The increasing integration of artificial intelligence (AI) into critical decision-making processes necessitates a paradigm shift from mere explainability to the provision of actionable intelligence. While Explainable AI (XAI) focuses on elucidating *how* an AI model arrives at a prediction or decision, it often falls short in guiding users on *what to do next*. This paper proposes a novel framework centered on adaptive human-AI dialogues, designed to empower users by translating complex AI insights into concrete, context-aware, and personalized actions. We argue that a dynamic, conversational interface, capable of understanding user intent, adapting to their expertise, and providing tailored recommendations, is crucial for fostering trust, improving decision quality, and enhancing user autonomy. Our methodology outlines a conceptual architecture comprising an AI model, an explanation generation module, an action recommendation system, a user model, and a sophisticated dialogue manager. Through this adaptive dialogue system, we envision a future where AI not only informs but actively assists users in navigating complex scenarios, thereby bridging the gap between AI explanation and practical application.