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  1. What's the meaning of dimensionality and what is it for this data?

    May 5, 2015 · I've been told that dimensionality is usually referred to attributes or columns of the dataset. But in this case, does it include Class1 and Class2? and does dimensionality mean, …

  2. What should you do if you have too many features in your dataset ...

    Aug 17, 2020 · Whereas dimensionality reduction removes unnecessary/useless data that generates noise. My main question is, if excessive features in a dataset could cause overfitting …

  3. dimensionality reduction - Relationship between SVD and PCA.

    Jan 22, 2015 · However, it can also be performed via singular value decomposition (SVD) of the data matrix $\mathbf X$. How does it work? What is the connection between these two …

  4. Variational Autoencoder − Dimension of the latent space

    What do you call a latent space here? The dimensionality of the layer that outputs means and deviations, or the layer that immediately precedes that? It sounds like you're talking about the …

  5. Difference between dimensionality reduction and clustering

    Apr 29, 2018 · Most of the research papers and even the package creators for example hdbscan recommends dimensionality reduction before applying clustering esp. If the number of …

  6. clustering - Which dimensionality reduction technique works well …

    Sep 10, 2020 · Which dimensionality reduction technique works well for BERT sentence embeddings? Ask Question Asked 4 years, 8 months ago Modified 3 years, 5 months ago

  7. machine learning - What is a latent space? - Cross Validated

    Dec 27, 2019 · In machine learning I've seen people using high dimensional latent space to denote a feature space induced by some non-linear data transformation which increases the …

  8. What does 1x1 convolution mean in a neural network?

    The most common use case for this approach is dimensionality reduction, i.e. typically M < N is used. Actually, I'm not quite sure if there are many use cases to increasing the dimensionality, …

  9. dimensionality reduction - How can UMAP improve HDBSCAN …

    Jun 13, 2025 · I went through UMAPs official documentation which says HDBSCAN, being a density based algorithm suffers from curse of dimensionality and reducing dimensions with …

  10. classification - Is PCA always recommended? - Cross Validated

    Feb 6, 2020 · I was wondering if PCA can be always applied for dimensionality reduction before a classification or regression problem. My intuition tells me that the answer is no. If we perform …