What is it about?

Every type of machine translation system (i.e. neural, statistical, rule-based machine translation system) is equal important to build a sophistical hybrid machine translation system. Keeping this fact in my mind, I concentrate to improve statistical machine translation system with more natural way. In this paper, I try to preserve sentiment after translation to improve the overall accuracy of the machine translation system. So, I introduced senti-model here. A senti-model (sentiment model), translation model, language model, and distortion model are incorporated on the top of the beam search algorithm for decoding. At first, sentiment information is learned and modeled with translation probability by using this algorithm. Thereafter, I decode the source sentences-based on the contextual information. Overall procedure of translation modeling with a sentiment, parameter estimation for it, and senti-translation decoding (decoding with the sentiment model) are presented with empirical evidence. Experiments on a benchmark English–Hindi dataset shows that the proposed model is capable to improve the accuracy (in terms of 4.66 BLEU points, 4.09 LeBleu points, 4.67 NIST points, 5.71 RIBES points) significantly and preserves sentiment 7.79% more than the state-of-the-art technique.

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Why is it important?

This research introduces a sentiment-aware enhancement to statistical machine translation, known as the senti-model, improving accuracy and sentiment preservation significantly. By integrating sentiment information into translation modeling, it showcases empirical evidence of substantial gains in translation quality and sentiment retention, demonstrating the importance of hybrid approaches in machine translation advancement.

Perspectives

This study innovatively integrates sentiment preservation into statistical machine translation, yielding notable accuracy improvements and enhanced sentiment retention, highlighting the value of hybrid translation systems in advancing natural language processing tasks.

Dr. Debajyoty Banik

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This page is a summary of: Sentiment induced phrase-based machine translation: Robustness analysis of PBSMT with senti-module, Engineering Applications of Artificial Intelligence, November 2023, Elsevier,
DOI: 10.1016/j.engappai.2023.106977.
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