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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, the …

  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 and …

  3. Curse of dimensionality- does cosine similarity work better and if so ...

    Apr 19, 2018 · When working with high dimensional data, it is almost useless to compare data points using euclidean distance - this is the curse of dimensionality. However, I have read that using …

  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 former.

  5. dimensionality reduction - Relationship between SVD and PCA. How to …

    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 approaches? …

  6. dimensionality reduction - How To Determine The Number Of …

    Apr 4, 2015 · Generally the dimensionality of the problem is, as you suspected, equal to the number of inputs ( also known as, features, measurement variables ). So in the NN model, that would be the …

  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 dimensionality of …

  8. clustering - Which dimensionality reduction technique works well for ...

    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

  9. How to perform dimensionality reduction with PCA in R

    How to perform dimensionality reduction with PCA in R Ask Question Asked 12 years, 8 months ago Modified 3 years, 4 months ago

  10. 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, because in …