Sistem Pakar Mendiagnosis Tingkat Depresi Siswa Terhadap Pembelajaran Online/Daring Di Era Pandemi Menggunakan Metode Certainty Factor Berbasis Web

Sriastuti, Erni (2021) Sistem Pakar Mendiagnosis Tingkat Depresi Siswa Terhadap Pembelajaran Online/Daring Di Era Pandemi Menggunakan Metode Certainty Factor Berbasis Web. S1 Sistem Informasi thesis, STMIK Widya Cipta Dharma.

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Abstract

Erni Sriastuti (2021), Sistem Pakar Mendiagnosis Tingkat Depresi Siswa Terhadap Pembelajaran Online di Era Pandemi Menggunakan Metode Certainty Factor Berbasis Web. Skripsi Program Studi Sistem Informasi, Sekolah Tinggi Manajemen Informatika dan Komputer Widya Cipta Dharma, Pembimbing Utama Ita Arfyanti, S.Kom., M.M., Pembimbing Pendamping Yunita, SE.,MM. Kata kunci: Sistem Pakar, mendiagnosa, tingkat depresi, pembelajaran online, Certainty Factor. Penelitian dilakukan untuk membuat sebuah Sistem Pakar Mendiagnosis Tingkat Depresi Siswa Terhadap Pembelajaran Online/Daring Di Era Pandemi Menggunakan Metode Certainty Factor Berbasis Web agar dapat membantu memberikan diagnosis dan solusi penanganannya tanpa harus datang ke tempat prakteknya pakar. Penelitian ini dilakukan di Mustika Psikolog Samarinda yang berlokasi di jalan Jakarta Blok B No.1, Samarinda. Metode pengumpulan data yang digunakan yaitu wawancara dengan mengajukan pertanyaan-pertanyaan yang berkaitan dengan bagaimana menjabarkan semua gejala yang berhubungan dengan tingkat depresi. Dalam penelitian ini menggunakan metode Backward Chaining dan Certainty Factor dengan perangkat lunak pendukung yang digunakan adalah PhpMyAdmin. Adapun hasil akhir dari penelitian ini yakni berupa Sistem Pakar Untuk Mendiagnosis Tingkat Depresi Siswa Terhadap Pembelajaran Online/Daring Di Era Pandemi Menggunakan Metode Certainty Factor Berbasis Web dapat membatu pasien untuk gejala dari tingkat depresi, serta memberikan solusi. ========================================================= Erni Sriastuti (2021), The Expert System Diagnoses Students' Depression LevelsTowards Online Learning in the Pandemic Era Using the Web-Based Certainty Factor Method. Thesis Information Systems Study Program, College of Informatics and Computers Management of Widya Cipta Dharma, Main Advisor Ita Arfyanti, S. Kom., M.M, Companion Advisor Yunita, SE., MM. Keywords: Expert System, diagnosing, depression level, online learning, Forward Chaining, Certainty Factor. This research was conducted to be able to create an Expert System to Diagnosing students' depression levels towards online learning in the pandemic era using the Web-based certainty factor method to help provide diagnosis and handling solution without having to come to an expert practice place. This research was conducted at Mustika Psychologist Samarinda, which is located on Jalan Jakarta Blok B No.1, Samarinda. The data collection method used is interviews by asking questions related to how to describe all the symptoms associated with the level of depression. In this study using Backward Chaining and Certainty Factor methods with the supporting software used is PhpMyAdmin. The final result of this research is in the form of an expert system for diagnosing students' levels of depression in online/online learning in the pandemic era using the Web-Based Certainty Factor Method, which can help patients with symptoms of depression, as well as provide solutions.

Item Type: Thesis (S1 Sistem Informasi)
Additional Information: Pembimbing 1 : Ita Arfyanti, S.Kom., M.M Pembimbing 2 : Yunita, SE., MM
Uncontrolled Keywords: Sistem Pakar, mendiagnosa, tingkat depresi, pembelajaran online, Certainty Factor.
Subjects: Q Science > QA Mathematics > QA76 Computer software
Divisions: Sistem Informasi
Depositing User: Ms Erni Sriastuti
Date Deposited: 24 Aug 2021 07:39
Last Modified: 24 Aug 2021 07:39
URI: http://repository.wicida.ac.id/id/eprint/3953

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