征稿已开启

查看我的稿件

注册已开启

查看我的门票

已截止
活动简介

In recent decades, the diversification of automated learning applications has led to new requirements inherent in the availability of large-scale data. Given the new scientific and technological challenges that are encountered, mathematical optimization has been established as the right approach for many machine learning problems. The specific requirements of machine learning raise new challenges for optimization. In turn, optimization takes advantage of machine learning insofar as concepts, formalisms, approximations and algorithms are revisited.
The International Conference on Learning and Optimization Algorithms: Theory and Applications (LOPAL'2018), which is to be held on 2 - 5 May 2018 at ENSIAS, Mohammed V University in Rabat, Morocco, bridges the gap between the these two areas of knowledge. LOPAL'2018 will be a relevant opportunity for researchers, practitioners, and educators to present and discuss the most recent innovations, trends, and concerns together with the theoretical and practical challenges encountered these areas and their applications.
LOPAL'2018 welcomes original papers on all research areas related to the theoretical aspects of Machine Learning, Optimization, their interfaces, and the application of their algorithms in various domains.
All accepted Papers (regular, short and poster) will be published by ACM - International Conference Proceedings Series (ICPS) and will be available in the ACM Digital Library. The ISBN number assigned by ACM ICPS to LOPAL'2018 is 978-1-4503-5304-5.  
Extended versions of high quality  papers presented at the Conference will be subjected to a 2nd evaluation for their publication in indexed journals.

征稿信息

重要日期

2018-01-01
初稿截稿日期
2018-02-15
初稿录用日期
2018-04-01
终稿截稿日期

征稿范围

Track 1: Machine learning

  • Deep learning Algorithms
  • Density Estimation algorithms
  • Model selection Algorithms
  • Performance study of learning algorithms
  • Feature selection Algorithms
  • Sampling Algorithms
  • Supervised  learning algorithms
  • Unsupervised learning algorithms
  • Semi-Supervised Learning algorithms
  • Reinforcement learning algorithms
  • Similarity algorithms
  • Dimensionality Reduction Algorithms
  • Association Rule Learning Algorithms
  • Subgroup discovery
  • Multiclass learning algorithms
  • Boosting learning algorithms
  • Regression Algorithms
  • Instance-based Algorithms
  • Regularization Algorithms
  • Multi-instance learning
  • Multilabel classification
  • Multi-View Learning
  • Text mining
  • Data Preprocessing

Track 2: Optimization 

  • Stochastic Optimization
  • Nonlinear Optimization
  • Combinatorial optimization
  • Bi-level Optimization
  • Multiobjective Optimization
  • Optimal Control
  • Linear Optimization
  • Dynamic Programming
  • Meataheuristics
  • Local search metaheuristics
  • Tuning of optimization algorithms
  • Control of optimization algorithms
  • Algorithm selection for software engineering
  • Performance study of optimization algorithms
  • Evolutionary and Bioinspired Algorithms

Track 3: Swarm Intelligence  

  • Control in swarm  intelligence
  • Configuration of swarm intelligence algorithms
  • Topological study of swarm intelligence algorithms
  • Collaborative strategies in  swarm  intelligence and multi-swarm
  • Swarm robotics

Track 4: Forecasting 

  • Integration of learning in forecasting
  • Hybridization of forecasting models with machine learning
  • Integration of optimization in the setting of the forecasting models
  • Application of learning forecasting in Commodities – Electricity- Logistics-Finance

Track 5: Social Media Analytics  

  • Community analysis
  • Information Diffusion in Social Media
  • Social Network analysis
  • Recommendation Systems
  • Information retrieval
  • Web mining
  • Image and video processing
  • Sentiment analysis
  • Natural Language Processing

Track 6: Big Data Analytics  

  • Big Data novel theory, algorithm and application
  • Volume, Velocity, Variety, Value and Veracity of Big Data
  • MapReduce for Big Data processing
  • Distributed file systems for Big Data
  • Big Data visualization
  • Big Data mining 
  • Large data stream processing
  • Performance characterization, evaluation and optimization
  • Sensor network, social network and big data
  • Big data applications

Track 7: Cloud Computing Algorithms  

  • Data-driven algorithms and applications
  • Grid and distributed algorithms
  • Parallel and GPU Computing
  • Large Scale Processing
  • Cloud Data Analysis Algorithms
  • Cloud resource management
  • Security in cloud 
  • Load balancing algorithms for cloud computing

Track 8: Smart Systems

  • Smart vehicles and transportation  Systems
  • Smart vision
  • smart city 
  • e-health
  • Internet of things in smart environments (homes, buildings, agriculture, grids, forest, aquaculture) 
  • Smart geosciences 
  • Security, privacy and trust in smart systems 
留言
验证码 看不清楚,更换一张
全部留言
重要日期
  • 会议日期

    05月02日

    2018

    05月05日

    2018

  • 01月01日 2018

    初稿截稿日期

  • 02月15日 2018

    初稿录用通知日期

  • 04月01日 2018

    终稿截稿日期

  • 05月05日 2018

    注册截止日期

移动端
在手机上打开
小程序
打开微信小程序
客服
扫码或点此咨询