Unsupervised learning ("unlabeled" data)
- Algorithms used in unsupervised learning vary, including:
- Clustering
- k-means
- mixture models
- hierarchical clustering
- Anomaly detection
- Neural Networks
- Autoencoders
- Deep Belief Nets
- Hebbian Learning
- Generative Adversarial Networks
- Self-organizing map
- Approaches for learning latent variable models such as
- Expectation–maximization algorithm (EM)
- Method of moments
- Blind signal separation techniques, e.g.,
- Principal component analysis
- Independent component analysis
- Non-negative matrix factorization
- Singular value decomposition
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