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Autores principales: Silva, Maria de Lourdes M., Mendonça, André L. C., Neto, Eduardo R. D., Chaves, Iago C., Brito, Felipe T., Farias, Victor A. E., Machado, Javam C.
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2503.16614
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author Silva, Maria de Lourdes M.
Mendonça, André L. C.
Neto, Eduardo R. D.
Chaves, Iago C.
Brito, Felipe T.
Farias, Victor A. E.
Machado, Javam C.
author_facet Silva, Maria de Lourdes M.
Mendonça, André L. C.
Neto, Eduardo R. D.
Chaves, Iago C.
Brito, Felipe T.
Farias, Victor A. E.
Machado, Javam C.
contents Computer manufacturers typically offer platforms for users to report faults. However, there remains a significant gap in these platforms' ability to effectively utilize textual reports, which impedes users from describing their issues in their own words. In this context, Natural Language Processing (NLP) offers a promising solution, by enabling the analysis of user-generated text. This paper presents an innovative approach that employs NLP models to classify user reports for detecting faulty computer components, such as CPU, memory, motherboard, video card, and more. In this work, we build a dataset of 341 user reports obtained from many sources. Additionally, through extensive experimental evaluation, our approach achieved an accuracy of 79% with our dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2503_16614
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Classification of User Reports for Detection of Faulty Computer Components using NLP Models: A Case Study
Silva, Maria de Lourdes M.
Mendonça, André L. C.
Neto, Eduardo R. D.
Chaves, Iago C.
Brito, Felipe T.
Farias, Victor A. E.
Machado, Javam C.
Computation and Language
Artificial Intelligence
Machine Learning
Computer manufacturers typically offer platforms for users to report faults. However, there remains a significant gap in these platforms' ability to effectively utilize textual reports, which impedes users from describing their issues in their own words. In this context, Natural Language Processing (NLP) offers a promising solution, by enabling the analysis of user-generated text. This paper presents an innovative approach that employs NLP models to classify user reports for detecting faulty computer components, such as CPU, memory, motherboard, video card, and more. In this work, we build a dataset of 341 user reports obtained from many sources. Additionally, through extensive experimental evaluation, our approach achieved an accuracy of 79% with our dataset.
title Classification of User Reports for Detection of Faulty Computer Components using NLP Models: A Case Study
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2503.16614