An Entity Linking Agent for Question Answering
By: Yajie Luo , Yihong Wu , Muzhi Li and more
Potential Business Impact:
Helps computers find answers in short questions.
Some Question Answering (QA) systems rely on knowledge bases (KBs) to provide accurate answers. Entity Linking (EL) plays a critical role in linking natural language mentions to KB entries. However, most existing EL methods are designed for long contexts and do not perform well on short, ambiguous user questions in QA tasks. We propose an entity linking agent for QA, based on a Large Language Model that simulates human cognitive workflows. The agent actively identifies entity mentions, retrieves candidate entities, and makes decision. To verify the effectiveness of our agent, we conduct two experiments: tool-based entity linking and QA task evaluation. The results confirm the robustness and effectiveness of our agent.
Similar Papers
An Entity Linking Agent for Question Answering
Computation and Language
Helps computers find answers in short questions.
LELA: an LLM-based Entity Linking Approach with Zero-Shot Domain Adaptation
Computation and Language
Connects words in stories to real things.
Text-to-SPARQL Goes Beyond English: Multilingual Question Answering Over Knowledge Graphs through Human-Inspired Reasoning
Computation and Language
Answers questions in any language from data.