08.10.2016 Views

Foundations of Data Science

2dLYwbK

2dLYwbK

SHOW MORE
SHOW LESS

Create successful ePaper yourself

Turn your PDF publications into a flip-book with our unique Google optimized e-Paper software.

[MR95b]<br />

[MU05]<br />

[MV10]<br />

Rajeev Motwani and Prabhakar Raghavan. Randomized Algorithms. Cambridge<br />

University Press, 1995.<br />

Michael Mitzenmacher and Eli Upfal. Probability and computing - randomized<br />

algorithms and probabilistic analysis. Cambridge University Press, 2005.<br />

Ankur Moitra and Gregory Valiant. Settling the polynomial learnability <strong>of</strong><br />

mixtures <strong>of</strong> gaussians. In FOCS, pages 93–102, 2010.<br />

[per10] Markov Chains and Mixing Times. American Mathematical Society, 2010.<br />

[SJ]<br />

[SWY75]<br />

Alistair Sinclair and Mark Jerrum. Approximate counting, uniform generation<br />

and rapidly mixing markov chains. Information and Computation.<br />

G. Salton, A. Wong, and C. S. Yang. A vector space model for automatic<br />

indexing. Commun. ACM, 18:613–620, November 1975.<br />

[Vem04] Santosh Vempala. The Random Projection Method. DIMACS, 2004.<br />

[VW02]<br />

[WS98]<br />

Santosh Vempala and Grant Wang. A spectral algorithm for learning mixtures<br />

<strong>of</strong> distributions. Journal <strong>of</strong> Computer and System <strong>Science</strong>s, pages 113–123,<br />

2002.<br />

D. J. Watts and S. H. Strogatz. Collective dynamics <strong>of</strong> ’small-world’ networks.<br />

Nature, 393 (6684), 1998.<br />

439

Hooray! Your file is uploaded and ready to be published.

Saved successfully!

Ooh no, something went wrong!