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#include "ff_wordalign.h"
#include <algorithm>
#include <iterator>
#include <set>
#include <sstream>
#include <string>
#include <cmath>
#include <bitset>
#include <tr1/unordered_map>
#include <boost/tuple/tuple.hpp>
#include "boost/tuple/tuple_comparison.hpp"
#include <boost/functional/hash.hpp>
#include "factored_lexicon_helper.h"
#include "verbose.h"
#include "alignment_pharaoh.h"
#include "stringlib.h"
#include "sentence_metadata.h"
#include "hg.h"
#include "fdict.h"
#include "aligner.h"
#include "tdict.h" // Blunsom hack
#include "filelib.h" // Blunsom hack
static const int MAX_SENTENCE_SIZE = 100;
static const int kNULL_i = 255; // -1 as an unsigned char
using namespace std;
// TODO new feature: if a word is translated as itself and there is a transition back to the same word, fire a feature
RelativeSentencePosition::RelativeSentencePosition(const string& param) :
fid_(FD::Convert("RelativeSentencePosition")) {
if (!param.empty()) {
cerr << " Loading word classes from " << param << endl;
condition_on_fclass_ = true;
ReadFile rf(param);
istream& in = *rf.stream();
set<WordID> classes;
while(in) {
string line;
getline(in, line);
if (line.empty()) continue;
vector<WordID> v;
TD::ConvertSentence(line, &v);
pos_.push_back(v);
for (int i = 0; i < v.size(); ++i)
classes.insert(v[i]);
}
for (set<WordID>::iterator i = classes.begin(); i != classes.end(); ++i) {
ostringstream os;
os << "RelPos_FC:" << TD::Convert(*i);
fids_[*i] = FD::Convert(os.str());
}
} else {
condition_on_fclass_ = false;
}
}
void RelativeSentencePosition::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const vector<const void*>& // ant_states
,
SparseVector<double>* features,
SparseVector<double>* // estimated_features
,
void* // state
) const {
// if the source word is either null or the generated word
// has no position in the reference
if (edge.i_ == -1 || edge.prev_i_ == -1)
return;
assert(smeta.GetTargetLength() > 0);
const double val = fabs(static_cast<double>(edge.i_) / smeta.GetSourceLength() -
static_cast<double>(edge.prev_i_) / smeta.GetTargetLength());
features->set_value(fid_, val);
if (condition_on_fclass_) {
assert(smeta.GetSentenceID() < pos_.size());
const WordID cur_fclass = pos_[smeta.GetSentenceID()][edge.i_];
std::map<WordID, int>::const_iterator fidit = fids_.find(cur_fclass);
assert(fidit != fids_.end());
const int fid = fidit->second;
features->set_value(fid, val);
}
// cerr << f_len_ << " " << e_len_ << " [" << edge.i_ << "," << edge.j_ << "|" << edge.prev_i_ << "," << edge.prev_j_ << "]\t" << edge.rule_->AsString() << "\tVAL=" << val << endl;
}
LexNullJump::LexNullJump(const string& param) :
FeatureFunction(1),
fid_lex_null_(FD::Convert("JumpLexNull")),
fid_null_lex_(FD::Convert("JumpNullLex")),
fid_null_null_(FD::Convert("JumpNullNull")),
fid_lex_lex_(FD::Convert("JumpLexLex")) {}
void LexNullJump::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const vector<const void*>& ant_states,
SparseVector<double>* features,
SparseVector<double>* /* estimated_features */,
void* state) const {
char& dpstate = *((char*)state);
if (edge.Arity() == 0) {
// dpstate is 'N' = null or 'L' = lex
if (edge.i_ < 0) { dpstate = 'N'; } else { dpstate = 'L'; }
} else if (edge.Arity() == 1) {
dpstate = *((unsigned char*)ant_states[0]);
} else if (edge.Arity() == 2) {
char left = *((char*)ant_states[0]);
char right = *((char*)ant_states[1]);
dpstate = right;
if (left == 'N') {
if (right == 'N')
