Comprehensive Exploration of Machine and Deep Learning Classification Methods for Aspect-Based Sentiment Analysis with Latent Dirichlet Allocation Topic Modeling
(De Rosal Ignatius Moses Setiadi, Dhendra Marutho, Noor Ageng Setiyanto)
DOI : 10.62411/faith.2024-3
- Volume: 1,
Issue: 1,
Sitasi : 26 22-May-2024
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This research explores the effectiveness of machine learning (ML) and deep learning (DL) classification methods in Aspect-Based Sentiment Analysis (ABSA) on product reviews, incorporating Latent Dirichlet Allocation (LDA) for topic modeling. Using the Amazon reviews dataset, this research tests models such as Naive Bayes (NB), Support Vector Machines (SVM), Random Forest (RF), Long Short-Term Memory (LSTM), and Gated Recurrent Units(GRU). Important aspects such as the product's quality, practicality, and reliability are discussed. The results show that the RF and DL models provide competitive performance, with the RF achieving an accuracy of up to 94.50% and an F1 score of 95.45% for the reliability aspect. The study's conclusions emphasize the importance of selecting an appropriate model based on specifications and data requirements for ABSA, as well as recognizing the need to strike a balance between accuracy and computational efficiency.
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26 |
2024 |
Analyzing InceptionV3 and InceptionResNetV2 with Data Augmentation for Rice Leaf Disease Classification
(Fadel Muhamad Firnando, De Rosal Ignatius Moses Setiadi, Ahmad Rofiqul Muslikh, Syahroni Wahyu Iriananda)
DOI : 10.62411/faith.2024-4
- Volume: 1,
Issue: 1,
Sitasi : 30 21-May-2024
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This research aims to evaluate and compare the performance of several deep learning architectures, especially InceptionV3 and InceptionResNetV2, with other models, such as EfficientNetB3, ResNet50, and VGG19, in classifying rice leaf diseases. In addition, this research also evaluates the impact of using data augmentation on model performance. Three different datasets were used in this experiment, varying the number of images and class distribution. The results show that InceptionV3 and InceptionResNetV2 consistently perform excellently and accurately on most datasets. Data augmentation has varying effects, providing slight advantages on datasets with lower variation. The findings from this research are that the InceptionV3 model is the best model for classifying rice diseases based on leaf images. The InceptionV3 model produces accuracies of 99.53, 58.94, and 90.00 for datasets 1, 2, and 3, respectively. It is also necessary to be wise in carrying out data augmentation by considering the dataset's characteristics to ensure the resulting model can generalize well.
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30 |
2024 |
Enhanced Vision Transformer and Transfer Learning Approach to Improve Rice Disease Recognition
(Rahadian Kristiyanto Rachman, De Rosal Ignatius Moses Setiadi, Ajib Susanto, Kristiawan Nugroho, Hussain Md Mehedul Islam)
DOI : 10.62411/jcta.10459
- Volume: 1,
Issue: 4,
Sitasi : 0 26-Apr-2024
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In the evolving landscape of agricultural technology, recognizing rice diseases through computational models is a critical challenge, predominantly addressed through Convolutional Neural Networks (CNN). However, the localized feature extraction of CNNs often falls short in complex scenarios, necessitating a shift towards models capable of global contextual understanding. Enter the Vision Transformer (ViT), a paradigm-shifting deep learning model that leverages a self-attention mechanism to transcend the limitations of CNNs by capturing image features in a comprehensive global context. This research embarks on an ambitious journey to refine and adapt the ViT Base(B) transfer learning model for the nuanced task of rice disease recognition. Through meticulous reconfiguration, layer augmentation, and hyperparameter tuning, the study tests the model's prowess across both balanced and imbalanced datasets, revealing its remarkable ability to outperform traditional CNN models, including VGG, MobileNet, and EfficientNet. The proposed ViT model not only achieved superior recall (0.9792), precision (0.9815), specificity (0.9938), f1-score (0.9791), and accuracy (0.9792) on challenging datasets but also established a new benchmark in rice disease recognition, underscoring its potential as a transformative tool in the agricultural domain. This work not only showcases the ViT model's superior performance and stability across diverse tasks and datasets but also illuminates its potential to revolutionize rice disease recognition, setting the stage for future explorations in agricultural AI applications.
