- Mastering Machine Learning Algorithms
- Giuseppe Bonaccorso
- 84字
- 2021-06-25 22:07:35
Manifold learning
In Chapter 02, Introduction to Semi-Supervised Learning, we discussed the manifold assumption, saying that high-dimensional data normally lies on low-dimensional manifolds. Of course, this is not a theorem, but in many real cases, the assumption is proven to be correct, and it allows us to work with non-linear dimensionality reduction algorithms that would be otherwise unacceptable. In this section, we're going to analyze some of these algorithms. They are all implemented in Scikit-Learn, therefore it's easy to try them with complex datasets.
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