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    MLNN 2026 - 2026 3rd International Conference on Machine Learning and Neural Networks (MLNN 2026)

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    Website https://ais.cn/u/3eUZFf | Want to Edit it Edit Freely

    Category Machine Learning;Neural Networks;Communication Systems;Deep Learning;Reinforcement Learning;;Algorithms

    Deadline: March 27, 2026 | Date: April 10, 2026-April 12, 2026

    Venue/Country: Chengdu, China

    Updated: 2026-01-19 15:50:58 (GMT+9)

    Call For Papers - CFP

    2026 3rd International Conference on Machine Learning and Neural Networks (MLNN 2026) will be held in Chengdu, China, from April 10 to 12, 2026.

    Conference Website: https://ais.cn/u/3eUZFf

    ---Call For Papers---

    The topics of interest for submission include, but are not limited to:

    ◕ Machine Learning Algorithms and Techniques

    ·Supervised and Unsupervised Learning: Methods and Applications

    ·Deep Learning Architectures and Their Applications

    ·Reinforcement Learning for Autonomous Systems and Robotics

    ·Transfer Learning and Domain Adaptation

    ·Evolutionary and Hybrid Algorithms for Machine Learning Optimization

    ·Semi-supervised Learning and Meta-learning Approaches

    ·Ensemble Learning and Online Learning for Dynamic Data

    ·Probabilistic Models: Bayesian Networks and Markov Models

    ·Computational Complexity and Optimization in Machine Learning

    ·Real-world Applications of Machine Learning in Industry and Society

    ◕ Neural Networks and Deep Learning

    ·Convolutional and Recurrent Neural Networks in Computer Vision and Time Series

    ·Generative Models: GANs and Autoencoders in Data Generation and Dimensionality Reduction

    ·Neural Networks in Natural Language Processing and Speech Recognition

    ·Deep Reinforcement Learning for Robotics, Automation, and Network Optimization

    ·Neural Networks in Healthcare: Medical Imaging, Diagnostics, and Anomaly Detection

    ·Neural Networks for Financial Forecasting and Cybersecurity

    ·Transfer Learning and Few-shot Learning in Deep Learning

    ·Deep Learning for Recommender Systems and Data Augmentation

    ◕Machine Learning and Neural Networks in Communication Systems

    ·Machine Learning for Wireless Communication and 5G Networks

    ·AI-based Optimization and Resource Allocation in Communication Networks

    ·Deep Learning for Signal Processing, Channel Estimation, and Spectrum Management

    ·Cognitive Radio Networks and Machine Learning for Dynamic Spectrum Access

    ·Neural Networks for MIMO Systems, Beamforming, and Network Security

    ·Machine Learning for Network Traffic Prediction and Intrusion Detection

    ·AI Techniques for Quality of Service (QoS) and Quality of Experience (QoE) in Networks

    ·Data-driven Approaches for IoT and Autonomous Communication Systems

    ·Deep Reinforcement Learning for Communication Network Optimization

    ---Publication---

    All papers, both invited and contributed, will be reviewed by two or three expert reviewers from the conference committees. After a careful reviewing process, all accepted papers of MLNN 2026 will be published in ACM International Conference Proceedings Series, which will be archived in the ACM Digital Library, and indexed by EI Compendex, Scopus.

    ---Important Dates---

    Full Paper Submission Date: February 6, 2026

    Registration Deadline: March 27, 2026

    Final Paper Submission Date: March 27, 2026

    Conference Dates: April 10-12, 2026

    ---Paper Submission---

    Please send the full paper(word+pdf) to Submission System:

    https://ais.cn/u/3eUZFf


    Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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