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Linear algebra / Random projection / Random indexing / Cosine similarity / Euclidean vector / Vector space model / Latent semantic analysis / Vector / Basis / Singular value decomposition / Matrix / Euclidean space
Date: 2015-09-18 07:15:22
Linear algebra
Random projection
Random indexing
Cosine similarity
Euclidean vector
Vector space model
Latent semantic analysis
Vector
Basis
Singular value decomposition
Matrix
Euclidean space

Random Indexing Explained with High Probability

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