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      Convergence analysis of t-SNE as a gradient flow for point cloud on a manifold

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          Abstract

          We present a theoretical foundation regarding the boundedness of the t-SNE algorithm. t-SNE employs gradient descent iteration with Kullback-Leibler (KL) divergence as the objective function, aiming to identify a set of points that closely resemble the original data points in a high-dimensional space, minimizing KL divergence. Investigating t-SNE properties such as perplexity and affinity under a weak convergence assumption on the sampled dataset, we examine the behavior of points generated by t-SNE under continuous gradient flow. Demonstrating that points generated by t-SNE remain bounded, we leverage this insight to establish the existence of a minimizer for KL divergence.

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          Author and article information

          Journal
          31 January 2024
          Article
          2401.17675
          12575b3c-595e-49c9-98b6-70607dec53f8

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          90C26, 90C30
          stat.ML cs.DS cs.LG

          Data structures & Algorithms,Machine learning,Artificial intelligence
          Data structures & Algorithms, Machine learning, Artificial intelligence

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