Category:Machine learning
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Machine learning is a branch of statistics and computer science, which studies algorithms and architectures that learn from observed facts.
Wikimedia Commons has media related to Machine learning. |
Subcategories
This category has the following 33 subcategories, out of 33 total.
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Pages in category "Machine learning"
The following 200 pages are in this category, out of approximately 207 total. This list may not reflect recent changes (learn more).
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A
B
C
- Caffe (software)
- Catastrophic interference
- Category utility
- Center for Biological and Computational Learning
- CIML community portal
- Cleverbot
- Cognitive robotics
- Committee machine
- Computational learning theory
- Concept drift
- Concept learning
- Conditional random field
- Confusion matrix
- Connectionist temporal classification
- Constrained conditional model
- Convolutional neural network
- Coupled pattern learner
- Cross-entropy method
- Cross-validation (statistics)
- Curse of dimensionality
D
E
F
G
I
L
M
- M-Theory (learning framework)
- Logic learning machine
- Machine Learning (journal)
- Machine learning control
- Machine learning in bioinformatics
- Manifold regularization
- The Master Algorithm
- Matrix regularization
- Matthews correlation coefficient
- Meta learning (computer science)
- Mixture model
- Mountain car problem
- Movidius
- Multi-armed bandit
- Multi-task learning
- Multilinear principal component analysis
- Multilinear subspace learning
- Multimodal sentiment analysis
- Multiple instance learning
- Multiple-instance learning
- Multiplicative weight update method
- Multitask optimization
- Multivariate adaptive regression splines
P
- Paraphrasing (computational linguistics)
- Parity learning
- Pattern language (formal languages)
- Pattern recognition
- Predictive learning
- Predictive state representation
- Preference learning
- Prior knowledge for pattern recognition
- Proactive learning
- Proaftn
- Probability matching
- Product of experts
- Programming by example
- Proximal gradient methods for learning
R
S
- Sample complexity
- Savi Technology
- Semantic analysis (machine learning)
- Semantic folding
- Semi-supervised learning
- Sequence labeling
- Similarity learning
- Solomonoff's theory of inductive inference
- Sparse dictionary learning
- Spike-and-slab variable selection
- Stability (learning theory)
- Statistical classification
- Statistical learning theory
- Statistical relational learning
- Stochastic block model
- Structural risk minimization
- Structured sparsity regularization
- Subclass reachability
- Supervised learning