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活动简介

The International Conference on Machine learning, Optimization, and big Data (MOD) has established itself as a premier interdisciplinary conference in machine learning, computational optimization, knowledge discovery and data science. It provides an international forum for presentation of original multidisciplinary research results, as well as exchange and dissemination of innovative and practical development experiences.

MOD 2017 will be held in Volterra (Pisa) – Tuscany, Italy, from September 14 to 17, 2017. The conference will consist of four days of conference sessions. We invite submissions of papers on all topics related to Machine learning, Optimization, Knowledge Discovery and Data Science including real-world applications for the Conference Proceedings by Springer – Lecture Notes in Computer Science (LNCS).

征稿信息

重要日期

2017-07-15
初稿截稿日期

征稿范围

The last five-year period has seen a impressive revolution in the theory and application of  machine learning and big data. Topics of interest include, but are not limited to:

  • Foundations, algorithms, models and theory of data science, including big data mining.

  • Machine learning and statistical methods for big data.

  • Machine Learning algorithms and models. Neural Networks and Learning Systems. Convolutional neural networks.

  • Unsupervised, semi-supervised, and supervised  Learning.

  • Knowledge Discovery. Learning Representations. Representation learning for planning and reinforcement learning.

  • Metric learning and kernel learning. Sparse coding and dimensionality expansion. Hierarchical models. Learning representations of outputs or states.

  • Multi-objective optimization. Optimization and Game Theory. Surrogate-assisted Optimization. Derivative-free Optimization.

  • Big data Mining from heterogeneous data sources, including text, semi-structured, spatio-temporal, streaming, graph, web, and multimedia data.

  • Big Data mining systems and platforms, and their efficiency, scalability, security and privacy.

  • Computational optimization. Optimization for representation learning. Optimization under Uncertainty

  • Optimization algorithms for Real World Applications. Optimization for Big Data. Optimization and Machine Learning.

  • Implementation issues, parallelization, software platforms, hardware

  • Big Data mining for modeling, visualization, personalization, and recommendation.

  • Big Data mining for cyber-physical systems and complex, time-evolving networks.

  • Applications in social sciences, physical sciences, engineering, life sciences, web, marketing, finance, precision medicine, health informatics, medicine and other domains.

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重要日期
  • 会议日期

    09月14日

    2017

    09月17日

    2017

  • 07月15日 2017

    初稿截稿日期

  • 09月17日 2017

    注册截止日期

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