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All Journal EKONOMIA Jurnal Informatika dan Teknik Elektro Terapan Informatika Mulawarman: Jurnal Ilmiah Ilmu Komputer JIKO (Jurnal Informatika dan Komputer) JURNAL MEDIA INFORMATIKA BUDIDARMA Indonesian Journal of Artificial Intelligence and Data Mining Jurnal Ilmiah Matrik JURNAL INSTEK (Informatika Sains dan Teknologi) Jurnal Teknologi Sistem Informasi dan Aplikasi JIPI (Jurnal Ilmiah Penelitian dan Pembelajaran Informatika) Psychology, Evaluation, and Technology in Educational Research INFOMATEK: Jurnal Informatika, Manajemen dan Teknologi METIK JURNAL Building of Informatics, Technology and Science Progresif: Jurnal Ilmiah Komputer JISKa (Jurnal Informatika Sunan Kalijaga) Jurnal Ilmiah Betrik : Besemah Teknologi Informasi dan Komputer Jurnal Mnemonic JATI (Jurnal Mahasiswa Teknik Informatika) JOURNAL OF INFORMATION SYSTEM RESEARCH (JOSH) Didaktik : Jurnal Ilmiah PGSD STKIP Subang Reswara: Jurnal Pengabdian Kepada Masyarakat Journal of Computer Networks, Architecture and High Performance Computing BAKTI BANUA : JURNAL PENGABDIAN KEPADA MASYARAKAT Teknika Jurnal Informatika Teknologi dan Sains (Jinteks) Jurnal Bangkit Indonesia Jurtik STMIK Bandung Jurnal Abdimas Lamin Journal of Innovative and Creativity Kesatria : Jurnal Penerapan Sistem Informasi (Komputer dan Manajemen) Buffer Informatika INOVTEK Polbeng - Seri Informatika JSE Journal of Science and Engineering Journal of Information Technology KREATIF: Jurnal Pengabdian Masyarakat Nusantara Jurnal Abdimas Mahakam
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Journal : Progresif: Jurnal Ilmiah Komputer

Prediksi Kinerja Mahasiswa Dalam Perkuliahan Berbasis Learning Management System Menggunakan Algoritma Naïve Bayes Asnur Karima; Taghfirul Azhima Yoga Siswa
Progresif: Jurnal Ilmiah Komputer Vol 18, No 2: Agustus 2022
Publisher : STMIK Banjarbaru

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (393.523 KB) | DOI: 10.35889/progresif.v18i2.922

Abstract

The Covid-19 pandemic that has hit Indonesia since the beginning of 2020 has had a major impact on the world of education, so that the learning process that was originally carried out face-to-face has turned into online learning. In such a situation, the University of Muhammadiyah East Kalimantan utilizes the Learning Management System (LMS) in an online learning system using the LMS Open Learning platform. The purpose of this study is to find the best attribute values using Correlation Based Featured Selection and to test the performance of the Naïve Bayes algorithm using Confusion Matrix. The attributes used after going through the feature selection are time spent on course, course completed, assignments, mid-semester exams and quizzes. The results of testing 178 data with a ratio of training data schemes and testing data of 70:30 produce an accuracy of 98.14%, 80:20 produces an accuracy of 97.22% and 90:10 produces an accuracy of 94.44%. Thus, the best accuracy is obtained at 70:30 data composition, which is 98.14%.Keywords: Accuracy level; Naive Bayes; Online learning; Prediction Abstrak. Pandemi Covid-19 yang melanda Indonesia sejak awal tahun 2020 memberikan dampak besar terhadap dunia pendidikan, sehingga proses pembelajaran yang semula dilakukan secara tatap muka berubah menjadi Pembelajaran Dalam Jaringan (daring). Dalam situasi seperti tersebut, Universitas Muhammadiyah Kalimantan Timur memanfaatan Learning Management System (LMS) dalam sistem pembelajaran daring menggunakan platform LMS Open Learning. Tujuan penelitian ini adalah mencari nilai atribut terbaik menggunakan Correlation Based Featured Selection dan menguji performa algoritma Naïve Bayes menggunakan Confusion Matrix. Atribut yang digunakan setelah melalui seleksi fitur adalah time spent on course, course completed, nilai penugasan, nilai Ujian Tenga Semester dan nilai quiz. Hasil pengujian 178 data dengan rasio skema data training dan data testing 70:30 menghasilkan akurasi sebesar 98,14%, 80:20 menghasilkan akurasi sebesar 97,22% dan 90:10 menghasilkan akurasi sebesar 94,44%. Dengan demikian, akurasi terbaik diperoleh pada komposisi data 70:30, yaitu sebesar 98,14%.Kata kunci: Akurasi; Naïve Bayes; Pembelajaran dalam jaringan; Prediksi
Implementasi K-Nearest Neighbor Dalam Memprediksi Keterlambatan Pembayaran Biaya Kuliah Di Perguruan Tinggi Muhammad Rhosyid Akhmad; Taghfirul Azhima Yoga Siswa
Progresif: Jurnal Ilmiah Komputer Vol 18, No 2: Agustus 2022
Publisher : STMIK Banjarbaru

