Building Trust In Conversational AI: A Comprehensive Review And Solution Architecture For Explainable, Privacy-aware Systems Using Llms And Knowledge Graph · The Large Language Model Bible Contribute to LLM-Bible

Building Trust In Conversational AI: A Comprehensive Review And Solution Architecture For Explainable, Privacy-aware Systems Using Llms And Knowledge Graph

Zafar Ahtsham, Parthasarathy Venkatesh Balavadhani, Van Chan Le, Shahid Saad, Khan Aafaq Iqbal, Shahid Arsalan. Arxiv 2023

[Paper]    
Applications Model Architecture Reinforcement Learning Security Survey Paper

Conversational AI systems have emerged as key enablers of human-like interactions across diverse sectors. Nevertheless, the balance between linguistic nuance and factual accuracy has proven elusive. In this paper, we first introduce LLMXplorer, a comprehensive tool that provides an in-depth review of over 150 Large Language Models (LLMs), elucidating their myriad implications ranging from social and ethical to regulatory, as well as their applicability across industries. Building on this foundation, we propose a novel functional architecture that seamlessly integrates the structured dynamics of Knowledge Graphs with the linguistic capabilities of LLMs. Validated using real-world AI news data, our architecture adeptly blends linguistic sophistication with factual rigour and further strengthens data security through Role-Based Access Control. This research provides insights into the evolving landscape of conversational AI, emphasizing the imperative for systems that are efficient, transparent, and trustworthy.

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