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t-SNE: Reduce Your Dimensions, Keep Your Clusters
Linear Digressions
English - January 15, 2016 04:05 - 16 minutes - 23.2 MB - ★★★★★ - 350 ratingsTechnology data science machine learning linear digressions Homepage Download Apple Podcasts Google Podcasts Overcast Castro Pocket Casts RSS feed
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Ever tried to visualize a cluster of data points in 40 dimensions? Or even 4, for that matter? We prefer to stick to 2, or maybe 3 if we're feeling well-caffeinated. The t-SNE algorithm is one of the best tools on the market for doing dimensionality reduction when you have clustering in mind.
Relevant links:
https://www.youtube.com/watch?v=RJVL80Gg3lA