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (395.618 KB) | DOI: 10.35889/progresif.v18i2.921

Abstract

The delay in payment of tuition fees at the Muhammadiyah University of East Kalimantan for the 2020/2021 academic year reached 3,018 out of a total of 5,533 students. The number of latecomers is quite large because it exceeds half of the total students. It is deemed necessary to conduct an analysis related to the late payment, so that prevention and treatment can be carried out as early as possible. The purpose of this study is to determine the parameters of delay in paying tuition fees, implementing the K-Nearest Neighbor algorithm, and evaluating the performance of the algorithm using a confusion matrix. The amount of data used for the algorithm performance testing process is 12,408 records with a ratio of 80% training data and 20% testing data. The results of the evaluation test showed that the accuracy of k=3 was 52.82%, k=5 was 52.49%, k=7 was 52.37%, k=9 was 52.33%, and k=11 was 52.53%.  The best data test results were obtained at k = 3, namely 52.82%.Keywords: Accuracy; K-Nearest Neighbor; Tuition Fee Payment, Confusion matrix Abstrak. Keterlambatan pembayaran biaya kuliah di Universitas Muhammadiyah Kalimantan Timur tahun ajaran 2020/2021 mencapai 3.018 dari total keseluruhan 5.533 mahasiswa. Jumlah yang terlambat tersebut tergolong cukup banyak karena melebihi separuh dari keseluruhan mahasiswa. Dipandang perlu untuk melakukan analisis berkaitan dengan keterlambatan pembayaran tersebut, agar dapat dilakukan pencegahan dan penanganan sedini mungkin. Tujuan penelitian ini adalah menentukan parameter keterlambatan dari pembayaran biaya kuliah, mengimplementasi algoritma K-Nearest Neighbor, dan mengevaluasi kinerja algortima menggunakan Confusion Matrix. Jumlah data yang digunakan untuk proses pengujian kinerja algoritma adalah 12.408 record dengan rasio 80% data training dan 20% data testing. Hasil pengujian evaluasi didapatkan akurasi k=3 sebesar 52,82%, k=5 sebesar 52,49%, k=7 sebesar 52,37%, k=9 sebesar 52,33%, dan k=11 sebesar 52,53%. Hasil pengujian data terbaik didapatkan pada nilai k=3 yaitu 52,82%.Kata kunci: Akurasi; K-Nearest Neighbor; Pembayaran biaya kuliah, Confusion matrix
Co-Authors Abdul Rahim Abdul Rahim Abror, Irfan Fiqry Agustya Nanda Pratiwi Akbar, Zakaria Ihza Albab, Muhammad Ulil Anis Siti Nurrohkayati Anitasari, Dini Anton Prafanto Anton Saputra Arbansyah Arbansyah Ari Ahmad Dhani Ariyadi, Dedy Asnur Karima Aspianur Bahrudin, Faizal Betris Dea Maretta, Nanda Damari, Azwar Darmawan Setiya Budi Dewi, Catur Kumala Dzul Rachman, Dzul Ekawati Ekawati Enriko Chiesa Sipahutar Fattah, Mi'raj FAUZI Fendy Yulianto Fendy Yulianto Gubtha Mahendra Putra Haryadi, Rina Mashitoh Haryadi, Rina Masithoh Hasudungan, Rofilde Heri Abijono Hery Kurniawan Hidayati Ramadhani, Novia Hidayatullah, Muhammad Wahyu Istimaroh Istimaroh Joko Pranoto, Wawan Jubaidi Khanisa Octavia Khatimah, Khusnul lia, Alvina Lidya Sari Mardiana Mardiana Muhammad Fadly Ramadhani Muhammad Najeri Al Syahrin Muhammad Norhalimi Muhammad Rhosyid Akhmad Muhammad Wildan Hadinata Naufal Azmi Verdikha Pambudi, Faldy Alfareza Paula Mariana Kustiawan Pitoyo Pitoyo Pitoyo, Pitoyo Poernamawan, Ahmad Nugraha Prihandoko . Putri, Azzahra Namira Raenald Syaputra Rahmad Fahrozi, Mu. Aldi Rahman, Febrian Nor Ramadhani, Daib Jidan Renaldi Panji Wibowo Restu, Anggiq Karisma Aji Rivaldo, Vito Junivan Rizky Aspiah Rochman, Bagus Fathur Rudiman, R Rudiman, Rudiman Salsabila, Cindy Azra Santi Yatnikasari Sarina Safitri Satria, Bima Sidiq, Reza June Siti Muawwanah Taufiq, Ilham Taufiqurrahman Taufiqurrahman Wahyu Hidayat Wawan Joko Pranoto Wawan Joko Pranoto Wawan Joko Pranoto Widyastuti, Dessy Yoga Priantama