features->set_value(fid_null_null_, 1.0);
else
features->set_value(fid_null_lex_, 1.0);
} else { // left == 'L'
if (right == 'N')
features->set_value(fid_lex_null_, 1.0);
else
features->set_value(fid_lex_lex_, 1.0);
}
} else {
assert(!"something really unexpected is happening");
}
}
NewJump::NewJump(const string& param) :
FeatureFunction(1),
kBOS_(TD::Convert("BOS")),
kEOS_(TD::Convert("EOS")) {
cerr << " NewJump";
vector<string> argv;
set<string> permitted;
permitted.insert("use_binned_log_lengths");
permitted.insert("flen");
permitted.insert("elen");
permitted.insert("fprev");
permitted.insert("f0");
permitted.insert("f-1");
permitted.insert("f+1");
// also permitted f:FILENAME
int argc = SplitOnWhitespace(param, &argv);
set<string> config;
string f_file;
for (int i = 0; i < argc; ++i) {
if (argv[i].size() > 2 && argv[i].find("f:") == 0) {
assert(f_file.empty()); // only one f file!
f_file = argv[i].substr(2);
cerr << " source_file=" << f_file;
} else {
if (permitted.count(argv[i])) {
assert(config.count(argv[i]) == 0);
config.insert(argv[i]);
cerr << " " << argv[i];
} else {
cerr << "\nNewJump: don't understand param '" << argv[i] << "'\n";
abort();
}
}
}
cerr << endl;
use_binned_log_lengths_ = config.count("use_binned_log_lengths") > 0;
f0_ = config.count("f0") > 0;
fm1_ = config.count("f-1") > 0;
fp1_ = config.count("f+1") > 0;
fprev_ = config.count("fprev") > 0;
elen_ = config.count("elen") > 0;
flen_ = config.count("flen") > 0;
if (f0_ || fm1_ || fp1_ || fprev_) {
if (f_file.empty()) {
cerr << "NewJump: conditioning on src but f:FILE not specified!\n";
abort();
}
ReadFile rf(f_file);
istream& in = *rf.stream();
string line;
while(in) {
getline(in, line);
if (!in) continue;
vector<WordID> v;
TD::ConvertSentence(line, &v);
src_.push_back(v);
}
}
fid_str_ = "J";
if (flen_) fid_str_ += "F";
if (elen_) fid_str_ += "E";
if (f0_) fid_str_ += "C";
if (fm1_) fid_str_ += "L";
if (fp1_) fid_str_ += "R";
if (fprev_) fid_str_ += "P";
}
// do a log transform on the length (of a sentence, a jump, etc)
// this basically means that large distances that are close to each other
// are put into the same bin
int BinnedLogLength(int len) {
int res = static_cast<int>(log(len+1) / log(1.3));
if (res > 16) res = 16;
return res;
}
// <0>=jump size <1>=jump_dir <2>=flen, <3>=elen, <4>=f0, <5>=f-1, <6>=f+1, <7>=fprev
typedef boost::tuple<short, char, short, short, WordID, WordID, WordID, WordID> NewJumpFeatureKey;
struct KeyHash : unary_function<NewJumpFeatureKey, size_t> {
size_t operator()(const NewJumpFeatureKey& k) const {
size_t h = 0x37473DEF321;
boost::hash_combine(h, k.get<0>());
boost::hash_combine(h, k.get<1>());
boost::hash_combine(h, k.get<2>());
boost::hash_combine(h, k.get<3>());
boost::hash_combine(h, k.get<4>());
boost::hash_combine(h, k.get<5>());
boost::hash_combine(h, k.get<6>());
boost::hash_combine(h, k.get<7>());
return h;
}
};
void NewJump::FireFeature(const SentenceMetadata& smeta,
const int prev_src_index,
const int cur_src_index,
SparseVector<double>* features) const {
const int id = smeta.GetSentenceID();
const int src_len = smeta.GetSourceLength();
const int raw_jump = cur_src_index - prev_src_index;
short jump_magnitude = raw_jump;
char jtype = 0;
if (raw_jump > 0) { jtype = 'R'; } // Right
else if (raw_jump == 0) { jtype = 'S'; } // Stay
else { jtype = 'L'; jump_magnitude = raw_jump * -1; } // Left
int effective_src_len = src_len;
int effective_trg_len = smeta.GetTargetLength();
if (use_binned_log_lengths_) {
