Understanding Algorithms For Big Data Compsci 229r Lecture 16

Exploring Algorithms For Big Data Compsci 229r Lecture 16 reveals several interesting facts. Linear least squares via subspace embeddings, leverage score sampling, non-commutative Khintchine, oblivious subspace ...

Key Takeaways about Algorithms For Big Data Compsci 229r Lecture 16

  • Low-rank approximation, column-based matrix reconstruction, k-means, compressed sensing.
  • MapReduce: TeraSort, minimum spanning tree, triangle counting.
  • Simplex wrap-up, strong duality, complementary slackness, ellipsoid, intro to interior point.
  • External memory model: linked list, matrix multiplication, B-tree, buffered repository tree, sorting.
  • Matrix completion.

Detailed Analysis of Algorithms For Big Data Compsci 229r Lecture 16

Oblivious subspace embeddings, faster iterative regression, sketch-and-solve regression. P-stable sketch analysis, Nisan's PRG, ℓp estimation for p Necessity of randomized/approximate guarantees, linear sketching, AMS sketch, p-stable sketch for p less than 2.

Approximate matrix multiplication with Frobenius error via sampling / JL, matrix median trick, subspace embeddings.

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