Advanced in Artificial Intelligent and Machine Learning

Advanced in Artificial Intelligent and Machine Learning (AAIML) adalah jurnal akses terbuka yang peer-reviewed yang menerbitkan makalah penelitian asli, artikel ulasan, dan studi kasus di bidang kecerdasan buatan (AI) dan pembelajaran mesin (ML). Jurnal ini bertujuan untuk mengembangkan dasar teoretis, metodologi inovatif, dan aplikasi dunia nyata dari sistem cerdas.

Terbitan Terkini

Advanced in Artificial Intelligent and Machine Learning (AAIML) adalah jurnal akses terbuka yang peer-reviewed yang menerbitkan makalah penelitian asli, artikel ulasan, dan studi kasus di bidang kecerdasan buatan (AI) dan pembelajaran mesin (ML). Jurnal ini bertujuan untuk mengembangkan dasar teoretis, metodologi inovatif, dan aplikasi dunia nyata dari sistem cerdas.

Diterbitkan
2025-12-19

Articles

The effect of Artificial Intelligence (AI) and Customer Experience (CX) use in telemedicine on customer satisfaction moderated by service duration

Purpose: This study investigates the effects of Artificial Intelligence (AI) use and Customer Experience (CX) in telemedicine services on customer satisfaction, with service duration as a moderating variable. Methods: A quantitative approach was applied using survey data from 121 active telemedicine users. Data were analyzed using Partial Least Squares–Structural Equation Modeling (PLS-SEM) with SmartPLS 4, including measurement model evaluation, structural analysis, and moderation testing. Results: The results show that AI use has a positive but insignificant effect on customer satisfaction. In contrast, Customer Experience has a positive and significant effect on customer satisfaction, indicating its central role in telemedicine services. Service duration significantly and negatively moderates the relationship between AI use and customer satisfaction, suggesting that longer AI-based service processes reduce satisfaction. However, service duration does not significantly moderate the relationship between Customer Experience and customer satisfaction. Conclusion: Customer satisfaction in telemedicine is influenced more by experiential quality than by AI adoption alone. Effective AI implementation should emphasize service efficiency to enhance satisfaction. Limitation: This study is limited to a single telemedicine platform and uses a cross-sectional design, which may limit generalizability. Contribution: This research highlights the importance of Customer Experience and demonstrates the conditional effect of service duration on AI-driven telemedicine satisfaction.

Expert system for early detection of autism in children using forward chaining method based on android

Purpose: This study aims to design and develop an Android-based expert system for early detection of Autism Spectrum Disorder in children using the Forward Chaining inference method. The system supports parents and educators in recognizing symptoms and bridging the gap between early identification and professional intervention. Methodology/approach: This research adopts a research and development approach using a prototype model. Data were collected through literature review, observation, and expert interviews with child development specialists. The expert system applies Forward Chaining using a rule-based knowledge base covering three ASD severity levels and 27 validated symptoms. System performance was evaluated. Results/findings: The study developed an Android-based expert system to identify autism symptoms and classify severity levels. The system achieved 92% accuracy compared with expert diagnoses, while functional testing confirmed all features operated correctly, including symptom input, diagnostic results, and online clinic reservation. Conclusions: The Android-based expert system using the Forward Chaining method is effective and reliable for supporting early autism detection. Its logical and transparent inference process makes it suitable for non-expert users, while the integration with healthcare services strengthens early intervention efforts. Limitations: The system relies on predefined rules and symptom data, which may not capture the full variability of autism manifestations. The application also does not replace professional clinical diagnosis and is limited to early screening purposes. Contribution: This study contributes a lightweight and accessible mobile expert system for autism detection, integrating diagnostic support with professional access, delivering practical value for parents, educators, and early childhood intervention programs.

Traffic density prediction using the YOLO algorithm to improve traffic management in Bandar Lampung City

Purpose: This study aims to develop a traffic density prediction system in Bandar Lampung City to address increasing congestion caused by the rapid growth of vehicles that exceeds road capacity. The system is intended to support real-time monitoring, improve traffic management efficiency, and facilitate data-driven decision-making for adaptive traffic light control and route diversion. Research Methodology: The study employed an experimental approach combined with prototyping. Vehicle detection was performed using the YOLO algorithm on CCTV footage collected from congestion-prone areas. The resulting data were processed and visualized through a web-based dashboard. System performance was evaluated based on vehicle detection accuracy and real-time processing speed under various traffic conditions. Results: The developed system successfully detected vehicles from CCTV footage in real-time and displayed traffic density information through an interactive web dashboard. The system enabled adaptive traffic management by providing authorities with accurate and timely data on congestion patterns. Conclusions: The study demonstrates that integrating YOLO-based vehicle detection with a web-based dashboard improves traffic management efficiency in Bandar Lampung City. Real-time monitoring and data visualization enhance the ability of authorities to make informed, timely decisions, contributing to more effective traffic control. Limitations: The study is limited by the use of CCTV footage from selected congestion-prone areas, a relatively small dataset, and potential variability in detection accuracy under extreme weather or low-light conditions. Contribution: This research provides a practical model for real-time traffic monitoring and management using YOLO and web-based visualization. The system offers a replicable framework for other urban areas facing similar traffic congestion challenges and supports data-driven policymaking.

