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#include "Model1Feature.h"
#include "moses/StaticData.h"
#include "moses/InputFileStream.h"
#include "moses/ScoreComponentCollection.h"
#include "moses/FactorCollection.h"
using namespace std;
namespace Moses
{
const std::string Model1Vocabulary::GIZANULL = "GIZANULL";
Model1Vocabulary::Model1Vocabulary()
{
FactorCollection &factorCollection = FactorCollection::Instance();
m_NULL = factorCollection.AddFactor(GIZANULL,false);
Store(m_NULL,0);
}
bool Model1Vocabulary::Store(const Factor* word, const unsigned id)
{
boost::unordered_map<const Factor*, unsigned>::iterator iter = m_lookup.find( word );
if ( iter != m_lookup.end() ) {
return false;
}
m_lookup[ word ] = id;
if ( m_vocab.size() <= id ) {
m_vocab.resize(id+1);
}
m_vocab[id] = word;
return true;
}
unsigned Model1Vocabulary::StoreIfNew(const Factor* word)
{
boost::unordered_map<const Factor*, unsigned>::iterator iter = m_lookup.find( word );
if ( iter != m_lookup.end() ) {
return iter->second;
}
unsigned id = m_vocab.size();
m_vocab.push_back( word );
m_lookup[ word ] = id;
return id;
}
unsigned Model1Vocabulary::GetWordID(const Factor* word) const
{
boost::unordered_map<const Factor*, unsigned>::const_iterator iter = m_lookup.find( word );
if ( iter == m_lookup.end() ) {
return INVALID_ID;
}
return iter->second;
}
const Factor* Model1Vocabulary::GetWord(unsigned id) const
{
if (id >= m_vocab.size()) {
return NULL;
}
return m_vocab[ id ];
}
void Model1Vocabulary::Load(const std::string& fileName)
{
InputFileStream inFile(fileName);
FactorCollection &factorCollection = FactorCollection::Instance();
std::string line;
unsigned i = 0;
if ( getline(inFile, line) ) { // first line of MGIZA vocabulary files seems to be special : "1 UNK 0" -- skip if it's this
++i;
std::vector<std::string> tokens = Tokenize(line);
UTIL_THROW_IF2(tokens.size()!=3, "Line " << i << " in " << fileName << " has wrong number of tokens.");
unsigned id = atoll( tokens[0].c_str() );
if (! ( (id == 1) && (tokens[1] == "UNK") )) {
const Factor* factor = factorCollection.AddFactor(tokens[1],false); // TODO: can we assume that the vocabulary is know and filter the model on loading?
bool stored = Store(factor, id);
UTIL_THROW_IF2(!stored, "Line " << i << " in " << fileName << " overwrites existing vocabulary entry.");
}
}
while ( getline(inFile, line) ) {
++i;
std::vector<std::string> tokens = Tokenize(line);
UTIL_THROW_IF2(tokens.size()!=3, "Line " << i << " in " << fileName << " has wrong number of tokens.");
unsigned id = atoll( tokens[0].c_str() );
const Factor* factor = factorCollection.AddFactor(tokens[1],false); // TODO: can we assume that the vocabulary is know and filter the model on loading?
bool stored = Store(factor, id);
UTIL_THROW_IF2(!stored, "Line " << i << " in " << fileName << " overwrites existing vocabulary entry.");
}
inFile.Close();
}
void Model1LexicalTable::Load(const std::string &fileName, const Model1Vocabulary& vcbS, const Model1Vocabulary& vcbT)
{
InputFileStream inFile(fileName);
std::string line;
unsigned i = 0;
while ( getline(inFile, line) ) {
++i;
std::vector<std::string> tokens = Tokenize(line);
UTIL_THROW_IF2(tokens.size()!=3, "Line " << i << " in " << fileName << " has wrong number of tokens.");
unsigned idS = atoll( tokens[0].c_str() );
unsigned idT = atoll( tokens[1].c_str() );
const Factor* wordS = vcbS.GetWord(idS);
const Factor* wordT = vcbT.GetWord(idT);
float prob = std::atof( tokens[2].c_str() );
if ( (wordS != NULL) && (wordT != NULL) ) {
m_ltable[ wordS ][ wordT ] = prob;
}
UTIL_THROW_IF2((wordS == NULL) || (wordT == NULL), "Line " << i << " in " << fileName << " has unknown vocabulary."); // TODO: can we assume that the vocabulary is know and filter the model on loading? Then remove this line.
