Randomized Algorithms Lecture 5: “The Principle of Deferred
- Decisions. Chernoff Bounds”
Sotiris Nikoletseas Associate Professor
CEID - ETY Course 2013 - 2014
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Randomized Algorithms Lecture 5: The Principle of Deferred - - PowerPoint PPT Presentation
Randomized Algorithms Lecture 5: The Principle of Deferred Decisions. Chernoff Bounds Sotiris Nikoletseas Associate Professor CEID - ETY Course 2013 - 2014 Sotiris Nikoletseas, Associate Professor Randomized Algorithms - Lecture 5 1 /
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52! = 4 52 = 1 13
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i=1 pi(et−1) = e(et−1)µ
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3
3
2
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3
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2) random graphs,
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4 ǫ
2 µi = 1 − e− β2 2 |Vi| 2
2 ǫ log n 2
4 ǫ
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1 1−γ ) + Θ(log log n). We note that
ǫ′ 1+ǫ′ −1 we finally get
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8 ǫ
4 ǫ ≤ (1 + ǫ′) log n · n− β2 4 ǫ ≤
8 ǫ
8 ǫ.
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8 ǫ bound the β2
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