jump_magnitude = BinnedLogLength(jump_magnitude);
effective_src_len = BinnedLogLength(src_len);
effective_trg_len = BinnedLogLength(effective_trg_len);
}
NewJumpFeatureKey key(jump_magnitude,jtype,0,0,0,0,0);
using boost::get;
if (flen_) get<2>(key) = effective_src_len;
if (elen_) get<3>(key) = effective_trg_len;
if (f0_) get<4>(key) = GetSourceWord(id, cur_src_index);
if (fm1_) get<5>(key) = GetSourceWord(id, cur_src_index - 1);
if (fp1_) get<6>(key) = GetSourceWord(id, cur_src_index + 1);
if (fprev_) get<7>(key) = GetSourceWord(id, prev_src_index);
static std::tr1::unordered_map<NewJumpFeatureKey, int, KeyHash> fids;
int& fid = fids[key];
if (!fid) {
ostringstream os;
os << fid_str_ << ':' << jtype << jump_magnitude;
if (flen_) os << ':' << get<2>(key);
if (elen_) os << ':' << get<3>(key);
if (f0_) os << ':' << TD::Convert(get<4>(key));
if (fm1_) os << ':' << TD::Convert(get<5>(key));
if (fp1_) os << ':' << TD::Convert(get<6>(key));
if (fprev_) os << ':' << TD::Convert(get<7>(key));
fid = FD::Convert(os.str());
}
features->set_value(fid, 1.0);
}
void NewJump::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const vector<const void*>& ant_states,
SparseVector<double>* features,
SparseVector<double>* /* estimated_features */,
void* state) const {
unsigned char& dpstate = *((unsigned char*)state);
// IMPORTANT: this only fires on non-Null transitions!
const int flen = smeta.GetSourceLength();
if (edge.Arity() == 0) {
dpstate = static_cast<unsigned int>(edge.i_);
if (edge.prev_i_ == 0) { // first target word in sentence
if (edge.i_ >= 0) { // generated from non-Null token?
FireFeature(smeta,
-1, // previous src = beginning of sentence index
edge.i_, // current src
features);
}
} else if (edge.prev_i_ == smeta.GetTargetLength() - 1) { // last word
if (edge.i_ >= 0) { // generated from non-Null token?
FireFeature(smeta,
edge.i_, // previous src = last word position
flen, // current src
features);
}
}
} else if (edge.Arity() == 1) {
dpstate = *((unsigned char*)ant_states[0]);
} else if (edge.Arity() == 2) {
int left_index = *((unsigned char*)ant_states[0]);
int right_index = *((unsigned char*)ant_states[1]);
if (right_index == -1)
dpstate = static_cast<unsigned int>(left_index);
else
dpstate = static_cast<unsigned int>(right_index);
if (left_index != kNULL_i && right_index != kNULL_i) {
FireFeature(smeta,
left_index, // previous src index
right_index, // current src index
features);
}
} else {
assert(!"something really unexpected is happening");
}
}
SourceBigram::SourceBigram(const std::string& param) :
FeatureFunction(sizeof(WordID) + sizeof(int)) {
fid_str_ = "SB:";
if (param.size() > 0) {
vector<string> argv;
int argc = SplitOnWhitespace(param, &argv);
if (argc != 2) {
cerr << "SourceBigram [FEATURE_NAME_PREFIX PATH]\n";
abort();
}
fid_str_ = argv[0] + ":";
lexmap_.reset(new FactoredLexiconHelper(argv[1], "*"));
} else {
lexmap_.reset(new FactoredLexiconHelper);
}
}
void SourceBigram::PrepareForInput(const SentenceMetadata& smeta) {
lexmap_->PrepareForInput(smeta);
}
void SourceBigram::FinalTraversalFeatures(const void* context,
SparseVector<double>* features) const {
WordID left = *static_cast<const WordID*>(context);
int left_wc = *(static_cast<const int*>(context) + 1);
if (left_wc == 1)
FireFeature(-1, left, features);
FireFeature(left, -1, features);
}
void SourceBigram::FireFeature(WordID left,
WordID right,
SparseVector<double>* features) const {
int& fid = fmap_[left][right];
// TODO important important !!! escape strings !!!
