Integrating machine learning (ML) into intelligent networks (INs) has redefined the capabilities of modern communication systems by enabling real-time decision-making, adaptive optimization, and enhanced security. The...
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Integrating machine learning (ML) into intelligent networks (INs) has redefined the capabilities of modern communication systems by enabling real-time decision-making, adaptive optimization, and enhanced security. The present survey systematically analyzes state-of-the-art ML techniques deployed across diverse IN architectures, including centralized, decentralized, and hybrid frameworks. It delves into key ML methodologies, supervised, unsupervised, reinforcement, and deep learning (DL), and highlights their transformative impact on network operations, such as resource allocation, fault management, and traffic optimization. Moreover, the survey emphasizes practical applications, showcasing the role of ML in enhancing performance across domains like telecommunication networks, smart cities, healthcare, and industrial automation. By consolidating fragmented research, this survey presents a unified perspective that bridges theoretical advancements with real-world implementations. The insights offered serve as a comprehensive reference for understanding how ML propels INs toward achieving unparalleled efficiency, reliability, and scalability levels. This work stands out by addressing implementation challenges, synergies across applications, and actionable strategies for leveraging ML in complex network environments.
Aging is a physiological process associated with numerous cardiovascular, degenerative and neurological conditions. The current demographic changes in the world, characterized by an increasing average age especially i...
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Global agriculture faces a major threat from plant diseases, particularly those affecting bean leaves, resulting in significant crop yield losses and impacting farmers' livelihoods and food production. To overcome...
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We present a GSS4T1-based metagrating designed to exhibit a homogeneous-optical-medium response, when GSS4T1 amorphous, or a judicious Fano response, when GSS4T1 crystalline, which enables a negative beam steering tha...
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The integration of wireless controllers in robot education has emerged as a pivotal area to enhance the learning experience and practical understanding of robotics concepts. This paper presents the implementation of a...
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The imbalanced class distribution in intrusion detection systems has been a significant issue. Imbalanced class distribution can negatively impact the performance of intrusion detection systems as they may be biased t...
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This tutorial paper introduces hybrid feedback control through a self-contained examination of hybrid control systems modeled by the combination of differential and difference equations with constraints. Using multipl...
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The diagnosis of stomach cancer automatically in digital pathology images is a difficult problem. Gastric cancer (GC) detection and pathological study can be greatly aided by precise region-by-region segmentation. On ...
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The article analyzes modern computing devices that perform multiplication operations. The main classes of multipliers built on the basis of both electronic and optical elements are considered. The main disadvantage of...
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Emotion recognition in text has become an essential research area within artificial intelligence and natural language processing due to its applications in sentiment analysis, human-computer interaction, and social me...
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ISBN:
(数字)9798350376647
ISBN:
(纸本)9798350376654
Emotion recognition in text has become an essential research area within artificial intelligence and natural language processing due to its applications in sentiment analysis, human-computer interaction, and social media analysis. This paper introduces an approach for emotion recognition in social networks using transformer models enhanced with explainability techniques. By leveraging the advanced capabilities of transformers to analyze and classify emotions in written content, our finetuned models achieves high accuracy in identifying emotions according to the Ekman emotional model. The integration of LIME and SHAP provides transparency and interpretability to our model, making it more trustworthy for practical applications. Our findings indicate that models like XLNET report an exceptional performance in emotion recognition tasks. The explainability techniques illustrate the transformer model decision-making processes and the way that they utilize words and their continual information in sentences.
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