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Main Authors: Rathore, Vidhi, Aneesh, Sambu, Singh, Himanshu
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.03051
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author Rathore, Vidhi
Aneesh, Sambu
Singh, Himanshu
author_facet Rathore, Vidhi
Aneesh, Sambu
Singh, Himanshu
contents Hallucinations can be produced by conversational AI systems, particularly in multi-turn conversations where context changes and contradictions may eventually surface. By representing the entire conversation as a temporal graph, we present a novel graph-based method for detecting dialogue-level hallucinations. Our framework models each dialogue as a node, encoding it using a sentence transformer. We explore two different ways of connectivity: i) shared-entity edges, which connect turns that refer to the same entities; ii) temporal edges, which connect contiguous turns in the conversation. Message-passing is used to update the node embeddings, allowing flow of information between related nodes. The context-aware node embeddings are then combined using attention pooling into a single vector, which is then passed on to a classifier to determine the presence and type of hallucinations. We demonstrate that our method offers slightly improved performance over existing methods. Further, we show the attention mechanism can be used to justify the decision making process. The code and model weights are made available at: https://github.com/sambuaneesh/anlp-project.
format Preprint
id arxiv_https___arxiv_org_abs_2601_03051
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Temporal Graph Network: Hallucination Detection in Multi-Turn Conversation
Rathore, Vidhi
Aneesh, Sambu
Singh, Himanshu
Computation and Language
Machine Learning
Hallucinations can be produced by conversational AI systems, particularly in multi-turn conversations where context changes and contradictions may eventually surface. By representing the entire conversation as a temporal graph, we present a novel graph-based method for detecting dialogue-level hallucinations. Our framework models each dialogue as a node, encoding it using a sentence transformer. We explore two different ways of connectivity: i) shared-entity edges, which connect turns that refer to the same entities; ii) temporal edges, which connect contiguous turns in the conversation. Message-passing is used to update the node embeddings, allowing flow of information between related nodes. The context-aware node embeddings are then combined using attention pooling into a single vector, which is then passed on to a classifier to determine the presence and type of hallucinations. We demonstrate that our method offers slightly improved performance over existing methods. Further, we show the attention mechanism can be used to justify the decision making process. The code and model weights are made available at: https://github.com/sambuaneesh/anlp-project.
title Temporal Graph Network: Hallucination Detection in Multi-Turn Conversation
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2601.03051