2020
DOI: 10.53654/mv.v2i1.87
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Analisis Penilaian Kinerja Pegawai Untuk Mengetahui Kualitas Kelayakan Kerja Mengguanakan Jaringan Syaraf Tiruan Backpropagation

Abstract: Analisis Penilaian Kinerja Pegawai untuk Mengetahui Kualitas Kelayakan Kerja Menggunakan Jaringan Syaraf Tiruan Backpropagation, dibimbing oleh Syahnur Said selaku ketua dan Anis Saleh sebagai wakil pembimbing. Tujuan penelitian ini adalah untuk mengetahui kualitas kelayakan kerja pegawai berdasarkan pada variabel pendidikan, keterampilan, pengalaman kerja dan motivasi pada Dinas Kependudukan dan Pencatatan Sipil Kab. Maros menggunakan analisis program Jaringan Syaraf Tiruan (JST) Backpropagation. … Show more

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“…The weight estimate for creating the latent variable score component is obtained based on how the inner model (a structural model that links between latent variables) and the outer model (measurement model referring to the relationship between indicators and their constructs) are specified. The result is the residual variance of the dependent variable (Hamdina et al, 2020). The result is the residual variance of the dependent variable (Besfamille, 2009).…”
Section: Methodsmentioning
confidence: 99%
“…The weight estimate for creating the latent variable score component is obtained based on how the inner model (a structural model that links between latent variables) and the outer model (measurement model referring to the relationship between indicators and their constructs) are specified. The result is the residual variance of the dependent variable (Hamdina et al, 2020). The result is the residual variance of the dependent variable (Besfamille, 2009).…”
Section: Methodsmentioning
confidence: 99%
“…Artificial Neural Network adalah model komputer yang terdiri dari beberapa elemen pemrosesan yang menerima masukan dan menghasilkan keluaran berdasarkan fungsi aktivasi yang diberikan (Cynthia & Ismanto, 2017;Hamdina et al, 2020). Jaringan harus dilatih terlebih dahulu untuk mempelajari pola tersembunyi dalam data masukan, yang direpresentasikan dalam model sebagai bobot koneksi.…”
Section: Artificial Neural Networkunclassified