W15-3820 representations , also known as word embedding , have been shown to improve
W15-3820 performance of two state-of-the-art word embedding methods , namely word2vec and
W15-3822 method called Surrounding based embedding feature ( SBE ) , and two newly
W15-3822 : Left-Right surrounding based embedding feature ( LR_SBE ) and MAX surrounding
W15-3822 LR_SBE ) and MAX surrounding based embedding feature ( MAX_SBE ) . We then
W15-3822 Minnesota showed that neural word embedding features improved the performance
W15-4005 regression to learn the bilingual word embedding using compositional distributional
W15-4310 representation . Besides word embedding , we use partof-speech ( POS
W96-0413 set for the same variable in the embedding structure . An inner quantifier
W97-0901 reports on SRA 's experience in embedding name recognition in these three
W98-1311 Another aspect to consider is the embedding of the single elements of the
hide detail