if (!fid) {
ostringstream os;
os << fid_str_;
if (left < 0) { os << "BOS"; } else { os << TD::Convert(left); }
os << '_';
if (right < 0) { os << "EOS"; } else { os << TD::Convert(right); }
fid = FD::Convert(os.str());
if (fid == 0) fid = -1;
}
if (fid > 0) features->set_value(fid, 1.0);
}
void SourceBigram::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const std::vector<const void*>& ant_contexts,
SparseVector<double>* features,
SparseVector<double>* /* estimated_features */,
void* context) const {
WordID& out_context = *static_cast<WordID*>(context);
int& out_word_count = *(static_cast<int*>(context) + 1);
const int arity = edge.Arity();
if (arity == 0) {
out_context = lexmap_->SourceWordAtPosition(edge.i_);
out_word_count = edge.rule_->EWords();
assert(out_word_count == 1); // this is only defined for lex translation!
// revisit this if you want to translate into null words
} else if (arity == 1) {
WordID left = *static_cast<const WordID*>(ant_contexts[0]);
int left_wc = *(static_cast<const int*>(ant_contexts[0]) + 1);
out_context = left;
out_word_count = left_wc;
} else if (arity == 2) {
WordID left = *static_cast<const WordID*>(ant_contexts[0]);
WordID right = *static_cast<const WordID*>(ant_contexts[1]);
int left_wc = *(static_cast<const int*>(ant_contexts[0]) + 1);
int right_wc = *(static_cast<const int*>(ant_contexts[0]) + 1);
if (left_wc == 1 && right_wc == 1)
FireFeature(-1, left, features);
FireFeature(left, right, features);
out_word_count = left_wc + right_wc;
out_context = right;
}
}
LexicalTranslationTrigger::LexicalTranslationTrigger(const std::string& param) :
FeatureFunction(0) {
if (param.empty()) {
cerr << "LexicalTranslationTrigger requires a parameter (file containing triggers)!\n";
} else {
ReadFile rf(param);
istream& in = *rf.stream();
string line;
while(in) {
getline(in, line);
if (!in) continue;
vector<WordID> v;
TD::ConvertSentence(line, &v);
triggers_.push_back(v);
}
}
}
void LexicalTranslationTrigger::FireFeature(WordID trigger,
WordID src,
WordID trg,
SparseVector<double>* features) const {
int& fid = fmap_[trigger][src][trg];
if (!fid) {
ostringstream os;
os << "T:" << TD::Convert(trigger) << ':' << TD::Convert(src) << '_' << TD::Convert(trg);
fid = FD::Convert(os.str());
}
features->set_value(fid, 1.0);
int &tfid = target_fmap_[trigger][trg];
if (!tfid) {
ostringstream os;
os << "TT:" << TD::Convert(trigger) << ':' << TD::Convert(trg);
tfid = FD::Convert(os.str());
}
features->set_value(tfid, 1.0);
}
void LexicalTranslationTrigger::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const std::vector<const void*>& ant_contexts,
SparseVector<double>* features,
SparseVector<double>* /* estimated_features */,
void* context) const {
if (edge.Arity() == 0) {
assert(edge.rule_->EWords() == 1);
assert(edge.rule_->FWords() == 1);
WordID trg = edge.rule_->e()[0];
WordID src = edge.rule_->f()[0];
assert(triggers_.size() > smeta.GetSentenceID());
const vector<WordID>& triggers = triggers_[smeta.GetSentenceID()];
for (int i = 0; i < triggers.size(); ++i) {
FireFeature(triggers[i], src, trg, features);
}
}
}
BlunsomSynchronousParseHack::BlunsomSynchronousParseHack(const string& param) :
