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Contact Name
Jefri Junifer Pangaribuan
Contact Email
jefrijuniferp@gmail.com
Phone
+6281264300330
Journal Mail Official
jurnal.jdmis@gmail.com
Editorial Address
Jl. Glugur Rimbun, Perum. Medan Hills, Cluster Eboni, Blok J No. 3. Deli Serdang. Indonesia
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INDONESIA
Journal of Data Mining and Information Systems
ISSN : 29865271     EISSN : 29863473     DOI : https://doi.org/10.54259/jdmis
Core Subject : Science,
Journal of Data Mining and Information Systems (JDMIS) is intended as a medium for scientific studies of research results, thoughts, and critical-analytic studies regarding research in the field of computer science and technology, including Information Technology, Informatics Management, Data Mining, and Information Systems. It is part of the spirit of disseminating knowledge resulting from research and thoughts for the service of the wider community. In addition, it serves as a reference source for academics in Computer Science and Information Technology. JDMIS publishes papers regularly two times a year, namely in February and August. All publications in JDMIS are open, allowing articles to be freely available online without a subscription.
Articles 4 Documents
Search results for , issue "Vol. 4 No. 1 (2026): February 2026" : 4 Documents clear
Klasifikasi Sentimen Ulasan Pengguna Aplikasi Qpon dengan Support Vector Machine dan Logistic Regression Febyanti, Iin; Devi, Arsinta Safira; Wardah, Salsabila; Wara, Shindy Shella May; Damaliana, Aviolla Terza
JDMIS: Journal of Data Mining and Information Systems Vol. 4 No. 1 (2026): February 2026
Publisher : Yayasan Pendidikan Penelitian Pengabdian Algero

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.54259/jdmis.v4i1.4663

Abstract

The increasing number of user reviews in mobile applications is an important source of information in understanding user satisfaction and experience with the services used. One of the applications used in this study is the Qpon application. Reviews left by users often contain positive or negative opinions that can influence other users in making decisions. Therefore, sentiment analysis is needed to determine the tendency of opinions in these reviews. This study aims to classify Qpon application user reviews into two sentiment categories, namely positive and negative. Data were collected through the web scraping method and obtained 866 review data. After going through text preprocessing stages such as removing unimportant words, normalization, and tokenization, the data were analyzed using the TF-IDF method as a feature representation, then classified using the Logistic Regression and Support Vector Machine (SVM) algorithms. The testing process was carried out using the Stratified K-Fold Cross Validation technique and measured based on five evaluation metrics, namely accuracy, precision, recall, F1-score, and ROC AUC. The results showed that SVM had the highest accuracy and precision values, while Logistic Regression was superior in recall and ROC AUC. These findings indicate that SVM is superior in terms of classification accuracy, while Logistic Regression is more sensitive to positive reviews. This study is expected to be used as a reference for the development of a sentiment analysis system to improve application services based on user review data.
Analisis Sentimen Ulasan Aplikasi Maxim Merchant dengan Support Vector Machine (SVM) dan Random Forest Rizkiyah, Selly; Rizqin, Indira Zein; Putri, Milla Akbarany Baktiar; Wara, Shindi Shella May; Hindrayani, Kartika Maulida
JDMIS: Journal of Data Mining and Information Systems Vol. 4 No. 1 (2026): February 2026
Publisher : Yayasan Pendidikan Penelitian Pengabdian Algero

