# Questions tagged [dimension-reduction]

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32
questions

**-4**

votes

**1**answer

45 views

### Looking for a function in R to sum rows and cols for matrix reduction

Looking for a R function to sum rows and cols. I have a matrix (6x6). i want to sum [1,1]+[1,2]+[2,1]+[2,2], and then the same for the rest of the matrix, finally i wanna get a 3x3 matrix, in wich ...

**-1**

votes

**0**answers

16 views

### Spreading Sentence Embedding Vectors Applying Dimension Reduction

I have 500k embedded sentence vectors which have 512 dimensions and embedded using Sent2Vec model. After applying T-SNE or UMAP and trying to visualize them on both 2D or 3D space with plotly, points ...

**0**

votes

**0**answers

25 views

### Can we apply t-sne method in some layers of YOLO network and visualize the features of that layers learned

Recently I am learning t-SNE, which is a data visualization method. I find that someone has applied this method to the fully-connected layer of some neural network and visualize the performance of how ...

**0**

votes

**0**answers

16 views

### Columns in X.quali where all the categories are identical - PCAmixdata

I use PCAmixdata package to reduce dimensions for multiple categorical columns. However, I keep receiving
"There are columns in X.quali where all the categories are identical" error.
I am not ...

**-1**

votes

**2**answers

97 views

### Why tsne method use Euclidean distance to compute the similarities in high dimensional data?

I have tried other distance metrics like chebychev distance or Manhatten distance and so on, which are all implemented in tsne in Matlab. Some of them achieve the same good performance as Euclidean ...

**0**

votes

**0**answers

18 views

### Reducing the dimension of a matrix considering the correlations?

I have a matrix of 54675 * 24 (i.e, 54675 points in a 24 dimensional space). I want to find pairwise distance matrix, which normally I do with sklearn pairwise_distance. Since this takes long time, I ...

**0**

votes

**0**answers

56 views

### How to use a function that changes during training with keras

I tried to customize my loss function in my auto encoder, the loss function must take into account the result of another dimension reduction (LLE) and the data I pass to the function must be updated ...

**1**

vote

**2**answers

618 views

### Confirmatory Factor Analysis in Python

Is there a package to perform Confirmatory Factor Analysis in python? I have found a few that can perform Exploratory Factor Analysis in python (scikitlearn, factor_analyzer etc), but I am yet to find ...

**0**

votes

**1**answer

246 views

### Dimensional reduction through subspace clustering

I am trying to write a framework in Python to compare different Dimensional-Reduction-Algorithms and I'm looking for a tutorial or implementation which uses subspace clustering Algorithms such as TSC, ...

**0**

votes

**0**answers

30 views

### Extract features from the videos

I need to find the feature representations of the videos. For that purpose,
I have video frames for each video and I think to leverage the CNN based feature descriptor for each frame. But when I have ...

**2**

votes

**0**answers

41 views

### The Curse of high Dimension And Distance

For extracting features from video frames (2 sample/sec) I use keras framework in python and load VGG16 that input size is (150,150,3) and output size is (4,4,512). After the feature extraction step I ...

**0**

votes

**1**answer

86 views

### After dimension reduction using SVD, what is the meaning of the reduced dimsnion?

I don't understand SVD at algorithm level. But I do know that people use it to reduce dimension. I have two co-occurrence matrix (dimension is 50,000 words by 50,000 words) that store information on ...

**1**

vote

**0**answers

109 views

### Dimension reduction using PCA

Suppose I have a $n \times p$ data matrix $X$, $p>>n$. To reduce the dimension of the data, I use principal component analysis as follows:
I perform SVD and find matrices U ($n \times r$) and V ($r \...

**2**

votes

**1**answer

31 views

### Using features without applying PCA

Suppose there are 8 features in the dataset. I use PCA to and find out that 99% of the information is in the first 3 features using the cumulative sum of the explained variance ratio.
Then why do I ...

**-2**

votes

**1**answer

296 views

### How to use QR-Decomposition to reduce the dimension of a dataset?

Let A be a matrix of dimension m×n, representing the original data set.
The QR decomposition, [Q, R] = qr (A) produces:
Upper triangular matrix R of the same dimension as A
Unitary matrix Q
so ...

**0**

votes

**1**answer

770 views

### Orthogonal matching pursuit

I run orthogonal matching pursuit algorithm in python and get the following warning:
RuntimeWarning: Orthogonal matching pursuit ended prematurely due to linear dependence in the dictionary. The ...

