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Selecting Better Samples from Pre-trained LLMs: A Case Study on Question Generation

Xingdi Yuan, Tong Wang, Yen-Hsiang Wang, Emery Fine, Rania Abdelghani, Hélène Sauzeon, Pierre-Yves Oudeyer

202318 citationsDOIOpen Access PDF

Abstract

Large Language Models (LLMs) have in recent years demonstrated impressive prowess in natural language generation. A common practice to improve generation diversity is to sample multiple outputs from the model. However, there lacks a simple and robust way of selecting the best output from these stochastic samples. As a case study framed in the context of question generation, we propose two prompt-based approaches to selecting high-quality questions from a set of LLM-generated candidates. Our method works under the constraints of 1) a black-box (non-modifiable) question generation model and 2) lack of access to human-annotated references -- both of which are realistic limitations for real-world deployment of LLMs. With automatic as well as human evaluations, we empirically demonstrate that our approach can effectively select questions of higher qualities than greedy generation.

Topics & Concepts

Natural language generationComputer scienceContext (archaeology)Set (abstract data type)Sample (material)Diversity (politics)Artificial intelligenceSoftware deploymentQuality (philosophy)Machine learningNatural languageRisk analysis (engineering)Software engineeringPolitical scienceProgramming languageGeographyBusinessEpistemologyChromatographyArchaeologyLawPhilosophyChemistryTopic ModelingNatural Language Processing TechniquesMultimodal Machine Learning Applications
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