BAYESIAN OPTIMIZATION FOR HYPERPARAMETER TUNING IN HEALTHCARE FOR DIABETES PREDICTION

Aim/Purpose Traditional hyperparameter tuning methods' inefficiency and low accuracy in diabetes prediction. Application and evaluation of Bayesian optimization aim to increase the accuracy of diabetes prediction models. Background Bayesian optimization (BO) has emerged as a powerful technique...

Full description

Saved in:
Bibliographic Details
Published inInforming science Vol. 28; p. 1
Main Authors Sudhakar, Annapantula, Sujatha, S, Sathiya, M, Sivaramakrishnan, A, Subramanian, Balambigai, Venkata Ramana, K
Format Journal Article
LanguageEnglish
Published Informing Science Institute 01.01.2025
Subjects
Online AccessGet full text
ISSN1547-9684

Cover

Abstract Aim/Purpose Traditional hyperparameter tuning methods' inefficiency and low accuracy in diabetes prediction. Application and evaluation of Bayesian optimization aim to increase the accuracy of diabetes prediction models. Background Bayesian optimization (BO) has emerged as a powerful technique for hyperparameter tuning in machine learning models with its methodical approach for optimizing complex functions with expensive evaluations. Selecting the optimal hyperparameters for models can significantly increase prediction accuracy in the healthcare sector, particularly for diabetes prediction, hence improving patient outcomes and resource management. Methodology Among the well-known diabetes databases used in the study is the Pima Indian Diabetes Database. Among the machine learning models developed and whose hyperparameters are modified via Bayesian optimization are Support Vector Machines (SVM), Random Forest, and Gradient Boosting Machines (GBM). The optimization process is compared with traditional tuning methods to assess improvements in model performance. Contribution Problems include the increasing prevalence of diabetes worldwide and the role vital function prediction models play in early diagnosis and therapy. Especially when dealing with enormous datasets common in healthcare, grid search, and random search are sometimes computationally taxing and inefficient. However, Bayesian optimization promises a more practical and economical approach by selecting hyperparameters iteratively based on earlier evaluations. Findings Bayesian optimization not only yields faster calculation times but also outperforms traditional methods. More precisely, models adapted by Bayesian optimization show greater sensitivity and specificity, which are crucial for accurate and prompt diabetes diagnosis. Future Research This work can be improvised using several recent artificial intelligence algorithms with the integration of IoT on real-time datasets. Keywords machine learning, Bayesian, hyperparameter, diabetes prediction, healthcare applications
AbstractList Traditional hyperparameter tuning methods' inefficiency and low accuracy in diabetes prediction. Application and evaluation of Bayesian optimization aim to increase the accuracy of diabetes prediction models. Bayesian optimization (BO) has emerged as a powerful technique for hyperparameter tuning in machine learning models with its methodical approach for optimizing complex functions with expensive evaluations. Selecting the optimal hyperparameters for models can significantly increase prediction accuracy in the healthcare sector, particularly for diabetes prediction, hence improving patient outcomes and resource management. Among the well-known diabetes databases used in the study is the Pima Indian Diabetes