Journal of Dinda : Data Science, Information Technology, and Data Analytics
Journal of Dinda : Data Science, Information Technology, and Data Analytics as a publication media for research results in the fields of Data Science, Information Technology, and Data Analytics, but not implicitly limited. Published 2 times a year in February and August. The journal is managed by the Data Engineering Research Group, Faculty of Informatics, Telkom Purwokerto Institute of Technology. Journal of Dinda is a medium for scientific studies resulting from research, thinking, and critical-analytic studies regarding Data Science, Informatics, and Information Technology. This journal is expected to be a place to foster enthusiasm in education, research, and community service which continues to develop into supporting references for academics. FOCUS AND SCOPE Journal of Dinda : Data Science, Information Technology, and Data Analytics receive scientific articles with the scope of research on: Machine Learning, Deep Learning, Artificial Intelligence, Databases, Statistics, Optimization, Natural Language Processing, Big Data and Cloud Computing, Bioinformatics, Computer Vision, Speech Processing, Information Theory and Models, Data Mining, Mathematical, Probabilistic and Statical Theories, Machine Learning Theories, Models and Systems, Social Science, Information Technology
Articles
87 Documents
Implementation of the Single Moving Average Method in Forecasting Sales of Motorcycle Spare Parts
Dwika Sherliyanda;
Muhammad Dedi Irawan;
Adnan Buyung Nasution
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 1 (2025): February
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i1.1791
Sales forecasting is an important element in inventory management to ensure product availability in accordance with market demand. One method that can be used for forecasting is the Single Moving Average (SMA), which works by calculating the average sales in a certain period to identify future sales trends. This research aims to implement the SMA method in forecasting sales of motorbike spare parts in order to increase stock management efficiency and reduce the risk of excess or shortage of inventory. This research method involves collecting historical data on sales of motorbike spare parts in a certain period, which is then analyzed using the SMA method with various average period lengths to determine the best accuracy. The research results show that the SMA method can provide fairly accurate estimates of future demand patterns. With better forecasting, stores or distributors can optimize procurement strategies and reduce unnecessary carrying costs. Apart from that, implementing this method also contributes to increasing customer satisfaction because product availability can be more guaranteed. The conclusion of this research shows that the Single Moving Average method is a simple but effective forecasting technique in motorcycle spare parts inventory management. Implementation of this method can help business people make more appropriate decisions in stock planning and marketing strategies.
Shoe Damage Identification System Using the Cosine Method in Web-Based K2n Store
Ibnu Faisal;
Raissa Amanda Putri
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 1 (2025): February
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i1.1795
This research aims to develop a Web-Based Shoe Damage Identification System in K2N Store using the Rapid Application Development (RAD) methodology and the Cosine Similarity method. This system is designed to help the process of automatically identifying shoe damage based on the description of the symptoms that the user inputs. There are several main menus in this system, namely Login, Damage, Symptoms, and Case Base, each of which supports an effective flow of damage and symptom data management. The Login menu is used for user authorization, while the Crash and Symptoms menu allows for the management of data on crash types and related symptoms. The Case Base menu serves as the main reference in the identification process with the Cosine method, where the system calculates the degree of similarity between the new damage description and the existing reference data. Based on the test results, this system is able to provide accurate damage identification results, taking into account the similarity of the symptom description mathematically. The use of the Cosine method in RAD has proven to be effective in producing a fast and flexible solution for K2N Store Stores. Thus, this system is expected to increase efficiency and accuracy in the process of identifying shoe damage, as well as provide better service to customers.
Financial Management Information System Design with Business Intelligence Approach
Ardiansyah Putra;
Muhamad Alda
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 1 (2025): February
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i1.1796
This research aims to design and develop a web-based financial management application for Pabrik Opak Sun Jaya Mandiri, focusing on financial management. Prior to the application’s development, the business used a manual financial management system, which led to various issues, such as unstructured transaction records, difficulties in monitoring cash flow in real-time, and slow financial reporting prone to human errors. These problems could hinder the business owner from making accurate financial and operational decisions.To address these issues, the application was developed using the PHP programming language and MySQL database, designed to automate the recording of rental transactions, income, and expenses in an integrated manner. The application includes features for automatic and real-time financial reporting, enabling the business owner to monitor financial conditions more accurately and efficiently. Additionally, it implements a Business Intelligence (BI) approach, providing analysis of financial data, including income and expense trends, as well as business performance over time.The research results indicate that the application effectively resolves the issues present in the previous financial management system, particularly in terms of efficiency, recording accuracy, and faster, more detailed data presentation. The business owner can better monitor financial developments, and employees find it easier to perform tasks such as report preparation and transaction recording. Continuous evaluation and feature updates are highly recommended to ensure the application evolves in line with the increasingly complex needs of the business. Therefore, this application is expected to have a long-term positive impact on the financial management of Pabrik Opak Sun Jaya Mandiri.
