Word alignment is an important natural language processing task that indicates the correspondence between natural languages. Recently, unsupervised learning of log-linear models for word alignment has received considerable attention as it combines the merits of generative and discriminative approaches. However, a major challenge still remains: it is intractable to calculate the expectations of non-local features that are critical for capturing the divergence between natural languages. We propose a contrastive approach that aims to differentiate observed training examples from noises. It not only introduces prior knowledge to guide unsupervised learning but also cancels out partition functions. Based on the observation that the probability m...
Learning word alignments between parallel sentence pairs is an important task in Statistical Machine...
We propose an unsupervised learning algorithm for automatically inferring the mappings between Engli...
In this paper, we explore a novel bilin-gual word alignment approach based on DNN (Deep Neural Netwo...
Word alignment is an important natural language pro-cessing task that indicates the correspondence b...
We introduce a discriminatively trained, globally normalized, log-linear variant of the lexical tran...
Word alignments identify translational correspondences between words in a parallel sentence pair and...
This study proposes a word alignment model based on a recurrent neural net-work (RNN), in which an u...
Cross-domain alignment play a key roles in tasks ranging from machine translation to transfer learni...
Expectation-maximization algorithms, such as those implemented in GIZA++ pervade the field of unsupe...
We present a probabilistic model that si-multaneously learns alignments and dis-tributed representat...
Generative word alignment models, such as IBM Models, are restricted to one-to-many alignment, and c...
Word alignment is the problem of annotating parallel text with translational correspondence. Previou...
This paper focuses on the insensitivity of existing word alignment models to domain differences, whi...
Word alignment is an essential task in natural language processing because of its critical role in t...
We propose a novel unsupervised word alignment model based on the Hidden Markov Tree (HMT) model. Ou...
Learning word alignments between parallel sentence pairs is an important task in Statistical Machine...
We propose an unsupervised learning algorithm for automatically inferring the mappings between Engli...
In this paper, we explore a novel bilin-gual word alignment approach based on DNN (Deep Neural Netwo...
Word alignment is an important natural language pro-cessing task that indicates the correspondence b...
We introduce a discriminatively trained, globally normalized, log-linear variant of the lexical tran...
Word alignments identify translational correspondences between words in a parallel sentence pair and...
This study proposes a word alignment model based on a recurrent neural net-work (RNN), in which an u...
Cross-domain alignment play a key roles in tasks ranging from machine translation to transfer learni...
Expectation-maximization algorithms, such as those implemented in GIZA++ pervade the field of unsupe...
We present a probabilistic model that si-multaneously learns alignments and dis-tributed representat...
Generative word alignment models, such as IBM Models, are restricted to one-to-many alignment, and c...
Word alignment is the problem of annotating parallel text with translational correspondence. Previou...
This paper focuses on the insensitivity of existing word alignment models to domain differences, whi...
Word alignment is an essential task in natural language processing because of its critical role in t...
We propose a novel unsupervised word alignment model based on the Hidden Markov Tree (HMT) model. Ou...
Learning word alignments between parallel sentence pairs is an important task in Statistical Machine...
We propose an unsupervised learning algorithm for automatically inferring the mappings between Engli...
In this paper, we explore a novel bilin-gual word alignment approach based on DNN (Deep Neural Netwo...