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21. Curriculum Vitae of Nur Silviyah Rahmi

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Nguyễn Gia Hào

Academic year: 2023

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S t a f f H a n d b o o k - D e p a r t m e n t o f S t a t i s t i c s | 21

21. Curriculum Vitae of Nur Silviyah Rahmi

Name Nur Silviyah Rahmi, S.Si., M.Stat.

Position Statistics / Lecturer

Scopus ID 57219455001 Link Google Scholar uI_byg8AAAAJ

Scopus H-index 0 Google Scholar H-index 1

Academic Career

Initial Academic Appointment Lecturer

Institution

Universitas Brawijaya

Year 2019

Doctorate: - - -

Master Degree: Environmental and Health Statistics

Institut Teknologi

Sepuluh Nopember 2018 Undergraduate Degree:

Environmental and Health Statistics

Institut Teknologi

Sepuluh Nopember 2015

Employment Lecturer Universitas Brawijaya 2019 – now

Research and

development projects over the last 5 Years

Name of Project or Research Focus

Funding Sources/

Amount of Financing

Period

Selection of Spatial Weighting Matrix in Spatial Empirical Best Linear Unbiased Prediction (SEBLUP) Model (Study of Per Capita

Expenditure in Bali Province)

DPP/SPP Research Grant

9,500,000 IDR

2020

Partners, if applicable -

Published Books Title Publisher Year

- - -

Industry collaborations over the last 5 years

Project Titles Partners Period

- - -

Patents and proprietary rights

Titles Year

- -

Important publications over the last 5 years

Selected recent publications from a total of approximation: 3

Rahmi, N.S. 2020. Ensemble-support vector machine-random under sampling:

Simulation study of multiclass classification for handling high dimensional and imbalanced data. Journal of Physics: Conference Series 1613 (1), 012064 (DOI:

10.1088/1742-6596/1613/1/012064)

Any Other Information: https://statistika.ub.ac.id/CV-Nur-Silviyah-Rahmi.pdf Activities in specialist

bodies over the last 5 years

Organization Role Period

- - -

Referensi

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