JIKTEKS : Jurnal Ilmu Komputer dan Teknologi Informasi https://jurnal.faatuatua.com/index.php/JIKTEKS <p style="text-align: justify;">Jurnal <strong>JIKTEKS</strong> diterbitkan oleh Faatuatua Media Karya sejak tahun 2022 dengan mempublikasi artikel hasil dari penelitian di bidang Ilmu Komputer dan Teknologi Informasi yang berkualitas dan menjadi rujukan utama para peneliti. Frekuensi Issue : <strong>3 kali</strong> setahun yaitu <strong>Desember <em>(Issue 1)</em></strong>, <strong>April <em>(Issue 2)</em></strong>, dan <strong>Agustus <em>(Issue 3)</em></strong>.</p> <table class="table-center mb-0 table table-borderless"> <tbody> <tr> <td class="text-break"><strong>Nomor ISSN</strong></td> <td><strong>:</strong></td> <td class="text-break"><a href="https://issn.brin.go.id/terbit/detail/20230306551610927" target="_blank" rel="noopener">2986-5417</a> (Online - Elektronik)</td> </tr> <tr> <td class="text-break"><strong>Nomor SK ISSN</strong></td> <td><strong>:</strong></td> <td class="text-break"><a href="https://issn.brin.go.id/terbit/detail/20230306551610927" target="_blank" rel="noopener">29865417/II.7.4/SK.ISSN/04/2023</a></td> </tr> <tr> <td class="text-break"><strong>Tanggal Terbit SK ISSN</strong></td> <td><strong>:</strong></td> <td class="text-break">Rabu, 26 April 2023</td> </tr> </tbody> </table> <p style="text-align: justify;">Kami mengundang para akademisi dan praktisi untuk mengirimkan artikel ilmiah terbaiknya ke <strong>Jurnal JIKTEKS</strong> sebagai wadah publikasi bereputasi yang mendorong kontribusi inovatif dan berdampak dalam pengembangan ilmu pengetahuan.</p> Faatuatua Media Karya en-US JIKTEKS : Jurnal Ilmu Komputer dan Teknologi Informasi 2986-5417 Analisis Perbandingan Algoritma K-Means dan K-Medoids dalam Penentuan Status Gizi Balita https://jurnal.faatuatua.com/index.php/JIKTEKS/article/view/648 <p>Nutritional status in toddlers is an important indicator in determining child growth and development quality. Inaccurate classification of nutritional status can affect early intervention efforts. This study aims to compare the performance of K-Means and K-Medoids algorithms in clustering toddler nutritional status data at Puskesmas Betun. The dataset consists of 1,036 toddler records with variables including age, weight, height, and mid-upper arm circumference (MUAC). Data preprocessing was conducted through normalization before clustering. The performance of both algorithms was evaluated using the Davies Bouldin Index (DBI). The results show that K-Means converged in 24 iterations with a DBI value of 1.0281, while K-Medoids converged in 6 iterations with a DBI value of 1.1236. Based on the DBI evaluation, K-Means produced better clustering performance compared to K-Medoids. Therefore, K-Means is more suitable for determining toddler nutritional status in this study.</p> Krisantus uamrto Tey Seran Jefania Tilman Soares Fetronela Rambu Bobu Debora Chrisinta Copyright (c) 2026 JIKTEKS : Jurnal Ilmu Komputer dan Teknologi Informasi 2026-04-13 2026-04-13 4 02 42 50 10.70404/jikteks.v4i02.648