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Hauptverfasser: Susanto, Lucky, Pranawijayana, Anasta, Sukotjo, Cortino, Prasad, Soni, Wijaya, Derry
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2512.22508
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author Susanto, Lucky
Pranawijayana, Anasta
Sukotjo, Cortino
Prasad, Soni
Wijaya, Derry
author_facet Susanto, Lucky
Pranawijayana, Anasta
Sukotjo, Cortino
Prasad, Soni
Wijaya, Derry
contents Large language models (LLMs) are increasingly adopted in high-stakes domains such as healthcare and medical education, where the risk of generating factually incorrect (i.e., hallucinated) information is a major concern. While significant efforts have been made to detect and mitigate such hallucinations, predicting whether an LLM's response is correct remains a critical yet underexplored problem. This study investigates the feasibility of predicting correctness by analyzing a general-purpose model (GPT-4o) and a reasoning-centric model (OSS-120B) on a multiple-choice prosthodontics exam. We utilize metadata and hallucination signals across three distinct prompting strategies to build a correctness predictor for each (model, prompting) pair. Our findings demonstrate that this metadata-based approach can improve accuracy by up to +7.14% and achieve a precision of 83.12% over a baseline that assumes all answers are correct. We further show that while actual hallucination is a strong indicator of incorrectness, metadata signals alone are not reliable predictors of hallucination. Finally, we reveal that prompting strategies, despite not affecting overall accuracy, significantly alter the models' internal behaviors and the predictive utility of their metadata. These results present a promising direction for developing reliability signals in LLMs but also highlight that the methods explored in this paper are not yet robust enough for critical, high-stakes deployment.
format Preprint
id arxiv_https___arxiv_org_abs_2512_22508
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Predicting LLM Correctness in Prosthodontics Using Metadata and Hallucination Signals
Susanto, Lucky
Pranawijayana, Anasta
Sukotjo, Cortino
Prasad, Soni
Wijaya, Derry
Machine Learning
Artificial Intelligence
Large language models (LLMs) are increasingly adopted in high-stakes domains such as healthcare and medical education, where the risk of generating factually incorrect (i.e., hallucinated) information is a major concern. While significant efforts have been made to detect and mitigate such hallucinations, predicting whether an LLM's response is correct remains a critical yet underexplored problem. This study investigates the feasibility of predicting correctness by analyzing a general-purpose model (GPT-4o) and a reasoning-centric model (OSS-120B) on a multiple-choice prosthodontics exam. We utilize metadata and hallucination signals across three distinct prompting strategies to build a correctness predictor for each (model, prompting) pair. Our findings demonstrate that this metadata-based approach can improve accuracy by up to +7.14% and achieve a precision of 83.12% over a baseline that assumes all answers are correct. We further show that while actual hallucination is a strong indicator of incorrectness, metadata signals alone are not reliable predictors of hallucination. Finally, we reveal that prompting strategies, despite not affecting overall accuracy, significantly alter the models' internal behaviors and the predictive utility of their metadata. These results present a promising direction for developing reliability signals in LLMs but also highlight that the methods explored in this paper are not yet robust enough for critical, high-stakes deployment.
title Predicting LLM Correctness in Prosthodontics Using Metadata and Hallucination Signals
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2512.22508