Database. Among the machine learning models developed and whose hyperparameters are modified via Bayesian optimization are Support Vector Machines (SVM), Random Forest, and Gradient Boosting Machines (GBM). The optimization process is compared with traditional tuning methods to assess improvements in model performance. Bayesian optimization not only yields faster calculation times but also outperforms traditional methods. More precisely, models adapted by Bayesian optimization show greater sensitivity and specificity, which are crucial for accurate and prompt diabetes diagnosis.
Aim/Purpose Traditional hyperparameter tuning methods' inefficiency and low accuracy in diabetes prediction. Application and evaluation of Bayesian optimization aim to increase the accuracy of diabetes prediction models. Background Bayesian optimization (BO) has emerged as a powerful technique for hyperparameter tuning in machine learning models with its methodical approach for optimizing complex functions with expensive evaluations. Selecting the optimal hyperparameters for models can significantly increase prediction accuracy in the healthcare sector, particularly for diabetes prediction, hence improving patient outcomes and resource management. Methodology Among the well-known diabetes databases used in the study is the Pima Indian Diabetes Database. Among the machine learning models developed and whose hyperparameters are modified via Bayesian optimization are Support Vector Machines (SVM), Random Forest, and Gradient Boosting Machines (GBM). The optimization process is compared with traditional tuning methods to assess improvements in model performance. Contribution Problems include the increasing prevalence of diabetes worldwide and the role vital function prediction models play in early diagnosis and therapy. Especially when dealing with enormous datasets common in healthcare, grid search, and random search are sometimes computationally taxing and inefficient. However, Bayesian optimization promises a more practical and economical approach by selecting hyperparameters iteratively based on earlier evaluations. Findings Bayesian optimization not only yields faster calculation times but also outperforms traditional methods. More precisely, models adapted by Bayesian optimization show greater sensitivity and specificity, which are crucial for accurate and prompt diabetes diagnosis. Future Research This work can be improvised using several recent artificial intelligence algorithms with the integration of IoT on real-time datasets. Keywords machine learning, Bayesian, hyperparameter, diabetes prediction, healthcare applications
Audience Academic
Author Sivaramakrishnan, A
Sudhakar, Annapantula
Sathiya, M
Venkata Ramana, K
Sujatha, S
Subramanian, Balambigai
Author_xml – sequence: 1
  fullname: Sudhakar, Annapantula
– sequence: 2
  fullname: Sujatha, S
– sequence: 3
  fullname: Sathiya, M
– sequence: 4
  fullname: Sivaramakrishnan, A
– sequence: 5
  fullname: Subramanian, Balambigai
– sequence: 6
  fullname: Venkata Ramana, K
BookMark eNptkL1qwzAURjWk0CTtOwg6u9iSrZ9RcZRY4NhGUYZ0CbIsBZfEgbrvT522Q4dy-bjwcc4d7gLMhtvgZ2CeZCmNOGHpI1iM43scI4yydA4OK3GUeyUqWDdG7dSbMKqu4KbWsDg2UjdCi500UkNzqFS1haqChRSlKXKh5Te3VmI1EXvYaLlW-d1_Ag_BXkb__LuXwGykyYuorLcqF2V0JpRGtotbSjJEuKPBpaz1U1xCutjbNGTcJ9x2CaKBcmcRxjZkNhCMWsqsYx3FS_Dyc_ZsL_7UD-H2-WHdtR_dSTCMOKGY3anXf6hpOn_t3fSe0E_9H-EL1_xVpg
ContentType Journal Article
Copyright COPYRIGHT 2025 Informing Science Institute
Copyright_xml – notice: COPYRIGHT 2025 Informing Science Institute
DatabaseTitleList

