mirror of
https://github.com/moses-smt/mosesdecoder.git
synced 2024-12-27 05:55:02 +03:00
474 lines
12 KiB
Plaintext
474 lines
12 KiB
Plaintext
################################################
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### CONFIGURATION FILE FOR AN SMT EXPERIMENT ###
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################################################
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[GENERAL]
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### directory in which experiment is run
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#
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working-dir = WORKDIR/ems_workdir
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# Giza and friends
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external-bin-dir = WORKDIR/giza-pp/bin/
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# specification of the language pair
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input-extension = fr
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output-extension = en
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pair-extension = fr-en
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### directories that contain tools and data
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#
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# moses
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moses-src-dir = WORKDIR
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#
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# moses scripts
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moses-script-dir = WORKDIR/scripts
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#
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# srilm
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srilm-dir = SRILMDIR/bin/MACHINE_TYPE
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#
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# data
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toy-data = $moses-script-dir/ems/example/data
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### basic tools
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#
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# moses decoder
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decoder = $moses-src-dir/bin/moses
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# conversion of phrase table into binary on-disk format
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ttable-binarizer = $moses-src-dir/bin/processPhraseTable
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# conversion of rule table into binary on-disk format
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#ttable-binarizer = "$moses-src-dir/CreateOnDisk/src/CreateOnDiskPt 1 1 5 100 2"
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# tokenizers - comment out if all your data is already tokenized
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input-tokenizer = "$moses-script-dir/tokenizer/tokenizer.perl -a -l $input-extension"
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output-tokenizer = "$moses-script-dir/tokenizer/tokenizer.perl -a -l $output-extension"
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# truecasers - comment out if you do not use the truecaser
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input-truecaser = $moses-script-dir/recaser/truecase.perl
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output-truecaser = $moses-script-dir/recaser/truecase.perl
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detruecaser = $moses-script-dir/recaser/detruecase.perl
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### generic parallelizer for cluster and multi-core machines
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# you may specify a script that allows the parallel execution
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# parallizable steps (see meta file). you also need specify
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# the number of jobs (cluster) or cores (multicore)
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#
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#generic-parallelizer = $moses-script-dir/ems/support/generic-parallelizer.perl
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#generic-parallelizer = $moses-script-dir/ems/support/generic-multicore-parallelizer.perl
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### cluster settings (if run on a cluster machine)
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# number of jobs to be submitted in parallel
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#
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#jobs = 10
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# arguments to qsub when scheduling a job
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#qsub-settings = ""
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# project for priviledges and usage accounting
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#qsub-project = iccs_smt
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# memory and time
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#qsub-memory = 4
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#qsub-hours = 48
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### multi-core settings
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# when the generic parallelizer is used, the number of cores
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# specified here
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cores = 8
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#################################################################
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# PARALLEL CORPUS PREPARATION:
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# create a tokenized, sentence-aligned corpus, ready for training
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[CORPUS]
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### long sentences are filtered out, since they slow down GIZA++
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# and are a less reliable source of data. set here the maximum
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# length of a sentence
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#
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max-sentence-length = 80
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[CORPUS:toy]
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### command to run to get raw corpus files
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#
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# get-corpus-script =
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### raw corpus files (untokenized, but sentence aligned)
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#
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raw-stem = $toy-data/nc-5k
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### tokenized corpus files (may contain long sentences)
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#
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#tokenized-stem =
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### if sentence filtering should be skipped,
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# point to the clean training data
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#
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#clean-stem =
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### if corpus preparation should be skipped,
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# point to the prepared training data
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#
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#lowercased-stem =
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#################################################################
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# LANGUAGE MODEL TRAINING
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[LM]
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### tool to be used for language model training
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# for instance: ngram-count (SRILM), train-lm-on-disk.perl (Edinburgh)
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#
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lm-training = $srilm-dir/ngram-count
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settings = "-interpolate -kndiscount -unk"
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order = 5
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### tool to be used for training randomized language model from scratch
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# (more commonly, a SRILM is trained)
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#
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#rlm-training = "$moses-src-dir/randlm/bin/buildlm -falsepos 8 -values 8"
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### script to use for binary table format for irstlm or kenlm
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# (default: no binarization)
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# irstlm
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#lm-binarizer = $moses-src-dir/irstlm/bin/compile-lm
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# kenlm, also set type to 8
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#lm-binarizer = $moses-src-dir/kenlm/build_binary
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type = 8
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### script to create quantized language model format (irstlm)
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# (default: no quantization)
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#
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#lm-quantizer = $moses-src-dir/irstlm/bin/quantize-lm
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### script to use for converting into randomized table format
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# (default: no randomization)
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#
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#lm-randomizer = "$moses-src-dir/randlm/bin/buildlm -falsepos 8 -values 8"
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### each language model to be used has its own section here
