Ask Good Questions for Large Language Models
By: Qi Wu, Zhongqi Lu
Potential Business Impact:
Helps computers ask better questions to find answers.
Recent advances in large language models (LLMs) have significantly improved the performance of dialog systems, yet current approaches often fail to provide accurate guidance of topic due to their inability to discern user confusion in related concepts. To address this, we introduce the Ask-Good-Question (AGQ) framework, which features an improved Concept-Enhanced Item Response Theory (CEIRT) model to better identify users' knowledge levels. Our contributions include applying the CEIRT model along with LLMs to directly generate guiding questions based on the inspiring text, greatly improving information retrieval efficiency during the question & answer process. Through comparisons with other baseline methods, our approach outperforms by significantly enhencing the users' information retrieval experiences.
Similar Papers
Automatic Question & Answer Generation Using Generative Large Language Model (LLM)
Computation and Language
Creates test questions from books automatically.
Asking Clarifying Questions for Preference Elicitation With Large Language Models
Artificial Intelligence
Helps computers ask smart questions to learn what you like.
Knowledge Graph-extended Retrieval Augmented Generation for Question Answering
Machine Learning (CS)
AI answers questions better by using facts.