2020
DOI: 10.29244/ijsa.v4i1.524
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Analisis Kurva Roc Pada Model Logit Dalam Pemodelan Determinan Lansia Bekerja Di Kawasan Timur Indonesia

Abstract: Binary logistic regression is used for probability modeling or to predict binary response variables (Success / Failure) from one or more explanatory variables that are continuous or categorical. In carrying out this analysis, there are several ways to test the suitability of the resulting model, and one of them is the area under the ROC curve. The application of the analysis method in this study is the determinant of the elderly population to work. The population of the elderly in Indonesia is increasing every… Show more

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Cited by 3 publications
(5 citation statements)
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“…The area under the ROC curve (Figure 3) was in the range of zero to one or 0-100%. The higher the area under the curve, the better the prediction of the model for active compounds than the decoy [32].…”
Section: The Pharmacophore Model Validation Resultsmentioning
confidence: 99%
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“…The area under the ROC curve (Figure 3) was in the range of zero to one or 0-100%. The higher the area under the curve, the better the prediction of the model for active compounds than the decoy [32].…”
Section: The Pharmacophore Model Validation Resultsmentioning
confidence: 99%
“…of zero to one or 0-100%. The higher the area under the curve, the better the prediction of the model for active compounds than the decoy [32]. Model 7 recognized 970 hits with an AUC value of 0.8%, an EF value of 6.4, and a GH score of 0.3.…”
Section: The Pharmacophore Model Validation Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…The ROC curve is the result of plotting true signal (sensitivity) and false signal (1-specificity) across the entire range of possible cutoff points. The range of the area under the ROC curve is from zero to one (Nur & Oktora, 2020). This curve demonstrates the probability or accuracy level of the model.…”
Section: ………………………………………(3)mentioning
confidence: 91%
“…Dinyatakan valid jika Ho = μo ≥ ttabel maka signifikan (valid) dan jika H1 = μ1 ≤ ttabel maka tidak signifikan (tidak valid). Sedangkan dinyatakan reliabel jika nilai Cronbach Alpha (α) > 0,70 [27]. Jika suatu instrumen dinyatakan tidak valid dan tidak reliabel, maka perlu dilakukan perbaikan dan diujikan kembali kepada responden.…”
Section: Pengujian Validitas Dan Reliabilitas Instrumen Penelitianunclassified