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Pengembangan E-Modul Dalam Pembelajaran Seni Dan Budaya Di Madrasah Ibtidaiyah: Pengembangan E-Modul pada Pembelajaran Seni Budaya di Madrasah Ibtidaiyah Yandi; Putra, Chandra Anugrah; Suriansyah
Harati : Journal of Science Education Vol. 2 No. 1 (2025): Harati : Journal of Science Education
Publisher : CV Aisha Edutama

Show Abstract | Download Original | Original Source | Check in Google Scholar

Abstract

According to the needs analysis, teachers have not fully utilized technology-based media and teaching materials. Teachers have not fully produced technology-based media and teaching materials. This research aims to produce simple e-module teaching materials for learning art and culture. This research method uses the example of ADDIE research and development. The results of the study show that the e-module is developed through needs analysis, prototype design, prototype development, field tests, and product assessment. This study shows that simple e-modules are used in learning using a score of 86.5%. The level of independence of the e-module that can be accepted is shown using the eligibility criteria achieved by the student through integrated material support using web-based learning links. According to expert validation, this e-module is suitable to be used as a teaching material for learning art and culture based on personal computers in grade IV of Madrasah Ibtidaiyah.
Optimizing the Role of the Prosecutor's Office in Recovering State Losses Due to Corruption Crimes Based on Prosecutor's Regulation Number 7 of 2020 concerning Guidelines for Asset Recovery Ruth Irmawaty; Yandi
Journal of Law, Politic and Humanities Vol. 5 No. 1 (2024): (JLPH) Journal of Law, Politic and Humanities
Publisher : Dinasti Research

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.38035/jlph.v5i1.864

Abstract

The aim to be achieved in this research is to optimize the role of the prosecutor's office in recovering state losses resulting from criminal acts of corruption.  The method used in analyzing this problem is normative juridical where researchers use various secondary materials or library materials. The various steps taken in solving the problems in this research were by drawing on various legal principles, both written and unwritten. Researchers also carry out various interpretations of legislation so that this research can be analyzed thoroughly and in depth. The results of this research show that the objectives of asset recovery are varied. First, asset recovery aims to replenish state finances, thereby providing resources for government initiatives and programs aimed at improving people's welfare and fostering community well-being. Second, asset recovery aims to restore justice in the lives of individuals affected by corruption, ensuring that those who have been harmed receive compensation. Lastly, asset recovery seeks to deter parties or individuals from committing corruption in the future by signaling the severity of the consequences associated with such actions. Therefore, corruption needs to be dealt with, where one of the officers who can deal with this is the prosecutor's office. The Prosecutor's Office of the Republic of Indonesia, to confiscate assets for criminal acts of corruption, can work optimally if it has a basis for confiscating assets.
ANALISIS SENTIMEN KOMENTAR NETIZEN TERHADAP VIDEO PEMINDAHAN DAN PEMBANGUNAN IBU KOTA NUSANTARA DI TIKTOK MENGGUNAKAN METODE NAÏVE BAYES: SENTIMENT ANALYSIS OF NETIZEN COMMENTS ON THE RELOCATION AND DEVELOPMENT OF NUSANTARA CAPITAL CITY IN TIKTOK USING THE NAÏVE BAYES METHOD Sagostian, Adrian; Yuda, Laurensius; Yandi
HOAQ (High Education of Organization Archive Quality) : Jurnal Teknologi Informasi Vol. 16 No. 2 (2025): Jurnal HOAQ - Teknologi Informasi
Publisher : STIKOM Uyelindo Kupang

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.52972/hoaq.vol16no2.p181-185

Abstract

Pemindahan Ibu Kota Negara (IKN) ke Kalimantan Timur, yang dikenal sebagai Ibu Kota Nusantara, telah menjadi topik diskusi yang luas di berbagai platform media social. TikTok, sebagai salah satu platform berbagai video yang popular di Indonesia, menjadi medium bagi Masyarakat untuk mengespresikan opini mereka terkait program Pembangunan IKN.  Penelitian ini dilakukan menggunakan Klasifikasi Sentimen dengan menerapkan algoritma Naive Bayes pada komentar TikTok. Dataset yang digunakan terdiri dari 1.810 komentar berbahasa Indonesia yang dikumpulkan melalui Teknik web scraping dari video TikTok yang membahas pemindahan IKN. Setiap komentar dikategorikan ke dalam tiga kelas sentimen, yaitu positif, negatif, dan netral. Proses analisis mencakup tahapan pra-pemrosesan teks, seperti labeling, pembersihan data, tokenisasi, dan stemming, sebelum dilakukan pelatihan model klasifikasi menggunakan algoritma Naïve Bayes. Hasil penelitian ini menunjukkan bahwa mayoritas komentar bersentimen negatif. Model Naïve Bayes yang digunakan menghasilkan tingkat akurasi sebesar 65%. Penelitian ini diharapkan menjadi referensi dalam memahami opini publik secara real-time serta dalam pengembangan model klasifikasi sentimen yang lebih akurat pada platform media sosial.   The relocation of the National Capital City (IKN) to East Kalimantan, known as the Capital City of the archipelago, has become a topic of widespread discussion on various social media platforms. TikTok, as one of the popular video platforms in Indonesia, is a medium for the public to express their opinions regarding the IKN Development program.  This research was conducted using Sentiment Classification by applying the Naive Bayes algorithm to TikTok comments. The dataset used consisted of 1,810 comments in Indonesian collected through web scraping techniques from TikTok videos discussing the transfer of the IKN. Each comment is categorized into three sentiment classes, which are positive, negative, and neutral. The analysis process includes pre-processing stages of text, such as labeling, data cleaning, tokenization, and stemming, before training the classification model using the Naïve Bayes algorithm. The results of this study show that the majority of comments have negative sentiments. The Naïve Bayes model used produces an accuracy rate of 65%. This research is expected to be a reference in understanding public opinion in real-time as well as in developing a more accurate sentiment classification model on social media platforms.