Having learned loads from answers on this site (thanks!), it's finally time to ask my own question.
I'm using R (tm and lsa packages) to create, clean and simplify, and then run LSA (latent semantic analysis) on, a corpus of about 15,000 text documents. I'm doing this in R 3.0.0 under Mac OS X 10.6.
For efficiency (and to cope with having too little RAM), I've been trying to use either the 'PCorpus' (backend database support supported by the 'filehash' package) option in tm, or the newer 'tm.plugin.dc' option for so-called 'distributed' corpus processing). But I don't really understand how either one works under the bonnet.
An apparent bug using DCorpus with tm_map (not relevant right now) led me to do some of the preprocessing work with the PCorpus option instead. And it takes hours. So I use R CMD BATCH to run a script doing things like:
> # load corpus from predefined directory path, > # and create backend database to support processing: > bigCcorp = PCorpus(bigCdir, readerControl = list(load=FALSE), dbControl = list(useDb = TRUE, dbName = "bigCdb", dbType = "DB1")) > # converting to lower case: > bigCcorp = tm_map(bigCcorp, tolower) > # removing stopwords: > stoppedCcorp = tm_map(bigCcorp, removeWords, stoplist)
Now, supposing my script crashes soon after this point, or I just forget to export the corpus in some other form, and then I restart R. The database is still there on my hard drive, full of nicely tidied-up data. Surely I can reload it back into the new R session, to carry on with the corpus processing, instead of starting all over again?
It feels like a noodle question... but no amount of dbInit() or dbLoad() or variations on the 'PCorpus()' function seem to work. Does anyone know the correct incantation?
I've scoured all the related documentation, and every paper and web forum I can find, but total blank - nobody seems to have done it. Or have I missed it?