Learning Vector Quantization Implementation to Predict the Provision of Assistance for Indonesian Telematics Services SMES
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https://doi.org/10.14419/ijet.v7i3.30.19079 -
Decision Support System, Learning Vector Quantization, Small Medium Enterprises -
Abstract
Implementation of Learning Vector Quantization (LVQ) Algorithm for classification of Indonesia telematics service is designed and created as a classification system to support the decision of grant aid for Small Medium Enterprises (SMEs). Based on the test results, the LVQ algorithm has the best accuracy (93.11%) when compared with ID3 algorithm (64%) and C45 (62%) for telematics data of National Census of Economic (Susenas 2006). The data is still valid and relevant for use in this research because in Indonesia census data is done every 10 years and there is no update of data until now. LVQ implementation results are applied to a web-based decision support system to predict the provision of assistance for Indonesian telematics services SMEs. Unlike the C45 and ID3 algorithms, the LVQ algorithm generates the weight of a neural network where it difficult to know which attributes are most influential for decision making. But in this study LVQ able to show good performance through the analysis of the relevance of existing conditions by comparing it with the weight value produced by the model that are implemented in a web-based decision support systemÂ
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How to Cite
Tita Tosida, E., Delli Wihartiko, F., & Lumesa, I. (2018). Learning Vector Quantization Implementation to Predict the Provision of Assistance for Indonesian Telematics Services SMES. International Journal of Engineering & Technology, 7(3.30), 150-153. https://doi.org/10.14419/ijet.v7i3.30.19079Received date: 2018-09-06
Accepted date: 2018-09-06