New answers tagged

0

Unsupervised models can be of several types: Clustering, Representation Learning, Dimensionality Reduction, Anomaly Detection and Search (as in nearest neighbours or Information Retrieval) among many others.


0

If you look at the documentation (or use the source, luke): sklearn.cluster.SpectralClustering(n_clusters=8, ... you can see that for some reason, it simply always defaults to 8 clusters. IMHO, the parameter should be mandatory, instead of having such a default.


0

Don't run clustering without thinking first Clustering algorithms must not be used as black boxes. They need to be carefully used or you get out only garbage. And to use them right, you need to understand the objective of each algorithm. K-means is a least squares approach. if you use it on badly normalized data, it fails. Judging from your plot, there is ...


0

The problem you described is usually referred to as outlier, anomaly or novelty detection. There are many techniques that can be applied to this problem. A nice survey of novelty detection techniques can be found here. The article gives a thorough classification of the techniques and a brief description of each, but as a start, I will list some of the ...


0

Following are the techniques for dimensionality reduction that can be applied in case of Unsupervised Learning:- PCA: principal component analysis Exact PCA Incremental PCA Approximate PCA Kernel PCA SparsePCA and MiniBatchSparsePCA Random projections Gaussian random projection Sparse random projection Feature agglomeration Standard Scaler ...



Top 50 recent answers are included