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공공누리This item is licensed Korea Open Government License

dc.contributor.author
신유나
dc.contributor.author
허태영
dc.contributor.author
김택근
dc.contributor.author
김재훈
dc.contributor.author
홍석수
dc.contributor.author
정보미
dc.contributor.author
이영주
dc.contributor.author
이희석
dc.contributor.author
이재경
dc.date.accessioned
2021-09-13T05:20:37Z
dc.date.available
2021-09-13T05:20:37Z
dc.date.issued
2019-05-27
dc.identifier.issn
1024-123x
dc.identifier.uri
https://repository.kisti.re.kr/handle/10580/16041
dc.description.abstract
This study adopts two approaches to analyze the occurrence of algae at Haman Weir for Nakdong River; one is the traditional statistical method, such as logistic regression, while the other is machine learning technique, such as kNN, ANN, RF, Bagging, Boosting, and SVM. In order to compare the performance of the models, this study measured the accuracy, specificity, sensitivity, and AUC, which are representative model evaluation tools.The ROC curve is created by plotting association of sensitivity and (1-specificity).The AUC that is area of ROC curve represents sensitivity and specificity.This measure has two competitive advantages compared to other evaluation tools. One is that it is scale-invariant. It means that purpose of AUC is how well the model predicts.
Other is that the AUC is classification-threshold-invariant. It shows that the AUC is independent of threshold because it is plotted association of sensitivity and (1-specificity) obtained by threshold. We chose AUC as a final model evaluation tool with two advantages. Also, variable selection was conducted using the Boruta algorithm. In addition, we tried to distinguish the better model by comparing the model with the variable selectionmethod and themodel without the variable selectionmethod. As a result of the analysis, Boruta algorithmas a variable selectionmethod suggested PO4, DO, BOD, NH3, Susp, pH, TOC, Temp, TN, and TP as significant explanatory variables. A comparison was made between the model with and without these selected variables. Among the models without variable selection method, the accuracy of RF analysis was highest, and ANN analysis showed the highest AUC. In conclusion, ANN analysis using the variable selection method showed the best performance among the models with and without variable selection method.
dc.language.iso
eng
dc.publisher
Hindawi Publishing Corporation
dc.relation.ispartofseries
Mathematical Problems in Engineering;
dc.title
The Prediction of Diatom Abundance by Comparison of Various Machine Learning Methods
dc.identifier.doi
10.1155/2019/5749746
dc.citation.endPage
13
dc.citation.startPage
1
dc.citation.volume
2019
dc.contributor.approver
KOAR, ADMIN
dc.date.dateaccepted
2021-09-13T05:20:37Z
dc.date.datesubmitted
2021-09-13T05:20:37Z
dc.identifier.bibliographicCitation
vol. 2019, page. 1 - 13
dc.identifier.url
https://scienceon.kisti.re.kr/srch/selectPORSrchArticle.do?cn=NART106415710
dc.subject.keyword
Diatom
dc.subject.keyword
water quality
dc.subject.keyword
machine learning
dc.subject.keyword
규조류
dc.subject.keyword
수질
dc.subject.keyword
머신러닝
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7. KISTI 연구성과 > 학술지 발표논문
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