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Accelerating t-SNE using tree-based algorithms
2.4K
Citations
58
References
2014
Year
Geometric LearningEngineeringMachine LearningAdvanced ComputingHardware AlgorithmComputer ArchitectureBarnes-hut AlgorithmImage AnalysisData ScienceData MiningPattern RecognitionNetwork VisualizationComputational VisualizationEmbedding TechniqueTree-based AlgorithmsParallel ComputingKnowledge DiscoveryComputer EngineeringVisual Data MiningComputer ScienceParallel VisualizationComputational ScienceHardware AccelerationT-sne EmbeddingsParallel Programming
The paper investigates the acceleration of t-SNE--an embedding technique that is commonly used for the visualization of high-dimensional data in scatter plots--using two tree-based algorithms. In particular, the paper develops variants of the Barnes-Hut algorithm and of the dual-tree algorithm that approximate the gradient used for learning t-SNE embeddings in O(N log N). Our experiments show that the resulting algorithms substantially accelerate t-SNE, and that they make it possible to learn embeddings of data sets with millions of objects. Somewhat counterintuitively, the Barnes-Hut variant of t-SNE appears to outperform the dual-tree variant.
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