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Autores principales: De Silva, Anjalee, Wijekoon, Janaka L., Liyanarachchi, Rashini, Panchendrarajan, Rrubaa, Rajapaksha, Weranga
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2403.03293
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author De Silva, Anjalee
Wijekoon, Janaka L.
Liyanarachchi, Rashini
Panchendrarajan, Rrubaa
Rajapaksha, Weranga
author_facet De Silva, Anjalee
Wijekoon, Janaka L.
Liyanarachchi, Rashini
Panchendrarajan, Rrubaa
Rajapaksha, Weranga
contents This paper discusses the effectiveness of leveraging Chatbot: Generative Pre-trained Transformer (ChatGPT) versions 3.5 and 4 for analyzing research papers for effective writing of scientific literature surveys. The study selected the \textit{Application of Artificial Intelligence in Breast Cancer Treatment} as the research topic. Research papers related to this topic were collected from three major publication databases Google Scholar, Pubmed, and Scopus. ChatGPT models were used to identify the category, scope, and relevant information from the research papers for automatic identification of relevant papers related to Breast Cancer Treatment (BCT), organization of papers according to scope, and identification of key information for survey paper writing. Evaluations performed using ground truth data annotated using subject experts reveal, that GPT-4 achieves 77.3\% accuracy in identifying the research paper categories and 50\% of the papers were correctly identified by GPT-4 for their scopes. Further, the results demonstrate that GPT-4 can generate reasons for its decisions with an average of 27\% new words, and 67\% of the reasons given by the model were completely agreeable to the subject experts.
format Preprint
id arxiv_https___arxiv_org_abs_2403_03293
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle AI Insights: A Case Study on Utilizing ChatGPT Intelligence for Research Paper Analysis
De Silva, Anjalee
Wijekoon, Janaka L.
Liyanarachchi, Rashini
Panchendrarajan, Rrubaa
Rajapaksha, Weranga
Artificial Intelligence
This paper discusses the effectiveness of leveraging Chatbot: Generative Pre-trained Transformer (ChatGPT) versions 3.5 and 4 for analyzing research papers for effective writing of scientific literature surveys. The study selected the \textit{Application of Artificial Intelligence in Breast Cancer Treatment} as the research topic. Research papers related to this topic were collected from three major publication databases Google Scholar, Pubmed, and Scopus. ChatGPT models were used to identify the category, scope, and relevant information from the research papers for automatic identification of relevant papers related to Breast Cancer Treatment (BCT), organization of papers according to scope, and identification of key information for survey paper writing. Evaluations performed using ground truth data annotated using subject experts reveal, that GPT-4 achieves 77.3\% accuracy in identifying the research paper categories and 50\% of the papers were correctly identified by GPT-4 for their scopes. Further, the results demonstrate that GPT-4 can generate reasons for its decisions with an average of 27\% new words, and 67\% of the reasons given by the model were completely agreeable to the subject experts.
title AI Insights: A Case Study on Utilizing ChatGPT Intelligence for Research Paper Analysis
topic Artificial Intelligence
url https://arxiv.org/abs/2403.03293