (normalized) observations node with CWT Xcwt4 <- lapply(seq_len(n), function(i) { - ts <- scale(ts(conso[i,]), center=TRUE, scale=scaled) + ts <- scale(ts(curves[i,]), center=TRUE, scale=scaled) totts.cwt = Rwave::cwt(ts,totnoct,nvoice,w0,plot=0) ts.cwt = totts.cwt[,s0log:(s0log+noctave*nvoice)] #Normalization @@ -94,7 +108,7 @@ computeWerDist = function(conso) { for (j in (i+1):n) { - #TODO: later, compute CWT here (because not enough storage space for 32M series) + #TODO: later, compute CWT here (because not enough storage space for 200k series) # 'circular=TRUE' is wrong, should just take values on the sides; to rewrite in C num <- filter(Mod(Xcwt4[[i]] * Conj(Xcwt4[[j]])), fcoefs, circular=TRUE) WX <- filter(Mod(Xcwt4[[i]] * Conj(Xcwt4[[i]])), fcoefs, circular=TRUE)