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egs/hkust/s5/local/hkust_train_lms.sh 3.38 KB
8dcb6dfcb   Yannick Estève   first commit
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  #!/bin/bash
  
  
  # To be run from one directory above this script.
  
  
  text=data/local/train/text
  lexicon=data/local/dict/lexicon.txt
  
  for f in "$text" "$lexicon"; do
    [ ! -f $x ] && echo "$0: No such file $f" && exit 1;
  done
  
  # This script takes no arguments.  It assumes you have already run
  # swbd_p1_data_prep.sh.
  # It takes as input the files
  #data/local/train/text
  #data/local/dict/lexicon.txt
  dir=data/local/lm
  mkdir -p $dir
  
  export LC_ALL=C # You'll get errors about things being not sorted, if you
                  # have a different locale.
  kaldi_lm=`which train_lm.sh`
  if [ ! -x $kaldi_lm ]; then
    echo "$0: train_lm.sh is not found. That might mean it's not installed"
    echo "$0: or it is not added to PATH"
    echo "$0: Use the script tools/extra/install_kaldi_lm.sh to install it"
    exit 1
  fi
  
  cleantext=$dir/text.no_oov
  
  cat $text | awk -v lex=$lexicon 'BEGIN{while((getline<lex) >0){ seen[$1]=1; } }
    {for(n=1; n<=NF;n++) {  if (seen[$n]) { printf("%s ", $n); } else {printf("<UNK> ");} } printf("
  ");}' \
    > $cleantext || exit 1;
  
  
  cat $cleantext | awk '{for(n=2;n<=NF;n++) print $n; }' | sort | uniq -c | \
     sort -nr > $dir/word.counts || exit 1;
  
  
  # Get counts from acoustic training transcripts, and add  one-count
  # for each word in the lexicon (but not silence, we don't want it
  # in the LM-- we'll add it optionally later).
  cat $cleantext | awk '{for(n=2;n<=NF;n++) print $n; }' | \
    cat - <(grep -w -v '!SIL' $lexicon | awk '{print $1}') | \
     sort | uniq -c | sort -nr > $dir/unigram.counts || exit 1;
  
  # note: we probably won't really make use of <UNK> as there aren't any OOVs
  cat $dir/unigram.counts  | awk '{print $2}' | get_word_map.pl "<s>" "</s>" "<UNK>" > $dir/word_map \
     || exit 1;
  
  # note: ignore 1st field of train.txt, it's the utterance-id.
  cat $cleantext | awk -v wmap=$dir/word_map 'BEGIN{while((getline<wmap)>0)map[$1]=$2;}
    { for(n=2;n<=NF;n++) { printf map[$n]; if(n<NF){ printf " "; } else { print ""; }}}' | gzip -c >$dir/train.gz \
     || exit 1;
  
  train_lm.sh --arpa --lmtype 3gram-mincount $dir || exit 1;
  
  # LM is small enough that we don't need to prune it (only about 0.7M N-grams).
  # Perplexity over 128254.000000 words is 90.446690
  
  # note: output is
  # data/local/lm/3gram-mincount/lm_unpruned.gz
  
  exit 0
  
  
  # From here is some commands to do a baseline with SRILM (assuming
  # you have it installed).
  heldout_sent=10000 # Don't change this if you want result to be comparable with
      # kaldi_lm results
  sdir=$dir/srilm # in case we want to use SRILM to double-check perplexities.
  mkdir -p $sdir
  cat $cleantext | awk '{for(n=2;n<=NF;n++){ printf $n; if(n<NF) printf " "; else print ""; }}' | \
    head -$heldout_sent > $sdir/heldout
  cat $cleantext | awk '{for(n=2;n<=NF;n++){ printf $n; if(n<NF) printf " "; else print ""; }}' | \
    tail -n +$heldout_sent > $sdir/train
  
  cat $dir/word_map | awk '{print $1}' | cat - <(echo "<s>"; echo "</s>" ) > $sdir/wordlist
  
  
  ngram-count -text $sdir/train -order 3 -limit-vocab -vocab $sdir/wordlist -unk \
    -map-unk "<UNK>" -kndiscount -interpolate -lm $sdir/srilm.o3g.kn.gz
  ngram -lm $sdir/srilm.o3g.kn.gz -ppl $sdir/heldout
  # 0 zeroprobs, logprob= -250954 ppl= 90.5091 ppl1= 132.482
  
  # Note: perplexity SRILM gives to Kaldi-LM model is same as kaldi-lm reports above.
  # Difference in WSJ must have been due to different treatment of <UNK>.
  ngram -lm $dir/3gram-mincount/lm_unpruned.gz  -ppl $sdir/heldout
  # 0 zeroprobs, logprob= -250913 ppl= 90.4439 ppl1= 132.379