**1**

vote

**1**answer

118 views

### Employing correlation coefficients (Pearson) for dimension reduction [Python]

I'm utilizing this answer in order to find the correlation coefficients greater than a given limit, f, in a matrix (ndarray) that is of shape (29421, 11001) [i.e. 29,421 rows and 11,001 columns].
I'...

**0**

votes

**1**answer

88 views

### Way to mapping N dimensional vector to a point

I'm facing a problem with mapping, I need mapping N dimensional vectors to one group/point, like [0,1....N-1] to 1 | [1,2....N-1] to 2.
The problem is that, right now I have one function where ...

**3**

votes

**1**answer

843 views

### Why scikit-learn truncatedSVD uses 'randomized' algorithm as default?

I used with truncatedSVD with 30000 by 40000 size of term-document matrix to reducing the dimension to 3000 dimension,
when using 'randomized', variance ratio is about 0.5 (n_iter=10)
when using '...

**0**

votes

**1**answer

434 views

### Find neighbours outside of 2d grid which is reduced into a 1d array

I have a two dimensional grid where width and height are always the same.
[0][1][2]
[3][4][5]
[6][7][8]
I reduced it's data source into a one-dimensional array.
[0][1][2][3][4][5][6][7][8]
Access ...

**0**

votes

**1**answer

63 views

### How to do data dimensionailty reduction?

I have a set of 25 images of label 'Infected' and 25 images of label 'Normal'.
I am trying to extract the dual-tree complex wavelet transform based coefficients as features for each of the images.
...

**1**

vote

**0**answers

75 views

### SSVD for dimensional reduction +Clustering

I have run the ssvd by mahout to apply LSA (Latent semantic analysis). I have text documents each contains many features(from 100 to 2000 terms).
I would like to use LSA on the documents to get the ...

**6**

votes

**1**answer

772 views

### In natural language processing (NLP), how do you make an efficient dimension reduction?

In NLP, it's always the case that the dimension of the features are very huge. For example, for one project at hand, the dimension of features is almost 20 thousands (p = 20,000), and each feature is ...

**1**

vote

**1**answer

100 views

### Dimension reduction for logical arrays

I have measurements of 5 devices at two different points of time. A measurement basically consists of an array of ones and zeros corresponding to a bit value at the corresponding location:
whos ...

**1**

vote

**0**answers

150 views

### Activity Recognition - Dimension reduction for continuous HMMs

I am a novice at HMMs but I have tried to build a code using Jahmm for the UCI Human Activity Recognition data set. The data set has 561 features and 7352 rows, and also includes the xyz inertial ...

**0**

votes

**3**answers

438 views

### Read Columnwise Matrix in R

I've spended lots of time trying but somehow nothing works - and I guess this is easy for advanced R users.
I got an Dataformat where each element occurs linewise. First the label as an String ...

**0**

votes

**1**answer

136 views

### How to solve out of memory error?

I am doing my project in OCR.For this i am using image size of 64x64 because when i tried 32x32 etc some pixels is lost.I have tried features such as zonal density, Zernike's moments,Projection ...

**1**

vote

**1**answer

652 views

### how to reduce dimensionality of vector

I have a set of vectors. I'm working on ways to reduce a n-dimensional vector to a unary value (1-d), say
(x1,x2,....,xn) ------> y
This single value needs to be the characteristic value of the ...

**0**

votes

**1**answer

251 views

### Matlab: one-dim integral for a function @(x,y,z)

Lets say
y=2;
z=4;
f=@(x,y,z) x.^2+y.^2+z.^2;
And I want to integrate f for x in [0,1].
It seems like I have to define g and do quad(g,0,1)
g=@(x) f(x,y,z);
quad(g,0,1)
The question I have ...

**2**

votes

**2**answers

2k views

### Mahout binary data clustering

I have points with binary features:
id, feature 1, feature 2, ....
1, 0, 1, 0, 1, ...
2, 1, 1, 0, 1, ...
and the size of matrix is about 20k * 200k but it is sparse. I am using Mahout for clustering ...

**4**

votes

**3**answers

3k views

### Dimension Reduction

I'm trying to reduce a high-dimension dataset to 2-D. However, I don't have access to the whole dataset upfront. So, I'd like to generate a function that takes an N-dimensional vector and returns a ...

**39**

votes

**6**answers

21k views

### Mapping N-dimensional value to a point on Hilbert curve

I have a huge set of N-dimensional points (tens of millions; N is close to 100).
I need to map these points to a single dimension while preserving spatial locality. I want to use Hilbert space-...