/* * FeatureData.cpp * mert - Minimum Error Rate Training * * Created by Nicola Bertoldi on 13/05/08. * */ #include "FeatureData.h" #include #include "FileStream.h" #include "Util.h" using namespace std; namespace MosesTuning { FeatureData::FeatureData() : m_num_features(0) {} void FeatureData::save(ostream* os, bool bin) { for (featdata_t::iterator i = m_array.begin(); i != m_array.end(); i++) i->save(os, bin); } void FeatureData::save(const string &file, bool bin) { if (file.empty()) return; TRACE_ERR("saving the array into " << file << endl); ofstream ofs(file.c_str(), ios::out); // matches a stream with a file. Opens the file ostream* os = &ofs; save(os, bin); ofs.close(); } void FeatureData::save(bool bin) { save(&cout, bin); } void FeatureData::load(istream* is, const SparseVector& sparseWeights) { FeatureArray entry; while (!is->eof()) { if (!is->good()) { cerr << "ERROR FeatureData::load inFile.good()" << endl; } entry.clear(); entry.load(is, sparseWeights); if (entry.size() == 0) break; if (size() == 0) setFeatureMap(entry.Features()); add(entry); } } void FeatureData::load(const string &file, const SparseVector& sparseWeights) { TRACE_ERR("loading feature data from " << file << endl); inputfilestream input_stream(file); // matches a stream with a file. Opens the file if (!input_stream) { throw runtime_error("Unable to open feature file: " + file); } istream* is = &input_stream; load(is, sparseWeights); input_stream.close(); } void FeatureData::add(FeatureArray& e) { if (exists(e.getIndex())) { // array at position e.getIndex() already exists //enlarge array at position e.getIndex() size_t pos = getIndex(e.getIndex()); m_array.at(pos).merge(e); } else { m_array.push_back(e); setIndex(); } } void FeatureData::add(FeatureStats& e, int sent_idx) { if (exists(sent_idx)) { // array at position e.getIndex() already exists //enlarge array at position e.getIndex() size_t pos = getIndex(sent_idx); // TRACE_ERR("Inserting " << e << " in array " << sent_idx << std::endl); m_array.at(pos).add(e); } else { // TRACE_ERR("Creating a new entry in the array and inserting " << e << std::endl); FeatureArray a; a.NumberOfFeatures(m_num_features); a.Features(m_features); a.setIndex(sent_idx); a.add(e); add(a); } } bool FeatureData::check_consistency() const { if (m_array.size() == 0) return true; for (featdata_t::const_iterator i = m_array.begin(); i != m_array.end(); i++) if (!i->check_consistency()) return false; return true; } void FeatureData::setIndex() { size_t j=0; for (featdata_t::iterator i = m_array.begin(); i !=m_array.end(); i++) { m_index_to_array_name[j]=(*i).getIndex(); m_array_name_to_index[(*i).getIndex()] = j; j++; } } void FeatureData::setFeatureMap(const string& feat) { m_num_features = 0; m_features = feat; vector buf; Tokenize(feat.c_str(), ' ', &buf); for (vector::const_iterator it = buf.begin(); it != buf.end(); ++it) { const size_t size = m_index_to_feature_name.size(); m_feature_name_to_index[*it] = size; m_index_to_feature_name[size] = *it; ++m_num_features; } } string FeatureData::ToString() const { string res; { stringstream ss; ss << "number of features: " << m_num_features << ", features: " << m_features; res.append(ss.str()); } res.append("feature_id_map = { "); for (map::const_iterator it = m_feature_name_to_index.begin(); it != m_feature_name_to_index.end(); ++it) { stringstream ss; ss << it->first << " => " << it->second << ", "; res.append(ss.str()); } res.append("}"); return res; } }