mirror of
https://github.com/moses-smt/mosesdecoder.git
synced 2024-12-25 21:03:22 +03:00
163 lines
3.4 KiB
C++
163 lines
3.4 KiB
C++
/*
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* FeatureArray.cpp
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* mert - Minimum Error Rate Training
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*
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* Created by Nicola Bertoldi on 13/05/08.
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*
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*/
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#include <iostream>
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#include <fstream>
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#include "FeatureArray.h"
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#include "FileStream.h"
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#include "Util.h"
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using namespace std;
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namespace MosesTuning
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{
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FeatureArray::FeatureArray()
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: m_index(0), m_num_features(0) {}
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FeatureArray::~FeatureArray() {}
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void FeatureArray::savetxt(ostream* os)
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{
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*os << FEATURES_TXT_BEGIN << " " << m_index << " " << m_array.size()
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<< " " << m_num_features << " " << m_features << endl;
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for (featarray_t::iterator i = m_array.begin(); i != m_array.end(); ++i) {
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i->savetxt(os);
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*os << endl;
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}
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*os << FEATURES_TXT_END << endl;
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}
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void FeatureArray::savebin(ostream* os)
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{
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*os << FEATURES_BIN_BEGIN << " " << m_index << " " << m_array.size()
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<< " " << m_num_features << " " << m_features << endl;
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for (featarray_t::iterator i = m_array.begin(); i != m_array.end(); ++i)
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i->savebin(os);
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*os << FEATURES_BIN_END << endl;
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}
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void FeatureArray::save(ostream* os, bool bin)
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{
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if (size() <= 0) return;
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if (bin) {
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savebin(os);
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} else {
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savetxt(os);
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}
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}
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void FeatureArray::save(const string &file, bool bin)
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{
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ofstream ofs(file.c_str(), ios::out);
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if (!ofs) {
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cerr << "Failed to open " << file << endl;
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exit(1);
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}
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ostream *os = &ofs;
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save(os, bin);
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ofs.close();
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}
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void FeatureArray::save(bool bin)
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{
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save(&cout, bin);
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}
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void FeatureArray::loadbin(istream* is, size_t n)
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{
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FeatureStats entry(m_num_features);
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for (size_t i = 0 ; i < n; i++) {
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entry.loadbin(is);
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add(entry);
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}
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}
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void FeatureArray::loadtxt(istream* is, const SparseVector& sparseWeights, size_t n)
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{
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FeatureStats entry(m_num_features);
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for (size_t i=0 ; i < n; i++) {
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entry.loadtxt(is, sparseWeights);
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add(entry);
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}
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}
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void FeatureArray::load(istream* is, const SparseVector& sparseWeights)
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{
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size_t number_of_entries = 0;
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bool binmode = false;
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string substring, stringBuf;
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string::size_type loc;
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getline(*is, stringBuf);
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if (!is->good()) {
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return;
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}
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if (!stringBuf.empty()) {
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if ((loc = stringBuf.find(FEATURES_TXT_BEGIN)) == 0) {
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binmode = false;
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} else if ((loc = stringBuf.find(FEATURES_BIN_BEGIN)) == 0) {
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binmode = true;
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} else {
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TRACE_ERR("ERROR: FeatureArray::load(): Wrong header");
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return;
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}
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getNextPound(stringBuf, substring);
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getNextPound(stringBuf, substring);
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m_index = atoi(substring.c_str());
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getNextPound(stringBuf, substring);
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number_of_entries = atoi(substring.c_str());
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getNextPound(stringBuf, substring);
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m_num_features = atoi(substring.c_str());
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m_features = stringBuf;
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}
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if (binmode) {
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loadbin(is, number_of_entries);
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} else {
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loadtxt(is, sparseWeights, number_of_entries);
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}
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getline(*is, stringBuf);
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if (!stringBuf.empty()) {
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if ((loc = stringBuf.find(FEATURES_TXT_END)) != 0 &&
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(loc = stringBuf.find(FEATURES_BIN_END)) != 0) {
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TRACE_ERR("ERROR: FeatureArray::load(): Wrong footer");
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return;
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}
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}
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}
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void FeatureArray::merge(FeatureArray& e)
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{
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//dummy implementation
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for (size_t i = 0; i < e.size(); i++)
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add(e.get(i));
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}
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bool FeatureArray::check_consistency() const
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{
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const size_t sz = NumberOfFeatures();
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if (sz == 0)
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return true;
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for (featarray_t::const_iterator i = m_array.begin(); i != m_array.end(); i++) {
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if (i->size() != sz)
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return false;
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}
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return true;
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}
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}
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