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2024 |
Enhancing Lung Cancer Classification Effectiveness Through Hyperparameter-Tuned Support Vector Machine
(Fita Sheila Gomiasti, Warto Warto, Etika Kartikadarma, Jutono Gondohanindijo, De Rosal Ignatius Moses Setiadi)
DOI : 10.62411/jcta.10106
- Volume: 1,
Issue: 4,
Sitasi : 0 25-Mar-2024
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This research aims to improve the effectiveness of lung cancer classification performance using Support Vector Machines (SVM) with hyperparameter tuning. Using Radial Basis Function (RBF) kernels in SVM helps deal with non-linear problems. At the same time, hyperparameter tuning is done through Random Grid Search to find the best combination of parameters. Where the best parameter settings are C = 10, Gamma = 10, Probability = True. Test results show that the tuned SVM improves accuracy, precision, specificity, and F1 score significantly. However, there was a slight decrease in recall, namely 0.02. Even though recall is one of the most important measuring tools in disease classification, especially in imbalanced datasets, specificity also plays a vital role in avoiding misidentifying negative cases. Without hyperparameter tuning, the specificity results are so poor that considering both becomes very important. Overall, the best performance obtained by the proposed method is 0.99 for accuracy, 1.00 for precision, 0.98 for recall, 0.99 for f1-score, and 1.00 for specificity. This research confirms the potential of tuned SVMs in addressing complex data classification challenges and offers important insights for medical diagnostic applications.
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2024 |
Multi-label Classification of Indonesian Al-Quran Translation based CNN, BiLSTM, and FastText
(Ahmad Rofiqul Muslikh, Ismail Akbar, De Rosal Ignatius Moses Setiadi, Hussain Md Mehedul Islam)
DOI : 10.62411/tc.v23i1.9925
- Volume: 23,
Issue: 1,
Sitasi : 0 21-Feb-2024
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Studying the Qur'an is a pivotal act of worship in Islam, which necessitates a structured understanding of its verses to facilitate learning and referencing. Reflecting this complexity, each Quranic verse is rich with unique thematic elements and can be classified into a range of distinct categories. This study explores the enhancement of a multi-label classification model through the integration of FastText. Employing a CNN+Bi-LSTM architecture, the research undertakes the classification of Quranic translations across categories such as Tauhid, Ibadah, Akhlak, and Sejarah. Based on model evaluation using F1-Score, it shows significant differences between the CNN+Bi-LSTM model without FastText, with the highest result being 68.70% in the 80:20 testing configuration. Conversely, the CNN+Bi-LSTM+FastText model, combining embedding size and epoch parameters, achieves a result of 73.30% with an embedding size of 200, epoch of 100, and a 90:10 testing configuration. These findings underscore the significant impact of FastText on model optimization, with an enhancement margin of 4.6% over the base model.
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2024 |
Dataset Analysis and Feature Characteristics to Predict Rice Production based on eXtreme Gradient Boosting
(Ella Budi Wijayanti, De Rosal Ignatius Moses Setiadi, Bimo Haryo Setyoko)
DOI : 10.62411/jcta.10057
- Volume: 1,
Issue: 3,
Sitasi : 0 21-Feb-2024
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Rice plays a vital role as the main food source for almost half of the global population, contributing more than 21% of the total calories humans need. Production predictions are important for determining import-export policies. This research proposes the XGBoost method to predict rice harvests globally using FAO and World Bank datasets. Feature analysis, removal of duplicate data, and parameter tuning were carried out to support the performance of the XGBoost method. The results showed excellent performance based on which reached 0.99. Evaluation of model performance using metrics such as MSE, and MAE measured by k-fold validation show that XGBoost has a high ability to predict crop yields accurately compared to other regression methods such as Random Forest (RF), Gradient Boost (GB), Bagging Regressor (BR) and K-Nearest Neighbor (KNN). Apart from that, an ablation study was also carried out by comparing the performance of each model with various features and state-of-the-art. The results prove the superiority of the proposed XGBoost method. Where results are consistent, and performance is better, this model can effectively support agricultural sustainability, especially rice production.
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2024 |
Exploring DQN-Based Reinforcement Learning in Autonomous Highway Navigation Performance Under High-Traffic Conditions
(Sandy Nugroho, De Rosal Ignatius Moses Setiadi, Hussain Md Mehedul Islam)
DOI : 10.62411/jcta.9929
- Volume: 1,
Issue: 3,
Sitasi : 0 13-Feb-2024
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Driving in a straight line is one of the fundamental tasks for autonomous vehicles, but it can become complex and challenging, especially when dealing with high-speed highways and dense traffic conditions. This research aims to explore the Deep-Q Networking (DQN) model, which is one of the reinforcement learning (RL) methods, in a highway environment. DQN was chosen due to its proficiency in handling complex data through integrated neural network approximations, making it capable of addressing high-complexity environments. DQN simulations were conducted across four scenarios, allowing the agent to operate at speeds ranging from 60 to nearly 100 km/h. The simulations featured a variable number of vehicles/obstacles, ranging from 20 to 80, and each simulation had a duration of 40 seconds within the Highway-Env simulator. Based on the test results, the DQN method exhibited excellent performance, achieving the highest reward value in the first scenario, 35.6117 out of a maximum of 40, and a success rate of 90.075%.
