The performance of machine learning methods is heavily dependent on the choice of data representation (or features) on which they are applied. The rapidly developing field of representation learning is concerned with questions surrounding how we can best learn meaningful and useful representations of data. We take a broad view of the field and include topics such as deep learning and feature learning, metric learning, compositional modeling, structured prediction, reinforcement learning, and issues regarding large-scale learning and non-convex optimization. The range of domains to which these techniques apply is also very broad, from vision to speech recognition, text understanding, gaming, music, etc.
Unsupervised, semi-supervised, and supervised representation learning
Representation learning for planning and reinforcement learning
Metric learning and kernel learning
Sparse coding and dimensionality expansion
Hierarchical models
Optimization for representation learning
Learning representations of outputs or states
Implementation issues, parallelization, software platforms, hardware
Applications in vision, audio, speech, natural language processing, robotics, neuroscience, or any other field
04月24日
2017
04月26日
2017
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