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Theodoulos Rodosthenous

Imperial College London



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288 – 288 - SLDS CSpeed 5

Semi-Supervised Classification and Visualization of Multi-View Data

Sponsor:
Keywords: Data visualization, Dimensionality reduction, Semi-supervised classification, t-SNE, Multi-view data, Manifold learning

Theodoulos Rodosthenous

Imperial College London

An increasing number of multi-view data are being published by studies in several fields. This type of data corresponds to multiple data-views, each representing a different aspect of the same set of samples. We have recently proposed multi-SNE, an extension of t-SNE, that produces a single visualization of multi-view data. The multi-SNE approach provides low-dimensional embeddings of the samples, produced by being updated iteratively through the different data-views. Here, we further extend multi-SNE to a semi-supervised approach, that classifies unlabeled samples by regarding the labelling information as an extra data-view. We look deeper into the performance, limitations and strengths of multi-SNE and its extension, S-multi-SNE, by applying the two methods on various multi-view datasets with different challenges. We show that by including the labelling information, the projection of the samples improves drastically and it is accompanied by a strong classification performance.

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