Cognitive Psychology and Blending AI for Emotion-Infused English Translation with Dynamic Vocabulary Growth

Abstract
Machine Neural Translation (MNT) has received a lot of interest in recent years, owing to its simple yet cutting-edge capabilities. Wearable sensors have great promise for research into cognitive development in the MNT processing. The limited semantic knowledge acquired by language learners leads to inaccurate terminology. Many pupils rely on the traditional thesaurus to express their feelings. Previous research has revealed, however, that MNT has a number of restrictions, including source scope requirements, unusual word translation, and restricted speech, whereas Machine Statistical Translation (MST) has additional qualities that adhere to these constraints. Furthermore, it presents a method for determining emotional ratings for students learning English as a second language, with word choice based on contextual awareness. The research offers the Machine Emotional Statistical Vocabulary Language Expansion (MESVLE) approach for protecting a list of words related to emotional information in context. In our case, the MNT decoder improves word prediction reliability by referring to MST word recommendations throughout both the training and testing phases. Patterns are trained to record emotional occurrences, and the rating approach incorporates a variety of word ranking factors. MESVLE was used to create an online review writing program to help students learn to write. Experimental results on translation tasks from Chinese to English and English to German show that the suggested structure will profit from MST words while also continuously developing MNT and MST baseline structures.

Author
Mustafa Zuhaer Nayef Al-Dabagh

DOI
https://doi.org/10.1109/ICERCS63125.2024.10895825

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