FeatureFunction((100 / 8) + 1), fid_(FD::Convert("NotRef")), cur_sent_(-1) {
ReadFile rf(param);
istream& in = *rf.stream(); int lc = 0;
while(in) {
string line;
getline(in, line);
if (!in) break;
++lc;
refs_.push_back(vector<WordID>());
TD::ConvertSentence(line, &refs_.back());
}
cerr << " Loaded " << lc << " refs\n";
}
void BlunsomSynchronousParseHack::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const vector<const void*>& ant_states,
SparseVector<double>* features,
SparseVector<double>* /* estimated_features */,
void* state) const {
if (cur_sent_ != smeta.GetSentenceID()) {
// assert(smeta.HasReference());
cur_sent_ = smeta.GetSentenceID();
assert(cur_sent_ < refs_.size());
cur_ref_ = &refs_[cur_sent_];
cur_map_.clear();
for (int i = 0; i < cur_ref_->size(); ++i) {
vector<WordID> phrase;
for (int j = i; j < cur_ref_->size(); ++j) {
phrase.push_back((*cur_ref_)[j]);
cur_map_[phrase] = i;
}
}
}
//cerr << edge.rule_->AsString() << endl;
for (int i = 0; i < ant_states.size(); ++i) {
if (DoesNotBelong(ant_states[i])) {
//cerr << " ant " << i << " does not belong\n";
return;
}
}
vector<vector<WordID> > ants(ant_states.size());
vector<const vector<WordID>* > pants(ant_states.size());
for (int i = 0; i < ant_states.size(); ++i) {
AppendAntecedentString(ant_states[i], &ants[i]);
//cerr << " ant[" << i << "]: " << ((int)*(static_cast<const unsigned char*>(ant_states[i]))) << " " << TD::GetString(ants[i]) << endl;
pants[i] = &ants[i];
}
vector<WordID> yield;
edge.rule_->ESubstitute(pants, &yield);
//cerr << "YIELD: " << TD::GetString(yield) << endl;
Vec2Int::iterator it = cur_map_.find(yield);
if (it == cur_map_.end()) {
features->set_value(fid_, 1);
//cerr << " BAD!\n";
return;
}
SetStateMask(it->second, it->second + yield.size(), state);
}
IdentityCycleDetector::IdentityCycleDetector(const std::string& param) : FeatureFunction(2) {
length_min_ = 3;
if (!param.empty())
length_min_ = atoi(param.c_str());
assert(length_min_ >= 0);
ostringstream os;
os << "IdentityCycle_LenGT" << length_min_;
fid_ = FD::Convert(os.str());
}
inline bool IsIdentityTranslation(const void* state) {
return static_cast<const unsigned char*>(state)[0];
}
inline int SourceIndex(const void* state) {
unsigned char i = static_cast<const unsigned char*>(state)[1];
if (i == 255) return -1;
return i;
}
void IdentityCycleDetector::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const std::vector<const void*>& ant_contexts,
SparseVector<double>* features,
SparseVector<double>* estimated_features,
void* context) const {
unsigned char* out_state = static_cast<unsigned char*>(context);
unsigned char& out_is_identity = out_state[0];
unsigned char& out_src_index = out_state[1];
if (edge.Arity() == 0) {
assert(edge.rule_->EWords() == 1);
assert(edge.rule_->FWords() == 1);
out_src_index = edge.i_;
out_is_identity = false;
if (edge.rule_->e_[0] == edge.rule_->f_[0]) {
const WordID word = edge.rule_->e_[0];
static map<WordID, bool> big_enough;
map<WordID,bool>::iterator it = big_enough_.find(word);
if (it == big_enough_.end()) {
out_is_identity = big_enough_[word] = strlen(TD::Convert(word)) >= length_min_;
