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Detail Karya Ilmiah Dosen

E T Tosida, R Widianto, M Ganda, R R Lathif

Judul : A Hybrid Data Mining Model for Indonesian Telematics SMEs Classifications
Abstrak :

ABSTRACT

 

The power of information technology and communication (telematics) is one of the vital forces for every country. In the Industrial Revolution 4.0 era, the development of telematics was one of the priorities of the Indonesian government nawacitas. The development of the field of telematics in Indonesia for a decade is inseparable from the role of SMEs. The role of telematics SMEs in the strength of national development can be mapped through the optimization of National Economic Census data (Susenas). The detailed 2016 Susenas data has not been released by BPS. Therefore, this research still uses 2006 Susenas data. The 2016 Susenas recapitalization shows that Indonesian telematics has a very large power, consisting of 2.6 million players. This great strength needs to be optimized to have high competitiveness so as to be able to support Indonesia's development. The purpose of this study was to conduct hybrid data mining modeling to be used as a decision model in mapping the classification of Indonesian telematics SMEs. The classification map includes the feasibility of assistance for the empowerment of Indonesian telematics SMEs, business prospects and development plans for Indonesian telematics SMEs. The hybrid data mining model with K-Medoids & C4.5 technique shows better performance compared to other models, with an average accuracy rate of 71.87%. This model validation test also involves K-fold cross falidation.

 
Keywords: Decisions Model, Hybrid Data Mining, Industry Revolution 4.0,  Nawacita, Telematics, 
Tahun : 2018 Media Publikasi : Seminar Internasional
Kategori : Prosiding No/Vol/Tahun : 1 / 3 / 2018
ISSN/ISBN : -
PTN/S : Universitas Samratulangi Manado Program Studi : ILMU KOMPUTER
Bibliography :

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ACKNOWLEGMENTS

  1. DRPM RistekDikti, as the main sponsor, which gives us Competitive Grants Scheme
  2. Computer Science Department, Mathematics and Natural Science Faculty, PakuanUniversity,and Research Institute Pakuan University, for supporting, coordinating and facilitating to achieve this grants.
  3. Indonesian Communication & Information Ministry, Indonesian Cooperation and SMEs Ministry and Bandung Technopark for active participation in the activities of interviews anduser requirement.

 

 

URL : http://www.icor2018.org/

 

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