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[LM:toy]
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### command to run to get raw corpus files
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#
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#get-corpus-script = ""
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type = 8
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### raw corpus (untokenized)
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#
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raw-corpus = $toy-data/nc-5k.$output-extension
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### tokenized corpus files (may contain long sentences)
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#
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#tokenized-corpus =
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### if corpus preparation should be skipped,
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# point to the prepared language model
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#
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#lm =
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[TRAINING]
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### training script to be used: either a legacy script or
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# current moses training script (default)
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#
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script = $moses-script-dir/training/train-model.perl
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### general options
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#
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#training-options = ""
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### factored training: specify here which factors used
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# if none specified, single factor training is assumed
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# (one translation step, surface to surface)
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#
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#input-factors = word lemma pos morph
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#output-factors = word lemma pos
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#alignment-factors = "word -> word"
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#translation-factors = "word -> word"
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#reordering-factors = "word -> word"
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#generation-factors = "word -> pos"
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#decoding-steps = "t0, g0"
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### pre-computation for giza++
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# giza++ has a more efficient data structure that needs to be
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# initialized with snt2cooc. if run in parallel, this may reduces
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# memory requirements. set here the number of parts
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#
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run-giza-in-parts = 5
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### symmetrization method to obtain word alignments from giza output
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# (commonly used: grow-diag-final-and)
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#
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alignment-symmetrization-method = grow-diag-final-and
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### use of berkeley aligner for word alignment
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#
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#use-berkeley = true
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#alignment-symmetrization-method = berkeley
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#berkeley-train = $moses-script-dir/ems/support/berkeley-train.sh
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#berkeley-process = $moses-script-dir/ems/support/berkeley-process.sh
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#berkeley-jar = /your/path/to/berkeleyaligner-1.1/berkeleyaligner.jar
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#berkeley-java-options = "-server -mx30000m -ea"
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#berkeley-training-options = "-Main.iters 5 5 -EMWordAligner.numThreads 8"
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#berkeley-process-options = "-EMWordAligner.numThreads 8"
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#berkeley-posterior = 0.5
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### if word alignment should be skipped,
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# point to word alignment files
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#
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#word-alignment = $working-dir/model/aligned.1
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### create a bilingual concordancer for the model
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#
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#biconcor = $moses-script-dir/ems/biconcor/biconcor
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### lexicalized reordering: specify orientation type
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# (default: only distance-based reordering model)
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#
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lexicalized-reordering = msd-bidirectional-fe
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### hierarchical rule set
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#
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#hierarchical-rule-set = true
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### settings for rule extraction
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#
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#extract-settings = ""
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### unknown word labels (target syntax only)
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# enables use of unknown word labels during decoding
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# label file is generated during rule extraction
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#
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#use-unknown-word-labels = true
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### if phrase extraction should be skipped,
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# point to stem for extract files
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#
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# extracted-phrases =
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### settings for rule scoring
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#
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score-settings = "--GoodTuring"
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### include word alignment in phrase table
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#
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#include-word-alignment-in-rules = yes
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### if phrase table training should be skipped,
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# point to phrase translation table
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#
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# phrase-translation-table =
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### if reordering table training should be skipped,
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# point to reordering table
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#
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# reordering-table =
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### if training should be skipped,
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# point to a configuration file that contains
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# pointers to all relevant model files
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#
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#config =
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#####################################################
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### TUNING: finding good weights for model components
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[TUNING]
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### instead of tuning with this setting, old weights may be recycled
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# specify here an old configuration file with matching weights
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#
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weight-config = $toy-data/weight.ini
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### tuning script to be used
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#
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tuning-script = $moses-script-dir/training/mert-moses.pl
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tuning-settings = "-mertdir $moses-src-dir/mert"
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### specify the corpus used for tuning
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# it should contain 1000s of sentences
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#
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#input-sgm =
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#raw-input =
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#tokenized-input =
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#factorized-input =
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#input =
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#
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#reference-sgm =
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#raw-reference =
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#tokenized-reference =
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#factorized-reference =
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#reference =
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### size of n-best list used (typically 100)