} else {
out_is_identity = it->second;
}
}
} else if (edge.Arity() == 1) {
memcpy(context, ant_contexts[0], 2);
} else if (edge.Arity() == 2) {
bool left_identity = IsIdentityTranslation(ant_contexts[0]);
int left_index = SourceIndex(ant_contexts[0]);
bool right_identity = IsIdentityTranslation(ant_contexts[1]);
int right_index = SourceIndex(ant_contexts[1]);
if ((left_identity && left_index == right_index && !right_identity) ||
(right_identity && left_index == right_index && !left_identity)) {
features->set_value(fid_, 1.0);
}
out_is_identity = right_identity;
out_src_index = right_index;
} else { assert("really really bad"); }
}
InputIndicator::InputIndicator(const std::string& param) {}
void InputIndicator::FireFeature(WordID src,
SparseVector<double>* features) const {
int& fid = fmap_[src];
if (!fid) {
static map<WordID, WordID> escape;
if (escape.empty()) {
escape[TD::Convert("=")] = TD::Convert("__EQ");
escape[TD::Convert(";")] = TD::Convert("__SC");
escape[TD::Convert(",")] = TD::Convert("__CO");
}
if (escape.count(src)) src = escape[src];
ostringstream os;
os << "S:" << TD::Convert(src);
fid = FD::Convert(os.str());
}
features->set_value(fid, 1.0);
}
void InputIndicator::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const std::vector<const void*>& ant_contexts,
SparseVector<double>* features,
SparseVector<double>* estimated_features,
void* context) const {
const vector<WordID>& fw = edge.rule_->f_;
for (int i = 0; i < fw.size(); ++i) {
const WordID& f = fw[i];
if (f > 0) FireFeature(f, features);
}
}
WordPairFeatures::WordPairFeatures(const string& param) {
vector<string> argv;
int argc = SplitOnWhitespace(param, &argv);
if (argc != 1) {
cerr << "WordPairFeature /path/to/feature_values.table\n";
abort();
}
set<WordID> all_srcs;
{
ReadFile rf(argv[0]);
istream& in = *rf.stream();
string buf;
while (in) {
getline(in, buf);
if (buf.empty()) continue;
int start = 0;
while(start < buf.size() && buf[start] == ' ') ++start;
int end = start;
while(end < buf.size() && buf[end] != ' ') ++end;
const WordID src = TD::Convert(buf.substr(start, end - start));
all_srcs.insert(src);
}
}
if (all_srcs.empty()) {
cerr << "WordPairFeature " << param << " loaded empty file!\n";
return;
}
fkeys_.reserve(all_srcs.size());
copy(all_srcs.begin(), all_srcs.end(), back_inserter(fkeys_));
values_.resize(all_srcs.size());
if (!SILENT) { cerr << "WordPairFeature: " << all_srcs.size() << " sources\n"; }
ReadFile rf(argv[0]);
istream& in = *rf.stream();
string buf;
double val = 0;
WordID cur_src = 0;
map<WordID, SparseVector<float> > *pv = NULL;
const WordID kBARRIER = TD::Convert("|||");
while (in) {
getline(in, buf);
if (buf.size() == 0) continue;
int start = 0;
while(start < buf.size() && buf[start] == ' ') ++start;
int end = start;
while(end < buf.size() && buf[end] != ' ') ++end;
const WordID src = TD::Convert(buf.substr(start, end - start));
if (cur_src != src) {
cur_src = src;
size_t ind = distance(fkeys_.begin(), lower_bound(fkeys_.begin(), fkeys_.end(), cur_src));
pv = &values_[ind];
}
end += 1;
start = end;
while(end < buf.size() && buf[end] != ' ') ++end;
WordID x = TD::Convert(buf.substr(start, end - start));
