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arxiv: 1611.09957 · v2 · pith:MRP4Q7WVnew · submitted 2016-11-30 · 💻 cs.AI · cs.LG· stat.ML

Low-dimensional Data Embedding via Robust Ranking

classification 💻 cs.AI cs.LGstat.ML
keywords embeddingrankingbetterlow-dimensionalmethodobjectsproblemproduces
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We describe a new method called t-ETE for finding a low-dimensional embedding of a set of objects in Euclidean space. We formulate the embedding problem as a joint ranking problem over a set of triplets, where each triplet captures the relative similarities between three objects in the set. By exploiting recent advances in robust ranking, t-ETE produces high-quality embeddings even in the presence of a significant amount of noise and better preserves local scale than known methods, such as t-STE and t-SNE. In particular, our method produces significantly better results than t-SNE on signature datasets while also being faster to compute.

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