- Interpretable Question Answering with Knowledge Graphs
 
Published in International Semantic Intelligence Conference (ISIC), University of Lubeck, Germany, 2025
Recommended citation: Kartikeya Aneja, Manasvi Srivastava, Subhayan Das, Nagender Aneja "Interpretable Question Answering with Knowledge Graphs." International Semantic Intelligence Conference (ISIC), University of Lubeck, Germany, 2025. https://arxiv.org/abs/2510.19181
Interpretable-Question-Answering-with-Knowledge-Graphs
Interpretable-Question-Answering-with-Knowledge-Graphs
(Conference Publication)
Abstract: This paper presents a question answering system that operates exclusively on a knowledge graph retrieval without relying on retrieval augmented generation (RAG) with large language models (LLMs). Instead, a small paraphraser model is used to paraphrase the entity relationship edges retrieved from querying the knowledge graph. The proposed pipeline is divided into two main stages. The first stage involves pre-processing a document to generate sets of question-answer (QA) pairs. The second stage converts these QAs into a knowledge graph from which graph-based retrieval is performed using embeddings and fuzzy techniques. The graph is queried, re-ranked, and paraphrased to generate a final answer. This work includes an evaluation using LLM-as-a-judge on the CRAG benchmark, which resulted in accuracies of 71.9% and 54.4% using LLAMA-3.2 and GPT-3.5-Turbo, respectively.
Recommended citation: ‘Kartikeya Aneja, Manasvi Srivastava, Subhayan Das, Nagender Aneja "Interpretable Question Answering with Knowledge Graphs." International Semantic Intelligence Conference (ISIC), University of Lubeck, Germany, 2025.’
