Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.

<p>Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.</p>

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Main Author: Wangyouchen Zhang (21681025) (author)
Other Authors: Zhenhua Xia (582939) (author), Guoqing Cai (740684) (author), Junhao Wang (751227) (author), Xutao Dong (21681028) (author)
Published: 2025
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_version_ 1852018657402552320
author Wangyouchen Zhang (21681025)
author2 Zhenhua Xia (582939)
Guoqing Cai (740684)
Junhao Wang (751227)
Xutao Dong (21681028)
author2_role author
author
author
author
author_facet Wangyouchen Zhang (21681025)
Zhenhua Xia (582939)
Guoqing Cai (740684)
Junhao Wang (751227)
Xutao Dong (21681028)
author_role author
dc.creator.none.fl_str_mv Wangyouchen Zhang (21681025)
Zhenhua Xia (582939)
Guoqing Cai (740684)
Junhao Wang (751227)
Xutao Dong (21681028)
dc.date.none.fl_str_mv 2025-07-08T17:32:23Z
dc.identifier.none.fl_str_mv 10.1371/journal.pone.0327120.g003
dc.relation.none.fl_str_mv https://figshare.com/articles/figure/Diabetes-Prediction-Analysis_dataset_people_distribution_of_4_attributes_in_using_the_KDE_graphs_with_green_and_blue_color_distributions_denoting_diabetic_Y_individuals_non-diabetic_N_classes_respectively_/29507248
dc.rights.none.fl_str_mv CC BY 4.0
info:eu-repo/semantics/openAccess
dc.subject.none.fl_str_mv Biochemistry
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
Information Systems not elsewhere classified
typically achieve 95
smaller labeled dataset
shapley additive explanations
reducing labeling costs
quantify feature importance
overcome common challenges
outperforming traditional models
model &# 8217
machine learning models
focal active learning
fewer labeled samples
experimental results demonstrated
enhancing model interpretability
efficient data utilization
called foci ),
better prediction outcomes
applies attention mechanisms
predicting diabetes risk
diabetes risk prediction
minority class instances
method integrates shap
imbalanced medical datasets
approach significantly improved
novel method based
diabetes datasets
based method
minority classes
method aims
imbalanced classification
based sampling
xlink ">
using similarity
study proposes
limited generalization
iteratively constructed
generalization ability
evaluation metrics
diabetic cases
clinical settings
dc.title.none.fl_str_mv Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.
dc.type.none.fl_str_mv Image
Figure
info:eu-repo/semantics/publishedVersion
image
description <p>Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.</p>
eu_rights_str_mv openAccess
id Manara_b8bbcea1237d55ed6844c3904ff70eca
identifier_str_mv 10.1371/journal.pone.0327120.g003
network_acronym_str Manara
network_name_str ManaraRepo
oai_identifier_str oai:figshare.com:article/29507248
publishDate 2025
repository.mail.fl_str_mv
repository.name.fl_str_mv
repository_id_str
rights_invalid_str_mv CC BY 4.0
spelling Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.Wangyouchen Zhang (21681025)Zhenhua Xia (582939)Guoqing Cai (740684)Junhao Wang (751227)Xutao Dong (21681028)BiochemistryBiological Sciences not elsewhere classifiedMathematical Sciences not elsewhere classifiedInformation Systems not elsewhere classifiedtypically achieve 95smaller labeled datasetshapley additive explanationsreducing labeling costsquantify feature importanceovercome common challengesoutperforming traditional modelsmodel &# 8217machine learning modelsfocal active learningfewer labeled samplesexperimental results demonstratedenhancing model interpretabilityefficient data utilizationcalled foci ),better prediction outcomesapplies attention mechanismspredicting diabetes riskdiabetes risk predictionminority class instancesmethod integrates shapimbalanced medical datasetsapproach significantly improvednovel method baseddiabetes datasetsbased methodminority classesmethod aimsimbalanced classificationbased samplingxlink ">using similaritystudy proposeslimited generalizationiteratively constructedgeneralization abilityevaluation metricsdiabetic casesclinical settings<p>Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.</p>2025-07-08T17:32:23ZImageFigureinfo:eu-repo/semantics/publishedVersionimage10.1371/journal.pone.0327120.g003https://figshare.com/articles/figure/Diabetes-Prediction-Analysis_dataset_people_distribution_of_4_attributes_in_using_the_KDE_graphs_with_green_and_blue_color_distributions_denoting_diabetic_Y_individuals_non-diabetic_N_classes_respectively_/29507248CC BY 4.0info:eu-repo/semantics/openAccessoai:figshare.com:article/295072482025-07-08T17:32:23Z
spellingShingle Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.
Wangyouchen Zhang (21681025)
Biochemistry
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
Information Systems not elsewhere classified
typically achieve 95
smaller labeled dataset
shapley additive explanations
reducing labeling costs
quantify feature importance
overcome common challenges
outperforming traditional models
model &# 8217
machine learning models
focal active learning
fewer labeled samples
experimental results demonstrated
enhancing model interpretability
efficient data utilization
called foci ),
better prediction outcomes
applies attention mechanisms
predicting diabetes risk
diabetes risk prediction
minority class instances
method integrates shap
imbalanced medical datasets
approach significantly improved
novel method based
diabetes datasets
based method
minority classes
method aims
imbalanced classification
based sampling
xlink ">
using similarity
study proposes
limited generalization
iteratively constructed
generalization ability
evaluation metrics
diabetic cases
clinical settings
status_str publishedVersion
title Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.
title_full Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.
title_fullStr Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.
title_full_unstemmed Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.
title_short Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.
title_sort Diabetes-Prediction-Analysis dataset people distribution of 4 attributes in using the KDE graphs, with green and blue color distributions denoting diabetic (Y) individuals, non-diabetic (N) classes, respectively.
topic Biochemistry
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
Information Systems not elsewhere classified
typically achieve 95
smaller labeled dataset
shapley additive explanations
reducing labeling costs
quantify feature importance
overcome common challenges
outperforming traditional models
model &# 8217
machine learning models
focal active learning
fewer labeled samples
experimental results demonstrated
enhancing model interpretability
efficient data utilization
called foci ),
better prediction outcomes
applies attention mechanisms
predicting diabetes risk
diabetes risk prediction
minority class instances
method integrates shap
imbalanced medical datasets
approach significantly improved
novel method based
diabetes datasets
based method
minority classes
method aims
imbalanced classification
based sampling
xlink ">
using similarity
study proposes
limited generalization
iteratively constructed
generalization ability
evaluation metrics
diabetic cases
clinical settings