Parametric t-Distributed Stochastic Exemplar-centered Embedding

October 14, 2017 ยท Declared Dead ยท ๐Ÿ› ECML/PKDD

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Authors Martin Renqiang Min, Hongyu Guo, Dinghan Shen arXiv ID 1710.05128 Category cs.LG: Machine Learning Citations 5 Venue ECML/PKDD Last Checked 4 months ago
Abstract
Parametric embedding methods such as parametric t-SNE (pt-SNE) have been widely adopted for data visualization and out-of-sample data embedding without further computationally expensive optimization or approximation. However, the performance of pt-SNE is highly sensitive to the hyper-parameter batch size due to conflicting optimization goals, and often produces dramatically different embeddings with different choices of user-defined perplexities. To effectively solve these issues, we present parametric t-distributed stochastic exemplar-centered embedding methods. Our strategy learns embedding parameters by comparing given data only with precomputed exemplars, resulting in a cost function with linear computational and memory complexity, which is further reduced by noise contrastive samples. Moreover, we propose a shallow embedding network with high-order feature interactions for data visualization, which is much easier to tune but produces comparable performance in contrast to a deep neural network employed by pt-SNE. We empirically demonstrate, using several benchmark datasets, that our proposed methods significantly outperform pt-SNE in terms of robustness, visual effects, and quantitative evaluations.
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