Correlation Measurement Between UNSPSC and KBLI 2009 Based on Classification
Edi Wahyu Widodo, Tri Harsono, Ali Ridho Barakbah "Correlation Measurement Between UNSPSC and KBLI 2009 Based on Classification". International Journal of Computer Trends and Technology (IJCTT) V33(2):93-98, March 2016. ISSN:2231-2803. www.ijcttjournal.org. Published by Seventh Sense Research Group.
Abstract -
Electronic world have penetrated
almost all fields, including in the field of procurement
of goods and services by the government in Indonesia.
Since 2007 in Indonesia has implemented the
electronic procurement (e-procurement) of goods and
services. In the procurement of goods and services
that are now running, there is no classification or
standard of goods and services as well as existing
enterprises. In order to become more professional in
auction, it is necessary to implement the classification.
Classification of goods and services in accordance
with the UNSPSC and business classification in
Indonesia using KBLI edition 2009 to find which the
business classification according to the UNSPSC to be
in the auction, used methods of correlation
measurements with text mining, allowing to find
appropriate business classifications.
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Keywords
UNSPSC, KBLI 2009, E-Tendering,
Text Mining, Correlation Measurements.