DeliveryMethod fulltext_linktorsrc
Discipline Library & Information Science
ExternalDocumentID A832967387
GeographicLocations India
GeographicLocations_xml – name: India
GroupedDBID .4I
29I
2WC
5GY
5VS
88I
AAFWJ
ABDBF
ABUWG
ADMLS
AFKRA
ALMA_UNASSIGNED_HOLDINGS
ALSLI
AZQEC
BENPR
CCPQU
DWQXO
E3Z
EBS
EJD
ELW
FRS
GNUQQ
HCIFZ
I-F
IAO
IEA
ITC
KQ8
M2P
M2R
MK~
ML~
OK1
PHGZM
PHGZT
PIMPY
PMFND
PV9
RNS
RZL
TUS
XH6
XSB
ID FETCH-LOGICAL-g677-ad0b765269c7fc48be48bc16d0ea4f59e19ad127f79ca233af5af632b78ac8d73
ISSN 1547-9684
IngestDate Tue Jun 17 21:57:52 EDT 2025
Tue Jun 10 21:00:01 EDT 2025
IsPeerReviewed false
IsScholarly true
Language English
LinkModel OpenURL
MergedId FETCHMERGED-LOGICAL-g677-ad0b765269c7fc48be48bc16d0ea4f59e19ad127f79ca233af5af632b78ac8d73
ParticipantIDs gale_infotracmisc_A832967387
gale_infotracacademiconefile_A832967387
PublicationCentury 2000
PublicationDate 20250101
PublicationDateYYYYMMDD 2025-01-01
PublicationDate_xml – month: 01
  year: 2025
  text: 20250101
  day: 01
PublicationDecade 2020
PublicationTitle Informing science
PublicationYear 2025
Publisher Informing Science Institute
Publisher_xml – name: Informing Science Institute
SSID ssj0023254
Score 2.3315318
Snippet Aim/Purpose Traditional hyperparameter tuning methods' inefficiency and low accuracy in diabetes prediction. Application and evaluation of Bayesian...
Traditional hyperparameter tuning methods' inefficiency and low accuracy in diabetes prediction. Application and evaluation of Bayesian optimization aim to...
SourceID gale
SourceType Aggregation Database
StartPage 1
SubjectTerms Algorithms
Analysis
Artificial intelligence
Diabetes therapy
Health care reform
Machine learning
Searches and seizures
Title BAYESIAN OPTIMIZATION FOR HYPERPARAMETER TUNING IN HEALTHCARE FOR DIABETES PREDICTION
Volume 28
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV1Lb9QwELbacuGCKFBRaJEPqByiVJunk6N3G0iqNqx2U6nlUo0dhz5gkVYpUvn1jDfOY1FVAYdYUexEST7n83gy44-Q92jC4kfj-LYIlLD9CCobx3FhB8xjXgiViKT-o3uah-mZf3wenLcK2Sa7pBaH8teDeSX_gyoeQ1x1luw_INtdFA_gPuKLJSKM5V9hPOYXyTzjufV5WiAJfWkkdHBeZ6UX02Q25TN-mqC9ahU4zcs_WVlupQk_KdIJnyWrdkcZH2OLuUbiKJt0_qqbNsBd27Qrl0PDAf0_pPIKbpvgbL0GM3JKffcN-uob7ZNfc63OdZzjPax5YOfXP2EJ3-FW69wbpWQ-dES4wR-OiP6OWlbqwh2G_OozOw4bVbiWgE12eMOgTj8wdeGCHGkn1vKkbJNseg7S2ZNxkk9n3czac1dyd93Vzfg6sBSK5-SZMfEpb_DaJhtq8YLsmwQRekBNBpjuFtQ8xEty1mJJh1hSxIiuY0kbLGmW0x7LVbsWS9pj-YoUH5NiktpG8sL-GjJmQzkSLNSi75JV0o-Ewk06YTlS4FdBrJwYSsdlFYsluJ4HVQBV6LmCRSCjknk7ZGvxY6FeE-pKF_lV4gRexT4wGatRAKG29_0YrURnl3zQr-hS9_Z6CRJMOgaerVcEu-zf-S7ZW2uJ_CMH1W8er35LnvadZY9s1cs7tY92XC3eGRR_A8W4Qms
linkProvider ProQuest
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=BAYESIAN+OPTIMIZATION+FOR+HYPERPARAMETER+TUNING+IN+HEALTHCARE+FOR+DIABETES+PREDICTION&rft.jtitle=Informing+science&rft.au=Sudhakar%2C+Annapantula&rft.au=Sujatha%2C+S&rft.au=Sathiya%2C+M&rft.au=Sivaramakrishnan%2C+A&rft.date=2025-01-01&rft.pub=Informing+Science+Institute&rft.issn=1547-9684&rft.volume=28&rft.spage=1&rft.externalDocID=A832967387
thumbnail_l http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=1547-9684&client=summon
thumbnail_m http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=1547-9684&client=summon
thumbnail_s http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=1547-9684&client=summon