i am trying to run the 20 news text classification example of the Stanford-nlp classifier with n-grams(n=>1,2,3) as features but i continue getting out of memory error. Following the properties that i am use and the command to run it:
2.useSplitWordNGrams=true 2.maxWordNGramLeng=3 2.minWordNGramLeng=1 java -mx1800m -cp $STANFORD_CLASSIFIER_JAR edu.stanford.nlp.classify.ColumnDataClassifier \ -trainFile 20news-devtrain.txt -testFile 20news-devtest.txt \ -2.useSplitWords -2.splitWordsRegexp "\\s+" -prop 20news1.prop
For unigrams the program runs as expected. The problem is that i have only 4G memory available and i was wondering if it is possible to load big models like these one with such few memory.
I tried to reduce the size of the data by translating each word(after tokenization) of each article to a unique integer id by keeping a hash in memory with "word,id" pairs. This method manage to decrease the size 25% down, but stil didnt manage to built the bi-gram model classifier.
I would like to use the stanford-nlp on very large data(web pages) so i really need to know if i can get it running with a reasonable amount of memory. Any idea will be much appreciated!!