Evaluation of the Information System (Smart Deer System) at BKPSDMD of Bangka Belitung Islands Province
Ahmad Fauzi, Aditya
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 2 (2025): August
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i2.1816
Improving the quality of human resources (HR) is one of the important factors in the development of a region. To realize superior, competent, intelligent, and educated human resources, a fast, easy, and useful information system is needed in the management of further education in the BKPSDMD Prov. BaBel, therefore, introduced an information system called "SI Pelanduk Cerdik" which aims to make it easier for State Civil Apparatus (ASN) in the process of submitting competency development. Therefore, the purpose of this research is as feedback to correct the shortcomings of the "SI Pelanduk Cerdik" application. The qualitative description method is the method used in this study. The results of the study show that the use of "Si Pelanduk Cerdik" in BKPSDMD Prov. BaBel is very useful. This application makes it easier for ASN in the process of submitting competency development, with quick and easy access anytime and anywhere. The level of satisfaction of ASN with this application is also very high. Before this application, the process of applying for further education by ASN was manual and time-consuming. However, with the existence of the "SI Pelanduk Cerdik", the time needed for ASN to apply for competency development can be significantly reduced, in just about 30 minutes. The app lives up to the desired expectations
Unveiling Risk Patterns of Disability Progression A Clustering Based Transition Matrix Analysis Using Indonesian National Data
Setiawan, Ariyono;
Bin Abdul Hadi, Abdul Razak;
Faller, Erwin;
Wibawa, Aji Prasetya
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 2 (2025): August
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i2.1868
This study investigates the progression of disability severity from "some difficulty" to "a lot of difficulty" using a transition matrix framework. It aims to identify risk patterns and classify severity clusters based on national survey data from Indonesia between 2010 and 2023. The study draws on the theory of functional limitation progression, which assumes that individuals with mild disabilities face varying probabilities of developing severe limitations depending on contextual and demographic factors. It also incorporates clustering theory to group similar progression behaviors. We utilize 20,604 data points from multiple disability types (cognitive, hearing, mobility, etc.). The transition rate is computed as the ratio of individuals with "a lot" difficulty to the total with "some" and "a lot" difficulty. Statistical analyses include descriptive summaries, Pearson correlation, and K-Means clustering via the FASTCLUS procedure. Heatmaps are generated to observe annual and typological patterns. The average transition rate is 66.77%, with a maximum of 99.6% in some subgroups. Three distinct severity clusters emerged, centered at 31.27%, 58.62%, and 82.20%. Transition rate negatively correlates with "some difficulty" prevalence (r = –0.45, p < .0001), indicating progressive concentration of severity in smaller populations. Heatmaps reveal consistent risk escalation over time, especially in cognitive and self-care disabilities. This study enables policy actors to stratify intervention priorities and monitor disability risk more accurately using dynamic, data-driven indicators. This is the first study in Indonesia to apply a large-scale transition matrix combined with clustering to map functional disability progression. It offers a novel quantitative method to uncover hidden severity patterns and informs future decision-support systems for inclusive health planning.
Enhancing Prediction Accuracy of the Happiness Index Using Multi-Estimator Stacking Regressor and Web Application Integration
Zain, Rofi Nafiis;
Harani, Nisa Hanum;
Pane, Syafrial Fachri
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 2 (2025): August
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i2.1871
This study proposes a novel approach to enhance the prediction accuracy of the Happiness Index using a multi-estimator stacking regressor model and web application integration. By combining diverse regression models, such as decision tree, random forest, gradient boosting, LGBM, and support vector regressor (SVR), the proposed ensemble architecture achieved superior predictive performance with an score of 0.9814. A custom Happiness Score was formulated using weighted indicators derived from Pearson’s correlation analysis. Furthermore, SHapley Additive exPlanations (SHAP) were used to interpret model predictions, revealing the Human Development Index, Female Labour Force Rate, and Life Expectancy as key contributing features. The final model was deployed via a Python Flask-based web dashboard, enabling stakeholders to visualize happiness metrics interactively. The results suggest that stacking-based regression, when combined with interpretability techniques and real-time deployment, can offer a powerful solution for socioeconomic modeling and supporting urban policy.
