Part-of-speech language modeling is commonly used as a component in statistical machine translation systems, but there is mixed evidence that its usage leads to significant improvements. We argue that its limited effectiveness is due to the lack of lexicalization. We introduce a new approach that builds a separate local language model for each word and part-of-speech pair. The resulting models lead to more context-sensitive probability distributions and we also exploit the fact that different local models are used to estimate the language model probability of each word during decoding. Our approach is evaluated for Arabic- and Chinese-to-English translation. We show that it leads to statistically significant improvements for multiple test s...
Spoken language translation (SLT) exists within one of the most challenging intersections of speech ...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
This paper presents a novel approach to improve reordering in phrase-based ma-chine translation by u...
This paper describes a novel target-side syntactic language model for phrase-based statistical machi...
We formulate an original model for statistical machine translation (SMT) inspired by characteristics...
Language modeling is an important part for both speech recognition and machine translation systems. ...
This paper presents methods to combine large language models trained from diverse text sources and a...
Arabic is considered to have a rich morphology compared to English language. This fact adversely aff...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
This article addresses the development of statistical models for phrase-based machine translation (M...
The statistical framework has proved to be very successful in machine translation. The main reason f...
In this study, we investigate English-to-Myanmarstatistical machine translation (SMT) by usingpart-o...
In this paper, we present a novel training method for a localized phrase-based predic-tion model for...
Machine translation systems automatically translate texts from one natural language to another. The ...
Spoken language translation (SLT) exists within one of the most challenging intersections of speech ...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
This paper presents a novel approach to improve reordering in phrase-based ma-chine translation by u...
This paper describes a novel target-side syntactic language model for phrase-based statistical machi...
We formulate an original model for statistical machine translation (SMT) inspired by characteristics...
Language modeling is an important part for both speech recognition and machine translation systems. ...
This paper presents methods to combine large language models trained from diverse text sources and a...
Arabic is considered to have a rich morphology compared to English language. This fact adversely aff...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
This article addresses the development of statistical models for phrase-based machine translation (M...
The statistical framework has proved to be very successful in machine translation. The main reason f...
In this study, we investigate English-to-Myanmarstatistical machine translation (SMT) by usingpart-o...
In this paper, we present a novel training method for a localized phrase-based predic-tion model for...
Machine translation systems automatically translate texts from one natural language to another. The ...
Spoken language translation (SLT) exists within one of the most challenging intersections of speech ...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
This paper presents a novel approach to improve reordering in phrase-based ma-chine translation by u...