Application of Fuzzy Matching in chatbot development to improve user experience on e-commerce sites (Case study: Cutiw Fashion Store)

Purpose: In the rapidly developing digital era, e-commerce websites face challenges in providing responsive and personalized customer service. This study aims to develop a web-based chatbot for the Fashion Cutiw Store by implementing the Fuzzy String Matching method to enhance user experience. Methods: The research involves designing and implementing a web-based chatbot integrated with the Fuzzy String Matching method. This approach enables the chatbot to understand and respond to customer inquiries despite variations in wording or typographical errors, thereby improving the accuracy and relevance of responses. Results: The evaluation results indicate that the chatbot employing Fuzzy String Matching successfully improves user satisfaction through more natural and efficient interactions. The chatbot is able to deliver product information quickly and accurately while handling diverse user input formats. Conclusions: The implementation of a web-based chatbot using the Fuzzy String Matching method effectively enhances customer service performance in e-commerce. It reduces reliance on manual customer support and provides faster, more reliable responses to customer inquiries. Limitation: This study is limited to a single e-commerce platform and focuses primarily on text-based interactions. The chatbot’s performance may vary when handling complex queries or expanding to other product categories without further training and development. Contribution: This research contributes to the development of adaptive automated customer service systems in the e-commerce sector, demonstrating the effectiveness of Fuzzy String Matching in improving chatbot responsiveness and user experience.

Blibiometric analysis of detection lung cancer

Purpose: This study aims to analyze global research trends in lung cancer detection using a bibliometric approach. It focuses on identifying publication growth, dominant research themes, citation patterns, and collaboration networks to better understand the direction and innovation of lung cancer detection research. Methods: A bibliometric analysis was conducted using publication records retrieved from the Scopus database covering the period from 2019 to 2024. Key indicators such as publication output, citation counts, keyword co-occurrence, and author collaboration networks were analyzed. Results: The results indicate a steady increase in publications related to lung cancer detection over the analyzed period. Major research themes include circulating tumor DNA, early detection strategies, next-generation sequencing, and liquid biopsy technologies. The analysis also reveals strong international collaboration networks, highlighting the global nature of lung cancer research and the collective effort to improve detection technologies. Conclusion: The study concludes that research on lung cancer detection is rapidly expanding, driven by technological advancements and growing interest in non-invasive diagnostic approaches. Emerging technologies are expected to play a critical role in enhancing early diagnosis and reducing lung cancer mortality rates. Limitation: This study is limited by its reliance on a single database (Scopus) and a relatively short time frame, which may not capture all relevant publications or long-term research trends. Contribution: This research provides a comprehensive baseline reference for scholars and practitioners, offering valuable insights into current research directions and supporting future advancements in early lung cancer detection methods.
AAIML Journal Cover

Advances in Artificial Intelligence and Machine Learning

Diterbitkan oleh Goodwood Publishing, Advances in Artificial Intelligence and Machine Learning (AAIML) adalah jurnal ilmiah akses terbuka yang melalui proses peer-reviewed dan didedikasikan untuk menerbitkan makalah penelitian asli, tinjauan literatur, dan studi kasus di bidang Kecerdasan Buatan (AI) dan Pembelajaran Mesin (ML). Jurnal ini bertujuan untuk mempromosikan inovasi ilmiah, kolaborasi lintas disiplin, dan kemajuan etis dalam sistem cerdas dan teknologi komputasi.

Lingkup jurnal mencakup (tetapi tidak terbatas pada): Deep Learning, Pemrosesan Bahasa Alami (NLP), Computer Vision, Data Mining, Robotika dan Otomasi, Sistem Dukungan Keputusan Cerdas, Analitik Prediktif, dan Pengembangan AI yang Etis.
AAIML diterbitkan empat kali setahun (Maret, Juni, September, dan Desember) oleh Goodwood Publishing.

Tema OJS3 "Guardian Galaxy" Dikembangkan oleh Artonlabs.
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