Systematic Literature Review : Population Density Mapping Using Data Mining
Maftuh, Naufal;
Nursanto, Gunawan Ari;
Romdendine, Muhammad Fahrury
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 2 (2025): August
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i2.1805
Mapping population density plays a crucial role in designing and developing urban policies. Traditional methods are often unable to capture complex spatial patterns, making the application of data mining techniques crucial. In this study, we conducted a Systematic Literature Review (SLR) of various data mining techniques, including K-Means, KDE, DBSCAN, Random Forest, linear regression, Cellular Automata, and Fuzzy C-Means. The findings of this study show that although K-Means proved to be effective, it is quite sensitive to the presence of outliers. On the other hand, DBSCAN successfully detects irregular distributions, while KDE is able to track trends despite being computationally intensive. Random Forest and linear regression can predict growth, but both require large datasets to provide accurate results. Meanwhile, Cellular Automata and Fuzzy C-Means offer flexibility, but also require comprehensive data. For future optimization, we recommend using AI-GIS hybrid models.
Implementation of Random Forest Algorithm with RFE and SMOTE on Cardiotocography Dataset
Nur Taqwimi, Muhammad Ahsani;
Wahono, Buang Budi;
Mulyo, Harminto
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 2 (2025): August
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i2.1818
Having a healthy baby is a dream for mothers. However, the high rate of maternal and fetal mortality is still a serious problem, so more accurate fetal health monitoring is needed to prevent pregnancy complications. One of the devices used is Cardiotocography (CTG), which produces data on fetal conditions. The CTG dataset used in this study faces challenges in the form of class imbalance and a high number of features, which can reduce classification performance. This study aims to overcome these challenges by implementing the Random Forest algorithm combined with the Synthetic Minority Oversampling Technique (SMOTE) technique for class balancing and Recursive Feature Elimination (RFE) for feature selection. The dataset used is "Fetal Health Classification" from the Kaggle platform, which consists of 2,126 data with three classes: Normal, Suspect, and Pathological. The test results show that the RFE method is able to reduce the number of features from 22 to 18, while SMOTE increases the proportion of minority data. The model built produces good classification performance with an accuracy value of 95%, precision 93%, recall 89%, and F1-score 91%. The ROC-AUC value for the Normal class is 0.9881, Suspect 0.9789, and Pathological 0.9985. Although the model is able to predict the Normal and Pathological classes with high accuracy, the performance on the Suspect class still needs to be improved. Overall, the integration of Random Forest with SMOTE and RFE has proven effective in improving the accuracy of fetal health classification.
AI-Based Hotel Front Office Training Application Game Concept for Hospitality Students
Raharjo, Tito Pandu;
Roedavan, Rickman
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 2 (2025): August
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i2.1926
The advancement of Artificial Intelligence (AI) technology present numerous opportunities in vocational education, particularly in the hospitality sector. Front office is a department studied by Hospitality Students, however many educational institutions face challenges in providing authentic front office training, whether due to limited access to actual hotel environments, budget constraints, or a lack of opportunities to interact directly with guests. This study proposes a conceptual design of utilizing AI as an interactive virtual guest in an educational game learning application for front office training. The concept also integrates speech recognition as the form of communication with the AI virtual guest to create a realistic and interactive learning experience. The model is designed to support independent and repetitive practice through various guest scenarios such as reservations, check-in/check-out services, and providing information. A qualitative descriptive method was employed through literature review and needs analysis. The findings recommend the use of AI-based simulation as a complement to live training and as a foundation for future development of hospitality education applications. Preliminary validation using the User Experience Questionnaire (UEQ) indicates that the concept received a score of 2.0 for attractiveness, 1.82 for pragmatic quality, and 1.72 for hedonic quality, which are in the category of Positive. These results suggest that the application concept could serve as an alternative solution for vocational learning by offering a simulated experience that closely resembles real-world front office operations.
Illegal Motorcycle Parking Detection in The Car Area
Isnaeni, Nenen -;
Wisesa, Bradika Almandin;
Lisda, Lisda;
Febrianto, Dany Candra
Indonesian Journal of Data Science, IoT, Machine Learning and Informatics Vol 5 No 2 (2025): August
Publisher : Research Group of Data Engineering, Faculty of Informatics
Show Abstract
|
Download Original
|
Original Source
|
Check in Google Scholar
|
DOI: 10.20895/dinda.v5i2.1948
Illegal motorcycle parking in designated car areas at Politeknik Manufaktur Negeri Bangka Belitung (Polman Babel) disrupts campus parking management, reduces space availability, and poses safety risks. This paper proposes an automated detection system using computer vision and license plate recognition to identify motorcycles parked in car areas and notify their owners via WhatsApp and email alerts. The system integrates CCTV cameras with YOLOv11 for vehicle detection and EasyOCR for license plate recognition, coupled with a database for owner identification. Upon detection, owners receive immediate notifications to rectify the violation. Experiments in Polman Babel’s parking lot show a 94% accuracy in motorcycle detection and 88% in license plate recognition under diverse conditions. The system enhances parking enforcement efficiency, reduces manual intervention, and supports smart campus initiatives. This work offers a scalable, cost-effective solution adaptable to other institutions facing similar parking challenges.