A novel model based on Sequential Adaptive Memory for English–Hindi Translation

Abstract Machine‐based language translation has been certainly picking up. Still, machines lag behind the cognitive powers of human beings. Neural Machine Translation (NMT) methods require huge datasets and computational power for high‐quality translation. A novel Sequential Adaptive Memory (SAM) co...

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Main Authors: Sandeep Saini, Vineet Sahula
Format: Article
Language:English
Published: Wiley 2021-06-01
Series:Cognitive Computation and Systems
Online Access:https://doi.org/10.1049/ccs2.12011
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spelling doaj-64ad8f0c62b64fbc969a0aee49b8fcb62021-06-15T08:33:16ZengWileyCognitive Computation and Systems2517-75672021-06-013214215310.1049/ccs2.12011A novel model based on Sequential Adaptive Memory for English–Hindi TranslationSandeep Saini0Vineet Sahula1Department of Electronics and Communication Engineering The LNM Institute of Information Technology Jaipur IndiaDepartment of Electronics and Communication Engineering Malaviya National Institute of Technology Jaipur IndiaAbstract Machine‐based language translation has been certainly picking up. Still, machines lag behind the cognitive powers of human beings. Neural Machine Translation (NMT) methods require huge datasets and computational power for high‐quality translation. A novel Sequential Adaptive Memory (SAM) cognitive model‐based machine translation system for English to Hindi translation, was proposed. This model is an augmented version of the Cortical Learning Algorithm (CLA). The SAM is based on the architecture of the neocortex region of the brain, where speech and language comprehension and production take place. The proposed model is capable of learning with smaller datasets. This model employs the sequence to sequence learning approach, which provides better quality translation. It enables the creation of word pairs, dictionaries, and rules for translation. The results of the proposed approach are compared with the traditional phrase‐based SMT approach as well as with the state‐of‐the‐art NMT approach. The results are comparable with the results of the conventional approaches. We illustrate that the limitations of the approaches are won over by the proposed SAM approach. It is observed that SAM is capable of exhibiting satisfactory quality translation for low resource languages as well.https://doi.org/10.1049/ccs2.12011
collection DOAJ
language English
format Article
sources DOAJ
author Sandeep Saini
Vineet Sahula
spellingShingle Sandeep Saini
Vineet Sahula
A novel model based on Sequential Adaptive Memory for English–Hindi Translation
Cognitive Computation and Systems
author_facet Sandeep Saini
Vineet Sahula
author_sort Sandeep Saini
title A novel model based on Sequential Adaptive Memory for English–Hindi Translation
title_short A novel model based on Sequential Adaptive Memory for English–Hindi Translation
title_full A novel model based on Sequential Adaptive Memory for English–Hindi Translation
title_fullStr A novel model based on Sequential Adaptive Memory for English–Hindi Translation
title_full_unstemmed A novel model based on Sequential Adaptive Memory for English–Hindi Translation
title_sort novel model based on sequential adaptive memory for english–hindi translation
publisher Wiley
series Cognitive Computation and Systems
issn 2517-7567
publishDate 2021-06-01
description Abstract Machine‐based language translation has been certainly picking up. Still, machines lag behind the cognitive powers of human beings. Neural Machine Translation (NMT) methods require huge datasets and computational power for high‐quality translation. A novel Sequential Adaptive Memory (SAM) cognitive model‐based machine translation system for English to Hindi translation, was proposed. This model is an augmented version of the Cortical Learning Algorithm (CLA). The SAM is based on the architecture of the neocortex region of the brain, where speech and language comprehension and production take place. The proposed model is capable of learning with smaller datasets. This model employs the sequence to sequence learning approach, which provides better quality translation. It enables the creation of word pairs, dictionaries, and rules for translation. The results of the proposed approach are compared with the traditional phrase‐based SMT approach as well as with the state‐of‐the‐art NMT approach. The results are comparable with the results of the conventional approaches. We illustrate that the limitations of the approaches are won over by the proposed SAM approach. It is observed that SAM is capable of exhibiting satisfactory quality translation for low resource languages as well.
url https://doi.org/10.1049/ccs2.12011
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