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2024 |
Implementasi Algoritma Fuzzy Tsukamoto untuk Gamifikasi Leaderboard pada Aplikasi Mobile Youthfire (Studi Kasus Gereja JKI Higher Than Ever)
(Gabriella Teshalonika Gondokusumo, De Rosal Ignatius Moses Setiadi)
DOI : 10.62411/tcv.v1i2.1789
- Volume: 1,
Issue: 2,
Sitasi : 0 25-Jan-2024
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Dalam era digital, perkembangan teknologi informasi memberikan dampak besar terhadap perkembangan aplikasi mobile. Aplikasi-aplikasi tersebut memiliki potensi untuk meningkatkan partisipasi dan keterlibatan pengguna dalam aktivitas kerohanian, seperti komunitas sel bagi umat Kristen. Penelitian ini difokuskan pada implementasi algoritma fuzzy Tsukamoto untuk leaderboard dalam sebuah aplikasi yang digunakan untuk mencatat kehadiran dalam kegiatan rohani. Algoritma ini terbukti efektif dalam mengatasi ketidakpastian dan kompleksitas dalam pengambilan keputusan, memberikan peringkat yang akurat dan adil bagi pengguna aplikasi, serta mengategorikan pengguna ke dalam kelompok-kelompok tertentu. Studi kasus ini secara khusus menitikberatkan pada penggunaan algoritma dalam komunitas sel atau "komsel," yang juga dikenal sebagai Mezbah Keluarga (MK), di Gereja Higher Than Ever. Penelitian ini bertujuan untuk menyelidiki efektivitas algoritma fuzzy Tsukamoto dalam meningkatkan partisiapasi anggota dalam kegiatan komsel, serta dampaknya terhadap interaksi dan keterlibatan jemaat, terutama di kalangan generasi muda.
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2024 |
Music-Genre Classification using Bidirectional Long Short-Term Memory and Mel-Frequency Cepstral Coefficients
(Nantalira Niar Wijaya, De Rosal Ignatius Moses Setiadi, Ahmad Rofiqul Muslikh)
DOI : 10.62411/jcta.9655
- Volume: 1,
Issue: 3,
Sitasi : 0 09-Jan-2024
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Music genre classification is one part of the music recommendation process, which is a challenging job. This research proposes the classification of music genres using Bidirectional Long Short-Term Memory (BiLSTM) and Mel-Frequency Cepstral Coefficients (MFCC) extraction features. This method was tested on the GTZAN and ISMIR2004 datasets, specifically on the IS-MIR2004 dataset, a duration cutting operation was carried out, which was only taken from seconds 31 to 60 so that it had the same duration as GTZAN, namely 30 seconds. Preprocessing operations by removing silent parts and stretching are also performed at the preprocessing stage to obtain normalized input. Based on the test results, the performance of the proposed method is able to produce accuracy on testing data of 93.10% for GTZAN and 93.69% for the ISMIR2004 dataset.
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2024 |
Hybrid Quantum Key Distribution Protocol with Chaotic System for Securing Data Transmission
(De Rosal Ignatius Moses Setiadi, Muhamad Akrom)
DOI : 10.33633/jcta.v1i2.9547
- Volume: 1,
Issue: 2,
Sitasi : 0 20-Dec-2023
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| Last.31-Jul-2025
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This research proposes a combination of Quantum Key Distribution (QKD) based on the BB84 protocol with Improved Logistic Map (ILM) to improve data transmission security. This method integrates quantum key formation from BB84 with ILM encryption. This combination creates an additional layer of security, where by default, the operation on BB84 is only XOR-substitution, with the addition of ILM creating a permutation operation on quantum keys. Experiments are measured with several quantum measurements such as Quantum Bit Error Rate (QBER), Polarization Error Rate (PER), Quantum Fidelity (QF), Eavesdropping Detection (ED), and Entanglement-based detection (EDB), as well as classical cryptographic analysis such as Bit Error Ratio (BER), Entropy, Histogram Analysis, and Normalized Pixel Change Rate (NPCR) and Unified Average Changing Intensity (UACI). As a result, the proposed method obtained satisfactory results, especially perfect QF and BER, and EBD, which reached 0.999.
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2023 |