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.54259/jdmis.v4i1.4765

Abstract

The development of digital technology, especially mobile devices, has led to an increase in application-based services. One important aspect in app development is to deeply understand user perception and satisfaction. This study aims to analyze user sentiment towards the Maxim Merchant application based on reviews obtained from the Google Play Store platform. A total of more than 2800 Indonesian-language reviews were collected using web scraping techniques. The review data was processed through pre-processing stages such as text cleaning, normalization, tokenization, removal of unimportant words, and stemming. Sentiments are categorized into positive and negative based on the review score, where scores of 1 to 3 are considered negative, and scores of 4 and 5 are considered positive. Word cloud visualization is used to show the dominant words of each sentiment category. The data is then converted into numerical form using TF-IDF and selected using the Chi-Square method. Classification was performed using Support Vector Machine and Random Forest algorithms. The evaluation results show that the Support Vector Machine algorithm performs better in classifying sentiment, especially in handling high-dimensional text data.
Developing Business Intelligence Dashboard for Sales KPI Monitoring in Advertising Agency: A Human-Centered Design Approach Zarqan, Ince Ahmad; Nugraha, Dimas Yudistira; Sitompul, Ganda Tua; Nababan, Adli Abdillah
JDMIS: Journal of Data Mining and Information Systems Vol. 4 No. 1 (2026): February 2026
Publisher : Yayasan Pendidikan Penelitian Pengabdian Algero

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.54259/jdmis.v4i1.6596

Abstract

Digital advertising agencies in South Jakarta face significant challenges in monitoring sales performance due to data fragmentation across multiple platforms such as CRM, spreadsheets, and digital advertising tools. Conventional manual reporting processes lead to data latency, high error rates, and delayed strategic decision-making. This study aims to develop a Business Intelligence (BI) dashboard to monitor Sales Key Performance Indicators (KPIs) in real-time, utilizing a Human-Centered Design (HCD) approach to ensure high usability and adoption. The research methodology follows the ISO 9241-210 standard for HCD, encompassing four iterative phases: understanding the context of use, specifying user requirements, producing design solutions, and evaluating designs. The system was developed using Google Looker Studio with a data warehouse architecture integrating Google BigQuery. Testing was conducted involving 15 internal stakeholders using the System Usability Scale (SUS) and User Experience Questionnaire (UEQ). The results demonstrated a SUS score of 82.5 (Excellent) and positive benchmarks in efficiency and perspicuity metrics. The implementation of the dashboard reduced reporting time by 60% and improved data accessibility for executive decision-making. This study contributes to the literature by demonstrating how HCD principles can bridge the gap between technical BI capabilities and end-user cognitive needs in the creative industry context.
Implementasi Algoritma K-Means Dengan Normalisasi Min-Max Pada Analisis Data Ketidakbersekolahan Anak Tambunan, Elsahday; Br Limbeng, Yuni; Sipayung, Sardo
JDMIS: Journal of Data Mining and Information Systems Vol. 4 No. 1 (2026): February 2026
Publisher : Yayasan Pendidikan Penelitian Pengabdian Algero

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.54259/jdmis.v4i1.7064

Abstract

Anak-anak yang tidak bersekolah merupakan suatu masalah dalam dunia pendidikan yang masih menjadi tantangan, terutama di kalangan masyarakat dengan ekonomi rendah. Tingginya jumlah anak yang tidak mengenyam pendidikan dapat mengurangi kualitas sumber daya manusia dan memperbesar kesenjangan sosial. Penelitian ini bertujuan untuk mengkaji ketidakbersekolahan pada anak berdasarkan level pendidikan dan kelompok pengeluaran, dengan menggunakan pendekatan data mining. Metode yang diterapkan mencakup normalisasi Min-Max sebagai langkah awal dalam memproses data serta algoritma K-means Clustering untuk proses pengelompokan. Normalisasi Min-Max digunakan untuk menyamakan skala data dalam rentang 0 hingga 1, sehingga setiap variabel memiliki peran yang seimbang dalam perhitungan jarak. Data yang digunakan adalah data angka anak tidak sekolah Tahun 2023, yang mencakup tingkat pendidikan SD, SMP, dan SMA rentang kelompok pengeluaran dari kuantil 1 hingga 5. Temuan penelitian ini menunjukkan bahwa algoritma K-Means dengan k = 3 dapat mengelompokkan data menjadi tiga kluster utama, yakni tingkat ketidakbersekolahan yang tinggi, sedang, rendah. Ini mengindikasikan adanya hubungan antara level pengeluaran dan partisipasi anak dalam pendidikan.

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