GENERALIZED T-SNE THROUGH THE LENS OF INFORMATION GEOMETRY

Generalized t-SNE Through the Lens of Information Geometry

Generalized t-SNE Through the Lens of Information Geometry

Blog Article

t-SNE (t-distributed Stochastic Neighbor Embedding) is known to be one of the very powerful tools for dimensionality reduction and data visualization.By adopting the student’s t-distribution in the original SNE (Stochastic Neighbor Embedding), t-SNE achieves faster and more stable learning.However, t-SNE still poses computational complexity due to its GREEK YOGURT STARTER dependence on KL-divergence.Our goal is to extend t-SNE in a natural way by the framework of information geometry.

Our generalized t-SNE can outperform the original t-SNE with a well-chosen set of parameters.Furthermore, the experimental results for MNIST, Fashion MNIST and COIL-20, show that our generalized t-SNE outperforms the Hockey Skates - Junior - Performance original t-SNE.

Report this page