Robust Few-shot Transfer Learning for Knowledge Base Question Answering with Unanswerable Questions
Authors: Riya Sawhney, Indrajit Bhattacharya, Mausam
Abstract: Real-world KBQA applications require models that are (1) robust — e.g., can differentiate between answerable and unanswerable questions, and (2) low-resource — do not require large training data. Towards this goal, we propose the novel task of few-shot transfer for KBQA with unanswerable questions. We present FUn-FuSIC that extends the state-of-the-art (SoTA) few-shot transfer model for answerable-only KBQA to handle unanswerability. It iteratively prompts an LLM to generate logical forms for the question by providing feedback using a diverse suite of syntactic, semantic and execution guided checks, and adapts self-consistency to assess confidence of the LLM to decide answerability. Experiments over newly constructed datasets show that FUn-FuSIC outperforms suitable adaptations of the SoTA model for KBQA with unanswerability, and the SoTA model for answerable-only few-shot-transfer KBQA.