27th Annual Conference on Learning Theory (COLT), Barcelona 2014
The conference strongly supports a broad definition of learning theory, including, but not limited to:
• Design and analysis of learning algorithms and their generalization ability
• Computational complexity of learning
• Optimization procedures for learning
• Unsupervised, semi-supervised learning, and clustering
• Online learning
• Interactive learning
• Kernel Methods
• High dimensional and non-parametric empirical inference, including sparsity methods
• Planning and control, including reinforcement learning
• Learning with additional constraints: E.g. privacy, time or memory budget, communication
• Learning in other settings: E.g. social, economic, and game-theoretic
• Analysis of learning in related fields: natural language processing, neuroscience, bioinformatics, privacy and security, machine vision, data mining, information retrieval.
Additional information can be found at COLT 2014 home page.
Invited Speakers | ||||
Unsupervised Learning; Dictionary Learning; Latent Variable Models | ||||
Concentration | ||||
Unsupervised Learning; Dictionary Learning; Latent Variable Models II | ||||
Statistical Learning Theory | ||||
Unsupervised Learning; Mixture Models | ||||
Online Learning | ||||
Statistical and Online Learning | ||||
Learning with Partial Feedback | ||||
Computational Learning Theory/Algorithmic Results | ||||
Computational Learning Theory/Lower Bounds | ||||
Learning with Partial Feedback | ||||
Statistical Learning Theory | ||||
Sequential Learning | ||||
We are glad to know the Analysis of learning in related fields: natural language processing, neuroscience, bioinformatics, privacy and security, machine vision, data mining, information retrieval.
http://twincitiesdeckandfence.com/