COMPARISON OF AIR QUALITY DATA ACCURATION USING DECISION TREE AND NEURAL NETWORK METHOD



Fahmi Izhari(1*), Hanna Willa Dhany(2)

(1) Universitas Pembangunan Pancabudi Medan
(2) Universitas Pembangunan Pancabudi Medan
(*) Corresponding Author

Abstract


In research conducted on the Neural Network classification model that has been tested has an accuracy of 82.04% with a classification error rate of 17.96%. Meanwhile, the Decision Tree classification model has an accuracy rate of 99.38 %% with a classification error rate of 0.62%. Based on the test results from the two classification models, it can be concluded that the success of the Decision Tree can be used as a reference to improve the performance of the classification model's accuracy compared to the Neural Network Backpropagation model.


Keywords


Decision Tree, Neural Network, Classification, Accuracy

Full Text:

PDF

Refbacks

  • There are currently no refbacks.


Copyright (c) 2020 Fahmi Izhari, Hanna Willa Dhany

Creative Commons License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

Online ISSN : 2460-5611 | Print ISSN : 1979-9292

Publish by LLDIKTI Wilayah X (Sumatera Barat, Riau, Jambi dan Kepulauan Riau)

Jl. Khatib Sulaiman No 1 Kota Padang. Kode Pos 25144. Telp 0751-7056737. Fax 0751-7056737. Website:http://www.kopertis10.or.id

Web Analytics Made Easy - StatCounter View My Stats

Creative Commons License 

This work is licensed under a Creative Commons Attribution 4.0 International License.