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Embedding Projector: Interactive Visualization and Interpretation of Embeddings

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arxiv 1611.05469 v1 pith:ZPWJWWZ5 submitted 2016-11-16 stat.ML cs.HC

Embedding Projector: Interactive Visualization and Interpretation of Embeddings

classification stat.ML cs.HC
keywords embeddingsembeddinginteractiveinterpretationprojectorvisualizationanalyzeappearing
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Embeddings are ubiquitous in machine learning, appearing in recommender systems, NLP, and many other applications. Researchers and developers often need to explore the properties of a specific embedding, and one way to analyze embeddings is to visualize them. We present the Embedding Projector, a tool for interactive visualization and interpretation of embeddings.

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Cited by 5 Pith papers

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