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Universitas Negeri Yogyakarta Jl. Colombo No.1 Yogyakarta 55281 Telepon : 0274-586168

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Curriculum Vitae

Dr. Dhoriva Urwatul Wustqa, M.S.

NIP : 196603311993032001 Email :[email protected] Unit Kerja :Fakultas MIPA Status :Dosen

Riwayat Pendidikan :

S1 Matematika UGM (1989)

S2 Matematika ITB (1993)

S3 Statistika UGM (2008)

Keahlian :

Statistika

Bidang Pendidikan :

.

Bidang Penelitian :

1. Generalized Space-Time Autoregressive Modeling

2. The application of neural networks model in forecasting oil production based on statistical inference: A comparative study with VAR and GSTAR Models

3. Statistical Inference for Modeling Neural Network in Multivariate Time Series

4. Forecasting Performance of VAR-NN and VARMA Models

5. Seleksi Model Neural Network Menggunakan Inferensi Statistik dari R2

increment dan Uji Wald

untuk Peramalan Time Series Multivariat

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(2)

Universitas Negeri Yogyakarta Jl. Colombo No.1 Yogyakarta 55281 Telepon : 0274-586168

2

6. Perbandingan Model VAR dan STAR pada Peramalan Produksi Teh di Jawa Barat

7. Modeling Islamic Lunar Calendar Effectin Tourism Data of Prambanan Templeby Using Neural Networks and Fuzzy Models

File Bidang Penelitian :

GSTAR+modeling,+Dhoriva_ICMSA2010_pdf paper+minyak+baru

paper+jurnal+ilmu+dasar penang+paperbaru

JPMIPA+UNY

Suhartono_&_Doriva_2007

Bidang Pengabdian :

1. Pengayaan Materi Olimpiade Matematika dan Pelatihan Penyelesaian Soal-Soal Olimpiade Matematikabagi Guru Sekolah Dasar

2.

File Bidang Pengabdian :

Artikell++ppm

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Referensi

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