}
inFile.Close();
}
// p( wordT | wordS )
float Model1LexicalTable::GetProbability(const Factor* wordS, const Factor* wordT) const
{
float prob = m_floor;
boost::unordered_map< const Factor*, boost::unordered_map< const Factor*, float > >::const_iterator iter1 = m_ltable.find( wordS );
if ( iter1 != m_ltable.end() ) {
boost::unordered_map< const Factor*, float >::const_iterator iter2 = iter1->second.find( wordT );
if ( iter2 != iter1->second.end() ) {
prob = iter2->second;
if ( prob < m_floor ) {
prob = m_floor;
}
}
}
return prob;
}
Model1Feature::Model1Feature(const std::string &line)
: StatelessFeatureFunction(1, line)
, m_skipTargetPunctuation(false)
, m_is_syntax(false)
{
VERBOSE(1, "Initializing feature " << GetScoreProducerDescription() << " ...");
ReadParameters();
VERBOSE(1, " Done.");
}
void Model1Feature::SetParameter(const std::string& key, const std::string& value)
{
if (key == "path") {
m_fileNameModel1 = value;
} else if (key == "source-vocabulary") {
m_fileNameVcbS = value;
} else if (key == "target-vocabulary") {
m_fileNameVcbT = value;
} else if (key == "skip-target-punctuation") {
m_skipTargetPunctuation = Scan<bool>(value);
} else {
StatelessFeatureFunction::SetParameter(key, value);
}
}
void Model1Feature::Load(AllOptions::ptr const& opts)
{
m_options = opts;
m_is_syntax = is_syntax(opts->search.algo);
FEATUREVERBOSE(2, GetScoreProducerDescription() << ": Loading source vocabulary from file " << m_fileNameVcbS << " ...");
Model1Vocabulary vcbS;
vcbS.Load(m_fileNameVcbS);
FEATUREVERBOSE2(2, " Done." << std::endl);
FEATUREVERBOSE(2, GetScoreProducerDescription() << ": Loading target vocabulary from file " << m_fileNameVcbT << " ...");
Model1Vocabulary vcbT;
vcbT.Load(m_fileNameVcbT);
FEATUREVERBOSE2(2, " Done." << std::endl);
FEATUREVERBOSE(2, GetScoreProducerDescription() << ": Loading model 1 lexical translation table from file " << m_fileNameModel1 << " ...");
m_model1.Load(m_fileNameModel1,vcbS,vcbT);
FEATUREVERBOSE2(2, " Done." << std::endl);
FactorCollection &factorCollection = FactorCollection::Instance();
m_emptyWord = factorCollection.GetFactor(Model1Vocabulary::GIZANULL,false);
UTIL_THROW_IF2(m_emptyWord==NULL, GetScoreProducerDescription()
<< ": Factor for GIZA empty word does not exist.");
if (m_skipTargetPunctuation) {
const std::string punctuation = ",;.:!?";
for (size_t i=0; i<punctuation.size(); ++i) {
const std::string punct = punctuation.substr(i,1);
FactorCollection &factorCollection = FactorCollection::Instance();
const Factor* punctFactor = factorCollection.AddFactor(punct,false);
std::pair<std::set<const Factor*>::iterator,bool> inserted = m_punctuation.insert(punctFactor);
}
}
}
void Model1Feature::EvaluateWithSourceContext(const InputType &input
, const InputPath &inputPath
, const TargetPhrase &targetPhrase
, const StackVec *stackVec
, ScoreComponentCollection &scoreBreakdown
, ScoreComponentCollection *estimatedScores) const
{
const Sentence& sentence = static_cast<const Sentence&>(input);
float score = 0.0;
float norm = TransformScore(1+sentence.GetSize());
for (size_t posT=0; posT<targetPhrase.GetSize(); ++posT) {
const Word &wordT = targetPhrase.GetWord(posT);
if (m_skipTargetPunctuation) {
std::set<const Factor*>::const_iterator foundPunctuation = m_punctuation.find(wordT[0]);
if (foundPunctuation != m_punctuation.end()) {
continue;
}
}
if ( !wordT.IsNonTerminal() ) {
float thisWordProb = m_model1.GetProbability(m_emptyWord,wordT[0]); // probability conditioned on empty word
// cache lookup
bool foundInCache = false;
{
#ifdef WITH_THREADS
boost::shared_lock<boost::shared_mutex> read_lock(m_accessLock);
#endif
boost::unordered_map<const InputType*, boost::unordered_map<const Factor*, float> >::const_iterator sentenceCache = m_cache.find(&input);
if (sentenceCache != m_cache.end()) {
boost::unordered_map<const Factor*, float>::const_iterator cacheHit = sentenceCache->second.find(wordT[0]);
if (cacheHit != sentenceCache->second.end()) {
foundInCache = true;
score += cacheHit->second;
FEATUREVERBOSE(3, "Cached score( " << wordT << " ) = " << cacheHit->second << std::endl);
}
}
}
if (!foundInCache) {
for (size_t posS=(m_is_syntax?1:0); posS<(m_is_syntax?sentence.GetSize()-1:sentence.GetSize()); ++posS) { // ignore <s> and </s>
const Word &wordS = sentence.GetWord(posS);
float modelProb = m_model1.GetProbability(wordS[0],wordT[0]);
FEATUREVERBOSE(4, "p( " << wordT << " | " << wordS << " ) = " << modelProb << std::endl);
thisWordProb += modelProb;
}
float thisWordScore = TransformScore(thisWordProb) - norm;
FEATUREVERBOSE(3, "score( " << wordT << " ) = " << thisWordScore << std::endl);
{
#ifdef WITH_THREADS
// need to update cache; write lock
boost::unique_lock<boost::shared_mutex> lock(m_accessLock);
#endif
m_cache[&input][wordT[0]] = thisWordScore;
}
score += thisWordScore;
}
}
}
scoreBreakdown.PlusEquals(this, score);
}
void Model1Feature::CleanUpAfterSentenceProcessing(const InputType& source)
{
#ifdef WITH_THREADS
// need to update cache; write lock
boost::unique_lock<boost::shared_mutex> lock(m_accessLock);
#endif
// clear cache
boost::unordered_map<const InputType*, boost::unordered_map<const Factor*, float> >::iterator sentenceCache = m_cache.find(&source);
if (sentenceCache != m_cache.end()) {
sentenceCache->second.clear();
m_cache.erase(sentenceCache);
}
}
}
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