Abstract

Linguistic recognition, a fundamental aspect of natural language processing, has seen significant advancements with the integration of deep learning algorithms. his paper presents a novel approach leveraging deep learning algorithms, specifically an optimized Long Short-Term Memory (LSTM) model, for term recognition tasks in English linguistics. This paper presents a novel approach leveraging deep learning algorithms, particularly Weighted Genetic Optimization Deep Learning (WGODL), for term recognition tasks in English linguistics. his hybrid approach not only enhances model accuracy but also improves robustness and generalization, enabling accurate term recognition even in noisy or ambiguous linguistic contexts. The weighted genetic optimization mechanism strategically prioritizes relevant features during the learning process, further enhancing the model's ability to discern domain-specific terms. Additionally, qualitative analysis highlights the interpretability of learned representations, shedding light on the underlying linguistic structures captured by the model. By harnessing the sequential nature of language data, the proposed model integrates LSTM units with optimization techniques to effectively capture contextual dependencies and semantic relationships within text corpora. Through extensive experimentation on diverse linguistic datasets, our optimized LSTM model achieves superior term recognition accuracy, surpassing traditional methods by 8.3%.

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