http://103.97.100.158/index.php/jodi/issue/feed Journal Of Data Insights 2024-12-31T08:33:44+00:00 Saeful Amri saefulamri@unimus.ac.id Open Journal Systems <table> <tbody> <tr> <td>Journal Title</td> <td>: Journal of Data Insights</td> </tr> <tr> <td>Online ISSN</td> <td>: 2988 - 2109</td> </tr> <tr> <td>Publication schedule</td> <td>: 2 issues a year (June and December)</td> </tr> <tr> <td>Editor-in-chief</td> <td>: Saeful Amri, S.Kom., M.Kom.</td> </tr> <tr> <td>Language</td> <td>: English</td> </tr> <tr> <td>Publisher</td> <td>: Department of Data Science</td> </tr> <tr> <td> </td> <td> Universitas Muhammadiyah Semarang</td> </tr> <tr> <td>Organized</td> <td>: Department of Data Science</td> </tr> <tr> <td> </td> <td> Universitas Muhammadiyah Semarang</td> </tr> <tr> <td>Citation Analysis</td> <td>: Google Scholar</td> </tr> <tr> <td>Indexing</td> <td>: Google Scholar | Garuda</td> </tr> </tbody> </table> <p>The Journal of Data Insights is an open access publication for peer-reviewed scholarly journals. The Journal of Data Insights focuses on the processing, analysis and interpretation of data for data-driven decisions and solutions in industry, hospitals, government and universities. All articles should contain a validation of the proposed idea, e.g. through case studies, experiments, or a systematic comparison with other already practiced approaches. Two types of papers will be accepted: (1) a short paper discussing a single contribution to a particular new trend or idea, and; (2) a longer paper outlining a specific Research trends. As part of our commitment to scientific advancement, Journal of Data Insights follows an open access policy, which makes published articles freely available online without subscription.</p> http://103.97.100.158/index.php/jodi/article/view/654 Comparison of Holt-Winters Exponential Smoothing (HWES) and Singular Spectrum Analysis (SSA) Methods in Forecasting the Number of Passengers at PT KAI in Indonesia 2024-12-11T08:39:59+00:00 Samikoh Ulinuha ulinuha010101@gmail.com Tiani Wahyu Utami tianiutami@unimus.ac.id Prizka Rismawati Arum prizka.rismawatiarum@unimus.ac.id Dannu Purwanto dannupurwanto@unimus.ac.id <p>Penelitian ini mengkaji penerapan dua metode peramalan, yaitu <em>Holt Winters Exponential Smoothing</em> (HWES) dan <em>Singular Spectrum Analysis</em> (SSA), dalam meramalkan jumlah penumpang di PT Kereta Api Indonesia. Hasil penelitian menunjukkan bahwa penerapan metode HWES dengan model <em>additive</em> menghasilkan nilai parameter pemulusan optimal dengan alpha , beta dan gamma &nbsp;model ini memiliki nilai MAPE sebesar 10.75%. Sementara itu, pada HWES model <em>multiplicative</em> menghasilkan nilai parameter pemulusan alpha , beta &nbsp;dan gamma , menghasilkan nilai MAPE 14.50%. Metode SSA dengan <em>window length</em> &nbsp;menghasilkan nilai MAPE 13.33%. Perbandingan nilai MAPE anatara metode HWES <em>additive</em>, HWES <em>multiplicative</em> dan SSA menunjukkan bahwa HWES <em>additive</em> lebih unggul dengan MAPE sebesar 10.75%. Peramalan jumlah penumpang Kereta Api Indonesia menggunakan metode terbaik Holt Winters Exponential Smoothing <em>Additive</em> untuk periode Januari hingga Desember 2024 memperlihatkan variasi jumlah penumpang terendah pada bulan Agustus dan tertinggi pada bulan Januari.</p> 2024-12-31T00:00:00+00:00 Copyright (c) 2024 Journal Of Data Insights http://103.97.100.158/index.php/jodi/article/view/412 Forecasting Red Onion Prices in Riau Islands Using the Seasonal Autoregressive Integrated Moving Average (SARIMA) Method 2024-12-17T08:25:07+00:00 Revika Inta Nur Kholifah revikainta7@gmail.com Ihsan F athoni Amri ihsanfathoni@unimus.ac.id M Al Haris alharis@unimus.ac.id Nasyiatul Izzah nasyiatulizzah@gmail.com Miftakhiyah Fazza Baita fazzabaita@gmail.com Siti Nurhalisa sitinurhalisa@gmail.com <p><em>The price of shallots is one of the crucial commodities that affects economic stability and community welfare in the Riau Islands. The main factors influencing shallot production are seed variety, land, and weather. This study aims to forecast the price of shallots in the Riau Islands using the Seasonal Autoregressive Integrated Moving Average (SARIMA) method. The data used in this study is sourced from official data and covers a specific period to ensure the accuracy of the forecasting model. The SARIMA (0 1 1) (0 1 1)<sup>5</sup> model with the smallest AIC of &nbsp;2211.59 was selected as the best model based on data analysis and model performance evaluation, with a Mean Absolute Percentage Error (MAPE) of 2.690835 percent, indicating that the model's ability to predict shallot prices in the Riau Islands is very accurate. The prediction results indicate that the price of shallots will decrease in the coming days according to the developed model. Based on these results, this forecast is expected to serve as a reference for the government and market participants in decision-making related to the production, distribution, and control of shallot prices in the Riau Islands.