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ICSL-DSGA 2026 : International Conference on Statistical Learning, Data Science & Generative AI | |||||||||||||||||
| Link: https://sunwayuniversity.edu.my/conference/icsl-dsga-2026/submission-instructions | |||||||||||||||||
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Call For Papers | |||||||||||||||||
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Track 1 – Statistical Learning Theory and Methods
Foundations of statistical learning and inference High-dimensional statistics and regularisation techniques Bayesian learning, probabilistic models, and uncertainty quantification Robust statistics and outlier-resistant learning methods Graphical models and structured prediction Semi-supervised and unsupervised learning methods Statistical optimisation techniques for large-scale problems Conformal prediction and distribution-free inference Track 2 – Machine Learning, Deep Learning, and Hybrid Approaches Foundations and advances in machine learning and data mining Reinforcement learning and adaptive decision-making Transfer learning, domain adaptation, and meta-learning AutoML and neural architecture search Explainable and interpretable ML models Time-series forecasting and sequential data modeling Quantum machine learning and emerging paradigms Anomaly detection, ensemble methods, and model aggregation ML for healthcare, diagnostics, and biomedical data Track 3 – Generative AI and Foundation Models Generative adversarial networks (GANs) and variational autoencoders (VAEs) Diffusion models, energy-based models, and flow-based generative techniques Large language models (LLMs) and multimodal foundation models Data synthesis, augmentation, and privacy-preserving generation Controllable text, image, and audio generation Evaluation, alignment, and safety of generative models Few-shot, zero-shot, and prompt-based learning techniques Applications of generative AI in science, design, and industry Track 4 – Natural Language Processing and Multimodal Understanding Sentiment and emotion analysis, opinion mining Information retrieval, question answering, and knowledge-augmented LLMs Conversational agents, dialog management, and interactive AI Cross-lingual NLP and low-resource language processing Neural machine translation and speech-language models Text summarization, argument mining, and discourse analysis Multimodal fusion of text, audio, and vision data Ethical considerations in language and multimodal models Track 5 – Computer Vision, Image Processing, and 3D Understanding Foundations and advances in computer vision and image processing Semantic and instance segmentation, object detection in complex scenes Visual reasoning, image captioning, and visual question answering Video understanding, activity recognition, and temporal vision 3D reconstruction, SLAM, and multi-view geometry Generative image and video synthesis Facial recognition, affective computing, and biometrics Image forgery detection, tamper analysis, and deepfake detection Vision for autonomous systems and human-centric AI Track 6 – Data Science, Analytics, and Real-World Applications Foundations and advances in data science, analytics, and real-world systems Big data analytics and scalable data processing AI-driven decision support systems Smart city and urban computing applications AI in finance, fintech, and risk modeling Healthcare analytics and personalized medicine Intelligent transportation, logistics, and mobility solutions AI for environmental sustainability and climate modeling Educational analytics and adaptive learning platforms Track 7 – Robotics, Autonomous Systems, and Edge Intelligence Learning-based control and safe autonomous navigation Human-robot interaction, social and collaborative robotics Swarm intelligence and distributed decision-making Perception and sensing for robotic platforms AI at the edge: low-latency, resource-aware intelligence Soft robotics, bio-inspired systems, and adaptive mechanisms Reinforcement learning for real-world robotic applications Reliable and explainable autonomous systems in safety-critical domains |
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