1,081 research outputs found
Bilingually motivated domain-adapted word segmentation for statistical machine translation
We introduce a word segmentation approach to languages where word boundaries are not orthographically marked,
with application to Phrase-Based Statistical Machine Translation (PB-SMT). Instead of using manually segmented monolingual domain-specific corpora to train segmenters, we make use of bilingual corpora and statistical word alignment techniques. First of all, our approach is
adapted for the specific translation task at hand by taking the corresponding source (target) language into account. Secondly, this approach does not rely on manually segmented training data so that it can be automatically adapted for different domains. We evaluate the performance of our segmentation approach on PB-SMT tasks from two domains and
demonstrate that our approach scores consistently among the best results across different data conditions
HMM word-to-phrase alignment with dependency constraints
In this paper, we extend the HMMwordto-phrase alignment model with syntactic dependency constraints. The syntactic
dependencies between multiple words in one language are introduced into the model in a bid to produce coherent
alignments. Our experimental results on a variety of Chinese–English data show that our syntactically constrained
model can lead to as much as a 3.24% relative improvement in BLEU score over current HMM word-to-phrase alignment models on a Phrase-Based Statistical Machine Translation system when the training data is small, and a comparable performance compared to IBM model 4 on a Hiero-style system
with larger training data. An intrinsic alignment quality evaluation shows that our alignment model with dependency
constraints leads to improvements in both precision (by 1.74% relative) and recall (by 1.75% relative) over the model without dependency information
Alignment-guided chunking
We introduce an adaptable monolingual chunking approach–Alignment-Guided Chunking (AGC)–which makes use of knowledge of word alignments acquired from bilingual
corpora. Our approach is motivated by the observation that a sentence should be chunked differently depending
the foreseen end-tasks. For example, given the different
requirements of translation into (say) French and German, it is inappropriate to chunk up an English string in exactly the same way as preparation for translation into one
or other of these languages. We test our chunking approach
on two language pairs: French–English and German–English, where these two bilingual corpora share the same English sentences. Two chunkers trained on French–English
(FE-Chunker) and German–English(DE-Chunker ) respectively are used to perform chunking on the same English sentences. We construct two test sets, each suitable for French–
English and German–English respectively. The performance of the two chunkers is evaluated on the appropriate test set and with one reference translation only, we report Fscores
of 32.63% for the FE-Chunker and 40.41% for the DE-Chunker
Bootstrapping word alignment via word packing
We introduce a simple method to pack words for statistical word alignment. Our goal is to simplify the task of automatic word alignment by packing several consecutive words together when we believe they correspond to a single word in the opposite language. This is done using the word aligner itself, i.e. by bootstrapping on its output. We evaluate the performance of our approach on a Chinese-to-English machine translation task, and report a 12.2% relative increase in BLEU score over a state-of-the art phrase-based SMT system
Tuning syntactically enhanced word alignment for statistical machine translation
We introduce a syntactically enhanced word alignment model that is more flexible than state-of-the-art generative word
alignment models and can be tuned according to different end tasks. First of all, this model takes the advantages of
both unsupervised and supervised word alignment approaches by obtaining anchor alignments from unsupervised generative
models and seeding the anchor alignments into a supervised discriminative model. Second, this model offers the flexibility of tuning the alignment according to different
optimisation criteria. Our experiments show that using our word alignment in a Phrase-Based Statistical Machine Translation system yields a 5.38% relative increase
on IWSLT 2007 task in terms of BLEU score
Source-side context-informed hypothesis alignment for combining outputs from machine translation systems
This paper presents a new hypothesis alignment method for combining outputs of multiple machine translation (MT) systems. Traditional hypothesis alignment algorithms such
as TER, HMM and IHMM do not directly utilise the context information of the source side but rather address the alignment issues via the output data itself. In this paper, a source-side context-informed (SSCI) hypothesis alignment method is proposed to carry out the word alignment and word reordering issues. First of all, the source–target word alignment links are produced as the hidden variables by exporting source phrase spans during the translation decoding process. Secondly, a mapping strategy and normalisation model are employed to acquire the 1-
