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CREATION
Title : Linked Open Government Data as Background Knowledge in Predicting Forest Fire
Author :

GURUH FAJAR SHIDIK (1) Dr.techn. Ahmad Ashari, M.I.Kom. (2)

Date : 30 2014
Keyword : Linked Open Government Data, Forest Fire Prediction, Time Series Data, Data Mining. Linked Open Government Data, Forest Fire Prediction, Time Series Data, Data Mining.
Abstract : Nowadays with linked open data, we can access numerous data over the world that more easily and semantically. This research focus on technique for accessing linked open government data LOGD from SPARQL Endpoint for resulting time series historical of Forest Fire data. Moreover, the data will automatically uses as background knowledge for predicting the number of forest fire and size of burn area with machine learning. By using this technique, LOGD could be used as an online background knowledge that provide time series data for predicting trend of fire disaster. In evaluation, mean square error MSE and root mean square error RMSE are used to evaluate the performance of prediction in this research. We also compare several algorithm such as Linear Regression, Neural Network and SVM in different window size.
Group of Knowledge : Ilmu Komputer
Original Language : English
Level : Internasional
Status :
Published
Document
No Title Document Type Action
1 JATIT-Vol62No3.pdf
Document Type : [PAK] Full Dokumen
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2 surat-pernyataan-aashari-23.pdf
Document Type : Dokumen Pendukung Karya Ilmiah (Hibah, Publikasi, Penelitian, Pengabdian)
Dokumen Pendukung Karya Ilmiah (Hibah, Publikasi, Penelitian, Pengabdian) View
3 LINKED OPEN GOVERNMENT DATA AS BACKGROUND KNOWLEDGE IN PREDICTING FOREST FIRE (2).pdf
Document Type : [PAK] Cek Similarity
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