Dynamic Personalization Through Continuous Feedback Loops in Interactive AI Systems
Liu He

TL;DR
This paper introduces a framework for real-time, dynamic personalization in interactive AI systems by integrating continuous feedback loops, leading to improved user satisfaction and adaptability over static methods.
Contribution
It presents a novel theoretical and practical approach for continuous feedback-driven personalization, with guarantees on convergence and regret bounds.
Findings
Dynamic personalization improves user satisfaction by 15-23%.
The approach maintains computational efficiency.
Continuous feedback mechanisms impact user experience and satisfaction.
Abstract
Interactive AI systems, such as recommendation engines and virtual assistants, commonly use static user profiles and predefined rules to personalize interactions. However, these methods often fail to capture the dynamic nature of user preferences and context. This study proposes a theoretical framework and practical implementation for integrating continuous feedback loops into personalization algorithms to enable real-time adaptation. By continuously collecting and analyzing user feedback, the AI system can dynamically adjust its recommendations, responses, and interactions to better align with the user's current context and preferences. We provide theoretical guarantees for the convergence and regret bounds of our adaptive personalization algorithm. Our experimental evaluation across three domains-recommendation systems, virtual assistants, and adaptive learning platforms-demonstrates…
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Taxonomy
TopicsRecommender Systems and Techniques · Innovative Human-Technology Interaction · Intelligent Tutoring Systems and Adaptive Learning