to-1 alignment links and build the confusion network (CN). The source-side context-based method outperforms the state-of-the-art TERbased alignment model in our experiments
on the WMT09 English-to-French and NIST Chinese-to-English data sets respectively. Experimental results demonstrate that our proposed approach scores consistently among the
best results across different data and language pair conditions
MaTrEx: the DCU machine translation system for IWSLT 2007
In this paper, we give a description of the machine translation system developed at DCU that was used for our second participation in the evaluation campaign of the International Workshop on Spoken Language Translation (IWSLT 2007). In this participation, we focus on some new methods to improve system quality. Specifically, we try our word packing technique for different language pairs, we smooth our translation tables with out-of-domain word translations for the Arabic–English and Chinese–English tasks in order to solve the high number of out of vocabulary items, and finally we deploy a translation-based model for case and punctuation restoration
Constrained word alignment models for statistical machine translation
Word alignment is a fundamental and crucial component in Statistical Machine Translation (SMT) systems. Despite the enormous progress made in the past two decades, this task remains an active research topic simply because the quality of word alignment is still far from optimal. Most state-of-the-art word alignment models are grounded on statistical learning theory treating word alignment as a general sequence alignment problem, where many linguistically motivated insights are not incorporated. In this thesis, we propose new word alignment models with linguistically motivated constraints in a bid to improve the quality of word alignment for Phrase-Based SMT systems (PB-SMT). We start the exploration with an investigation
into segmentation constraints for word alignment by proposing a novel algorithm, namely word packing, which is motivated by the fact that one concept expressed by one word in one language can frequently surface as a compound or
collocation in another language. Our algorithm takes advantage of the interaction between segmentation and alignment, starting with some segmentation for both the
source and target language and updating the segmentation with respect to the word alignment results using state-of-the-art word alignment models; thereafter a refined
word alignment can be obtained based on the updated segmentation. In this process, the updated segmentation acts as a hard constraint on the word alignment
models and reduces the complexity of the alignment models by generating more 1-to-1 correspondences through word packing. Experimental results show that this algorithm can lead to statistically significant improvements over the state-of-the-art word alignment models. Given that word packing imposes "hard" segmentation constraints on the word aligner, which is prone to introducing noise, we propose two
new word alignment models using syntactic dependencies as soft constraints. The first model is a syntactically enhanced discriminative word alignment model, where
we use a set of feature functions to express the syntactic dependency information encoded in both source and target languages. One the one hand, this model enjoys
great flexibility in its capacity to incorporate multiple features; on the other hand, this model is designed to facilitate model tuning for different objective functions.
Experimental results show that using syntactic constraints can improve the performance of the discriminative word alignment model, which also leads to better PB-SMT performance compared to using state-of-the-art word alignment models.
The second model is a syntactically constrained generative word alignment model, where we add in a syntactic coherence model over the target phrases in the context of HMM word-to-phrase alignment. The advantages of our model are that (i) the addition of the syntactic coherence model preserves the efficient parameter estimation procedures; and (ii) the flexibility of the model can be increased so that it can
be tuned according to different objective functions. Experimental results show that tuning this model properly leads to a significant gain in MT performance over the
state-of-the-art
Tracking relevant alignment characteristics for machine translation
In most statistical machine translation (SMT) systems, bilingual segments are extracted via word alignment. In this paper we compare alignments tuned directly according to alignment F-score and BLEU score in order to investigate
the alignment characteristics that are helpful in translation. We report results for two different SMT systems (a phrase-based and an n-gram-based system) on Chinese to English IWSLT data, and Spanish to English
European Parliament data. We give alignment hints to improve BLEU score, depending on the SMT system used and the type of corpus
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