Journal on Pustaka Cendekia Informatika
Vol. 1 No. 3 (2024): Journal on Pustaka Cendekia Informatika: Volume 1 Nomor 3 Oktober 2023 - Januar

Klasifikasi Kain Tenun Sumba menggunakan Jaringan Saraf Tiruan

Trisno Trisno (Universitas Stella Maris Sumba)
Karolus Wulla Rato (Universitas Stella Maris Sumba)
Adelbertus Umbu Janga (Universitas Stella Maris Sumba)
Robertus Tamo Ama (Universitas Stella Maris Sumba)
Robinson Datu Reja (Universitas Stella Maris Sumba)



Article Info

Publish Date
05 Feb 2024

Abstract

The evaluation results with epoch 100 have quite good classification accuracy. The correct accuracy value of the classification is 60% of the test data. In other words, the results of this classification can be said to be good. Compared with the classification accuracy at epoch 100, which is 20-30% of the test data. The model obtained is good. At epoch 400 this model has a better level of accuracy than epoch 100. At epoch 1000 the increase in recognition accuracy for test data increases by 20% so that the recognition accuracy becomes 55-60%. Based on the results of research using the backpropagation neural network algorithm, there are several different levels of accuracy, the training and validation accuracy values ​​are quite good. The researcher's suggestion is to continue this research so that it can produce a more accurate process. The training process is carried out using several epoch values, namely epoch 200, epoch 400, epoch 600, epoch 800, epoch 1000, epoch. The best accuracy obtained during training was 89.3% and validation was 82%.

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Journal Info

Abbrev

pcif

Publisher

Subject

Aerospace Engineering Automotive Engineering Chemical Engineering, Chemistry & Bioengineering Electrical & Electronics Engineering Industrial & Manufacturing Engineering

Description

Journal on Pustaka Cendekia Informatika (PCIF) is published by the PT PUSTAKA CENDEKIA GROUP (NOMOR : AHU-012686.AH.01.30.Tahun 2023) in helping academics, researchers, and practitioners to disseminate their research results. PCIF is a double blind peer-reviewed journal dedicated to publishing ...