Parallel corpora are often injected with bilingual lexical resources for improved Indian language machine translation (MT). In absence of such lexical resources, multilingual topic models have been used to create coarse lexical resources in the past, using a Cartesian product approach. Our results show that for morphologically rich languages like Hindi, the Cartesian product approach is detrimental for MT. We then present a novel 'sentential' approach to use this coarse lexical resource from a multilingual topic model. Our coarse lexical resource when injected with a parallel corpus outperforms a system trained using parallel corpus and a good quality lexical resource. As demonstrated by the quality of our coarse lexical resource and its be...
Statistical machine translation to morphologically richer languages is a challenging task and more s...
Key to fast adaptation of language technologies for any language hinges on the availability of funda...
In this paper, we investigate the effectiveness of training a multimodal neural machine translation ...
Parallel corpora are often injected with bilingual dictionaries for improved Indian language machine...
Parallel corpora are often injected with bilingual dictionaries for improved Indian language machine...
In this paper we present several parallel corpora for English↔Hindi and talk about their natures and...
Recent work has established the efficacy of Amazon’s Mechanical Turk for constructing parallel corpo...
Hindi and Urdu share a common phonol-ogy, morphology and grammar but are written in different script...
Statistical machine translation to morphologically richer languages is a challenging task and more s...
Even though lot of Statistical Machine Translation(SMT) research work is happening for English-Hindi...
We present HindEnCorp, a parallel corpus of Hindi and English, and HindMonoCorp, a monolingual corpu...
Key to fast adaptation of language technologies for any language hinges on the availability of funda...
After availability of cheaper large memory and high performance processors, Statistical Machine Tran...
Abstract In this paper, we describe our EnglishHindi and Hindi-English statistical systems submitted...
After availability of cheaper large memory and high performance processors, Statistical Machine Tran...
Statistical machine translation to morphologically richer languages is a challenging task and more s...
Key to fast adaptation of language technologies for any language hinges on the availability of funda...
In this paper, we investigate the effectiveness of training a multimodal neural machine translation ...
Parallel corpora are often injected with bilingual dictionaries for improved Indian language machine...
Parallel corpora are often injected with bilingual dictionaries for improved Indian language machine...
In this paper we present several parallel corpora for English↔Hindi and talk about their natures and...
Recent work has established the efficacy of Amazon’s Mechanical Turk for constructing parallel corpo...
Hindi and Urdu share a common phonol-ogy, morphology and grammar but are written in different script...
Statistical machine translation to morphologically richer languages is a challenging task and more s...
Even though lot of Statistical Machine Translation(SMT) research work is happening for English-Hindi...
We present HindEnCorp, a parallel corpus of Hindi and English, and HindMonoCorp, a monolingual corpu...
Key to fast adaptation of language technologies for any language hinges on the availability of funda...
After availability of cheaper large memory and high performance processors, Statistical Machine Tran...
Abstract In this paper, we describe our EnglishHindi and Hindi-English statistical systems submitted...
After availability of cheaper large memory and high performance processors, Statistical Machine Tran...
Statistical machine translation to morphologically richer languages is a challenging task and more s...
Key to fast adaptation of language technologies for any language hinges on the availability of funda...
In this paper, we investigate the effectiveness of training a multimodal neural machine translation ...