if (x != kBARRIER) {
cerr << "1 Format error: " << buf << endl;
abort();
}
start = end + 1;
end = start + 1;
while(end < buf.size() && buf[end] != ' ') ++end;
WordID trg = TD::Convert(buf.substr(start, end - start));
if (trg == kBARRIER) {
cerr << "2 Format error: " << buf << endl;
abort();
}
start = end + 1;
end = start + 1;
while(end < buf.size() && buf[end] != ' ') ++end;
WordID x2 = TD::Convert(buf.substr(start, end - start));
if (x2 != kBARRIER) {
cerr << "3 Format error: " << buf << endl;
abort();
}
start = end + 1;
SparseVector<float>& v = (*pv)[trg];
while(start < buf.size()) {
end = start + 1;
while(end < buf.size() && buf[end] != '=' && buf[end] != ' ') ++end;
if (end == buf.size() || buf[end] != '=') { cerr << "4 Format error: " << buf << endl; abort(); }
const int fid = FD::Convert(buf.substr(start, end - start));
start = end + 1;
while(start < buf.size() && buf[start] == ' ') ++start;
end = start + 1;
while(end < buf.size() && buf[end] != ' ') ++end;
assert(end > start);
if (end < buf.size()) buf[end] = 0;
val = strtod(&buf.c_str()[start], NULL);
v.set_value(fid, val);
start = end + 1;
}
}
}
void WordPairFeatures::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const std::vector<const void*>& ant_contexts,
SparseVector<double>* features,
SparseVector<double>* estimated_features,
void* context) const {
if (edge.Arity() == 0) {
assert(edge.rule_->EWords() == 1);
assert(edge.rule_->FWords() == 1);
const WordID trg = edge.rule_->e()[0];
const WordID src = edge.rule_->f()[0];
size_t ind = distance(fkeys_.begin(), lower_bound(fkeys_.begin(), fkeys_.end(), src));
if (ind == fkeys_.size() || fkeys_[ind] != src) {
cerr << "WordPairFeatures no source entries for " << TD::Convert(src) << endl;
abort();
}
const map<WordID, SparseVector<float> >::const_iterator it = values_[ind].find(trg);
// TODO optional strict flag to make sure there are features for all pairs?
if (it != values_[ind].end())
(*features) += it->second;
}
}
struct PathFertility {
unsigned char null_fertility;
unsigned char index_fertility[255];
PathFertility& operator+=(const PathFertility& rhs) {
null_fertility += rhs.null_fertility;
for (int i = 0; i < 255; ++i)
index_fertility[i] += rhs.index_fertility[i];
return *this;
}
};
Fertility::Fertility(const string& config) :
FeatureFunction(sizeof(PathFertility)) {}
void Fertility::TraversalFeaturesImpl(const SentenceMetadata& smeta,
const Hypergraph::Edge& edge,
const std::vector<const void*>& ant_contexts,
SparseVector<double>* features,
SparseVector<double>* estimated_features,
void* context) const {
PathFertility& out_fert = *static_cast<PathFertility*>(context);
if (edge.Arity() == 0) {
if (edge.i_ < 0) {
out_fert.null_fertility = 1;
} else {
out_fert.index_fertility[edge.i_] = 1;
}
} else if (edge.Arity() == 2) {
const PathFertility left = *static_cast<const PathFertility*>(ant_contexts[0]);
const PathFertility right = *static_cast<const PathFertility*>(ant_contexts[1]);
out_fert += left;
out_fert += right;
} else if (edge.Arity() == 1) {
out_fert += *static_cast<const PathFertility*>(ant_contexts[0]);
}
}
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