</em></p> 2024-12-31T00:00:00+00:00 Copyright (c) 2024 Revika Inta Nur Kholifah, Ihsan F athoni Amri, M Al Haris, Nasyiatul Izzah, Miftakhiyah Fazza Baita, Siti Nurhalisa http://103.97.100.158/index.php/jodi/article/view/650 Fuzzy Gustafson Kessel for Infrastructure Development Strategy in South Sumatra Province 2024-12-31T01:32:48+00:00 Ariska Fitriyana Ningrum ariskafitriyana@unimus.ac.id Oktaviana Rahma Dhani Oktaviana@gmail.com Febi Anggun Lestari Febianggun@gmail.com Zahra Aura Hisani zahraaura@gmail.com Alwan Fadlurohman alwan@unimus.ac.id <p><em>Infrastructure development is a strategic element in improving public services and economic growth. South Sumatra Province, with its large economic potential, faces challenges in managing efficient and sustainable infrastructure development. This research aims to apply the Fuzzy Gustafson Kessel (FGK) method in decision making related to infrastructure development in South Sumatra Province. FGK combines fuzzy logic with Gustafson Kessel clustering algorithm to handle uncertainty and data variation from various stakeholders. The data used in this study includes population and geographic census data from the Central Bureau of Statistics of South Sumatra Province in 2023, with five indicators: population, area, population growth rate, population density, and poverty rate. The results show that South Sumatra is divided into three main clusters based on its infrastructure and demographic characteristics. This clustering is expected to improve the effectiveness and efficiency of infrastructure development decision-making, provide more appropriate policy recommendations, and potentially be applied in other regions with similar challenges.</em></p> 2024-12-31T00:00:00+00:00 Copyright (c) 2024 Ariska Fitriyana Ningrum, Oktaviana Rahma Dhani, Febi Anggun Lestari, Zahra Aura Hisani, Alwan Fadlurohman http://103.97.100.158/index.php/jodi/article/view/651 Application of Random Forest Method to Analyze the Effect of Smoking History on The Type and Outcomes of TB Examinations 2024-12-31T01:31:15+00:00 Dannu Purwanto dannupurwanto@unimus.ac.id Novia Yunanita noviayunanita@gmail.com <p><em>Tuberculosis (TB) continues to pose a major global health challenge, especially in developing countries. One of the key risk factors that exacerbates the condition of TB patients is smoking, which increases susceptibility to infections and worsens disease prognosis. This study aims to evaluate the influence of smoking history on the type and outcomes of TB diagnoses using a Random Forest machine learning model. The dataset comprises information from TB-diagnosed patients, including demographic details such as age, gender, smoking status, patient type, and diagnostic results. The Random Forest model achieved an accuracy of 87.36%, performing best in classifying non-TB-infected patients. However, the model struggled to accurately identify healthy individuals without TB, likely due to data imbalance. This research offers fresh insights into the potential of machine learning to enhance TB diagnosis and prevention, while deepening the understanding of smoking as a risk factor in TB management.</em></p> 2024-12-31T00:00:00+00:00 Copyright (c) 2024 Dannu Purwanto, Novia Yunanita http://103.97.100.158/index.php/jodi/article/view/213 Decision Tree Classification Prediction of Covid-19 Cases in Indonesia 2024-12-06T02:42:59+00:00 Amaliah Sholeha Arafat amaliahsholehaarafat@gmail.com Aprilla Anawai Basman aprilla.kolaka@gmail.com Fatkhurokhman Fauzi fatkhurokhmanf@unimus.ac.id Saeful Amri saefulamri@unimus.ac.id <p><em>Forecasting is the prediction of an event in the present and future using past event data. The purpose of forecasting is to minimize errors in predictions (forecast errors) to provide a higher level of confidence. In the context of the COVID-19 pandemic, forecasting the number of cases can help anticipate surges, allowing for better-preparedness to minimize its impact. Forecasting methods can be categorized into three common classifications: qualitative methods, time series, and causal methods. Time series methods are further divided into statistical methods and machine learning. Machine learning methods are more effective in forecasting as they can accommodate non-linear and complex relationships between inputs and outputs. One of the machine learning methods used is the Decision Tree, which is a predictive model structured in a tree or hierarchical format. The Decision tree is a data processing method for predicting the future by constructing classification and regression models in a tree structure. The decision tree is also the most popular and easily understood classification method. In this study, a classification decision tree is used to forecast positive COVID-19 cases in Indonesia using the Python programming language.</em></p> <p>&nbsp;</p> 2024-12-31T00:00:00+00:00 Copyright (c) 2024 Amaliah Sholeha Arafat, Aprilla Anawai Basman, Fatkhurokhman Fauzi, Saeful Amri