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  • Improved Concept Embeddings for Learning Prerequisite Chains: Generating Poincaré embeddings from natural-language text corpora

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Improved Concept Embeddings for Learning Prerequisite Chains: Co-occurrence

Co-occurrence is symmetric property of pairs of words, meaning if (u,v,w)(u,v,w)(u,v,w) exists, there will also be an edge (v,u,w′)(v,u,w')(v,u,w′), where w′=ww'=ww′=w.

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Updated 2020-08-04

Contributors are:

Jing Cao
Jing Cao
🏆 2

Who are from:

University of Michigan - Ann Arbor
University of Michigan - Ann Arbor
🏆 2

References


  • Reference for generating Poincaré embeddings from natural-language text corpora

  • Improved Concept Embeddings for Learning Prerequisite Chains: Reference

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Data Science

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  • Reference for generating Poincaré embeddings from natural-language text corpora

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