Authors: R.Premkumar, Janesh M, Gowsik PU, Joachim Andrew A
Abstract: The growing need for intelligent and interactive digital assistants has driven the development of smart virtual companions that offer highly personalized user experiences. This paper introduces a Smart Virtual Companion with Personalized Conversations, aimed at improving human-computer interaction through adaptive and context-aware dialogue. The system utilizes advanced natural language processing (NLP) and machine learning methods to interpret user intent, preferences, and emotional context. By storing user profiles and analyzing past interactions, the companion is able to generate tailored responses that enhance engagement and overall user satisfaction.The proposed framework incorporates key components such as sentiment analysis, intent detection, and efficient dialogue management to enable meaningful and dynamic conversations. It continu-ously learns from ongoing interactions, allowing it to refine its responses and better align with user needs over time. The system is designed for deployment across various platforms, including mobile devices, web interfaces, and smart home systems, ensuring flexibility and accessibility. Furthermore, built-in privacy measures safeguard user data during interactions. Experimental evaluations indicate that the system outperforms traditional rule-based chatbots in terms of con-versational quality and user engagement.
DOI: https://doi.org/10.5281/zenodo.19471913
