Proses Inferensi Dinamis Pada Software Effort Estimation Menggunakan Case Based Reasoning
Abstract
Software effort estimation biasanya menjadi penentu sukses atau tidaknya kontrak negosiasi dan sepakat atau tidak sepakatnya sebuah proyek dijalankan. Keakurasian dari model estimasi biaya pengembangan software dibutuhkan untuk keefektifan prediksi, monitoring kontrol pengembangan software dan menaksir pengembangan software. Software tersebut akan menyampaikan berapa usaha yang dibutuhkan, biaya untuk menjalankan proyek, tenaga kerja yang diperlukan serta waktu kerja yang akan dihabiskan untuk menjalankannya. Penelitian ini bertujuan untuk melakukan proses inferensi secara dinamis dengan mengadopsi kemampuan Case Based Reasoning (CBR) untuk mengestimasi upaya pengembangan software. Perhitungan besaran fungsional dengan menggunakan COSMIC dataset yang dikemas dengan CBR akan memberikan hasil maksimal dalam hal menentukan kecepatan dalam proses estimasi khususnya pada tahap proposal atau penawaran projek software dimana perhitungan lebih efisien terhadap waktu karena memiliki refrensi terhadap kasus-kasus lama. Pengambilan dataset COSMIC yang sesuai berdasarkan tingkat kesamaan kasus menggunakan k-Nearest Neighbor (KNN) menghasilkan akurasi yang baik dengan perhitungan yang sederhana.Downloads
References
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