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Volume 2, Issue 2 - Table of Contents

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New Title: ICCK Transactions on Emerging Topics in Artificial Intelligence

Volume 2, Issue 2 (June, 2025) – 5 articles
Citations: 0, 0,  3   |   Viewed: 2827, Download: 630

Open Access | Review Article | 27 June 2025
Federated Learning for Artificial Intelligence in Embedded Systems
ICCK Transactions on Emerging Topics in Artificial Intelligence | Volume 2, Issue 2: 91-115, 2025 | DOI: 10.62762/TETAI.2025.440076
Abstract
Federated Learning (FL) which eliminates the centralized data storage requirement by facilitating model training on diverse edge devices is now a promising paradigm for decentralized machine learning (ML). Applications involving privacy-preserving Artificial Intelligence (AI), including wearable technology, IoT networks, and smart healthcare appliances, can particularly benefit from this solution in embedded systems. By using on-device local data from devices such as sensors, embedded controllers, and smartphones, FL keeps confidential information local, minimizing the data transfer cost and privacy risks. Potentiality, challenges, and key applications of FL integration with embedded systems... More >

Graphical Abstract
Federated Learning for Artificial Intelligence in Embedded Systems

Open Access | Retraction | 23 June 2025
Retraction Notice to "Graph-Driven Multimodal Feature Learning Framework for Apparent Personality Assessment"
ICCK Transactions on Emerging Topics in Artificial Intelligence | Volume 2, Issue 2: 90-90, 2025 | DOI: 10.62762/TETAI.2025.060724
Abstract
This article [1] has been retracted by ICCK following an investigation conducted by the publisher. After publication, it was brought to the journal’s attention that some of the listed authors were unaware of the submission and had not provided their consent to be included as co-authors. In accordance with the COPE guidelines [2], the publisher initiated a formal investigation. It was confirmed that the author Shuyan Liu (School of Information Science and Technology, Yunnan University, Yunnan 650000, China) was unaware of the submission, did not contribute to the research or writing of the manuscript, and did not approve the final version for publication. As a result, the article is b... More >

Open Access | Review Article | 19 June 2025
Cloud-Based AI Solutions for Scalable and Intelligent Enterprise Modernization
ICCK Transactions on Emerging Topics in Artificial Intelligence | Volume 2, Issue 2: 81-89, 2025 | DOI: 10.62762/TETAI.2025.100106
Abstract
The integration of Artificial Intelligence (AI) with cloud computing has emerged as a pivotal strategy for enterprises seeking scalable and intelligent modernization. This paper explores how cloud-based AI solutions are transforming enterprise ecosystems by offering highly scalable, flexible, and cost-effective platforms for deploying intelligent applications. We examine the convergence of AI-as-a-Service (AIaaS), cloud-native architectures, and data-driven decision-making, and how these capabilities collectively drive operational efficiency, customer engagement, and innovation—particularly within sectors such as healthcare, finance, and manufacturing. The study investigates key enablers i... More >

Graphical Abstract
Cloud-Based AI Solutions for Scalable and Intelligent Enterprise Modernization

Open Access | Research Article | 21 May 2025
Anomaly Detection and Risk Early Warning System for Financial Time Series Based on the WaveLST-Trans Model
ICCK Transactions on Emerging Topics in Artificial Intelligence | Volume 2, Issue 2: 68-80, 2025 | DOI: 10.62762/TETAI.2025.191759
Abstract
Abnormal fluctuations in financial markets may signal significant risks or market manipulation, so efficient time series anomaly detection methods are crucial for risk management. However, traditional statistical methods (e.g., ARIMA, GARCH) are difficult to adapt to the nonlinear and multi-scale characteristics of financial data, while single deep learning models (e.g., LSTM, Transformer) have limitations in capturing long-term trends and short-term fluctuations. In this paper, we propose WaveLST-Trans, a financial time series anomaly detection model based on the combination of wavelet transform (WT), LSTM and Transformer. The model first uses wavelet transform to perform multi-scale decomp... More >

Graphical Abstract
Anomaly Detection and Risk Early Warning System for Financial Time Series Based on the WaveLST-Trans Model

Open Access | Research Article | 15 April 2025
RETRACTED: Graph-Driven Multimodal Feature Learning Framework for Apparent Personality Assessment
ICCK Transactions on Emerging Topics in Artificial Intelligence | Volume 2, Issue 2: 57-67, 2025 | DOI: 10.62762/TETAI.2025.279350
Abstract
Predicting personality traits automatically has emerged as a challenging problem in computer vision. This paper introduces an innovative multimodal feature learning framework for personality analysis in short video clips. For visual processing, we construct a facial graph and design a Geo-based two-stream network incorporating an attention mechanism, leveraging both Graph Convolutional Networks (GCN) and Convolutional Neural Networks (CNN) to capture static facial expressions. Additionally, ResNet18 and VGGFace networks are employed to extract global scene and facial appearance features at the frame level. To capture dynamic temporal information, we integrate a BiGRU with a temporal attentio... More >

Graphical Abstract
RETRACTED: Graph-Driven Multimodal Feature Learning Framework for Apparent Personality Assessment