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#
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nbest = 100
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### ranges for weights for random initialization
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# if not specified, the tuning script will use generic ranges
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# it is not clear, if this matters
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#
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# lambda =
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### additional flags for the filter script
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#
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filter-settings = ""
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### additional flags for the decoder
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#
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decoder-settings = ""
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### if tuning should be skipped, specify this here
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# and also point to a configuration file that contains
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# pointers to all relevant model files
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#
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#config =
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#########################################################
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## RECASER: restore case, this part only trains the model
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[RECASING]
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#decoder = $moses-src-dir/moses-cmd/src/moses.1521.srilm
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### training data
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# raw input needs to be still tokenized,
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# also also tokenized input may be specified
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#
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#tokenized = [LM:europarl:tokenized-corpus]
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# recase-config =
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#lm-training = $srilm-dir/ngram-count
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#######################################################
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## TRUECASER: train model to truecase corpora and input
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[TRUECASER]
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### script to train truecaser models
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#
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trainer = $moses-script-dir/recaser/train-truecaser.perl
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### training data
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# data on which truecaser is trained
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# if no training data is specified, parallel corpus is used
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#
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# raw-stem =
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# tokenized-stem =
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### trained model
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#
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# truecase-model =
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######################################################################
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## EVALUATION: translating a test set using the tuned system and score it
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[EVALUATION]
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### additional flags for the filter script
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#
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#filter-settings = ""
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### additional decoder settings
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# switches for the Moses decoder
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#
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decoder-settings = "-search-algorithm 1 -cube-pruning-pop-limit 5000 -s 5000"
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### specify size of n-best list, if produced
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#
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#nbest = 100
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### multiple reference translations
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#
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#multiref = yes
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### prepare system output for scoring
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# this may include detokenization and wrapping output in sgm
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# (needed for nist-bleu, ter, meteor)
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#
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detokenizer = "$moses-script-dir/tokenizer/detokenizer.perl -l $output-extension"
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#recaser = $moses-script-dir/recaser/recase.perl
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wrapping-script = "$moses-script-dir/ems/support/wrap-xml.perl $output-extension"
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#output-sgm =
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### BLEU
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#
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nist-bleu = $moses-script-dir/generic/mteval-v12.pl
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nist-bleu-c = "$moses-script-dir/generic/mteval-v12.pl -c"
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#multi-bleu = $moses-script-dir/generic/multi-bleu.perl
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#ibm-bleu =
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### TER: translation error rate (BBN metric) based on edit distance
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# not yet integrated
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#
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# ter =
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### METEOR: gives credit to stem / worknet synonym matches
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# not yet integrated
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#
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# meteor =
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### Analysis: carry out various forms of analysis on the output
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#
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analysis = $moses-script-dir/ems/support/analysis.perl
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#
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# also report on input coverage
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analyze-coverage = yes
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#
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# also report on phrase mappings used
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report-segmentation = yes
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#
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# report precision of translations for each input word, broken down by
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# count of input word in corpus and model
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#report-precision-by-coverage = yes
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#
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# further precision breakdown by factor
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#precision-by-coverage-factor = pos
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[EVALUATION:test]
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### input data
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#
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input-sgm = $toy-data/test-src.$input-extension.sgm
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# raw-input =
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# tokenized-input =
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# factorized-input =
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# input =
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### reference data
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#
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reference-sgm = $toy-data/test-ref.$output-extension.sgm
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# raw-reference =
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# tokenized-reference =
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# reference =
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### analysis settings
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# may contain any of the general evaluation analysis settings
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# specific setting: base coverage statistics on earlier run
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#
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#precision-by-coverage-base = $working-dir/evaluation/test.analysis.5
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### wrapping frame
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# for nist-bleu and other scoring scripts, the output needs to be wrapped
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# in sgm markup (typically like the input sgm)
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#
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wrapping-frame = $input-sgm
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##########################################
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### REPORTING: summarize evaluation scores
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[REPORTING]
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### currently no parameters for reporting section
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