S. Rajeshwari,
- Research Scholar, 1Research Scholar, Department of Computer Science and Engineering, Texas Global University, Texas, United States of America
Abstract
The advancement of natural language processing (NLP) has significantly enhanced human-computer communication (HCC), transforming how users interact with machines. Traditionally, HCC relied on command-based interfaces and graphical user interfaces (GUIs), but the introduction of conversational artificial intelligence (AI) systems powered by NLP has revolutionized this field. This paper explores the role of NLP in improving communication between humans and computers, emphasizing its impact on language understanding, context processing, and interactive capabilities. Key NLP techniques such as speech recognition, sentiment analysis, dialogue management, and emotion recognition are discussed in the context of various applications, including virtual assistants, healthcare tools, and accessibility solutions. The paper also examines challenges faced by NLP systems, such as handling ambiguous language, addressing biases, and ensuring ethical practices in AI-driven communication. Furthermore, it highlights future directions for enhancing HCC through multimodal interactions, emotion-aware AI, and personalized systems. By focusing on these advancements, the paper illustrates the transformative potential of NLP in creating more intuitive, responsive, and effective human-computer interactions, paving the way for more seamless integration of AI into daily life.
Keywords: Natural language processing (NLP), human-computer communication (HCC), language understanding
[This article belongs to International Journal of Computer Science Languages ]
S. Rajeshwari. Enhancing Human-Computer Communication and Interaction Through Natural Language Processing. International Journal of Computer Science Languages. 2025; 03(01):13-26.
S. Rajeshwari. Enhancing Human-Computer Communication and Interaction Through Natural Language Processing. International Journal of Computer Science Languages. 2025; 03(01):13-26. Available from: https://journals.stmjournals.com/ijcsl/article=2025/view=203350
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International Journal of Computer Science Languages
| Volume | 03 |
| Issue | 01 |
| Received | 01/02/2025 |
| Accepted | 28/02/2025 |
| Published | 10/03/2025 |
| Publication Time | 37 Days |
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