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Lecture 7 CSE 331 Sep 13, 2011.

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Presentation on theme: "Lecture 7 CSE 331 Sep 13, 2011."— Presentation transcript:

1 Lecture 7 CSE 331 Sep 13, 2011

2 Online Office Hour today @9:45pm

3 Access via the blog

4 GS algorithm: Firefly Edition
Mal Wash Simon Inara Zoe Kaylee 1 2 3 4 5 6 1

5 GS algo outputs a stable matching
Last lecture, GS outputs a perfect matching S Lemma 2: S has no instability

6 Two obervations Obs 1: Once m is engaged he keeps getting
engaged to “better” women Obs 2: If w proposes m’ first and then to m (or never proposes to m) then she prefers m’ to m

7 Proof of Lemma 2 By contradiction
w’ last proposed to m’ Assume there is an instability (m,w’) m w m prefers w’ to w w prefers m to m’ m’ w’

8 Contradiction by Case Analysis
Depending on whether w’ had proposed to m or not Case 1: w’ never proposed to m w’ m By Obs 2 w’ prefers m’ to m Assumed w’ prefers m to m’ Source: 4simpsons.wordpress.com

9 Case 2: w’ had proposed to m
Case 2.1: m had accepted w’ proposal m is now engaged to w 4simpsons.wordpress.com Thus, m prefers w to w’ By Obs 1 Case 2.1: m had rejected w’ proposal m was engaged to w’’ (prefers w’’ to w’) By Obs 1 m is finally engaged to w (prefers w to w’’) By Obs 1 m prefers w to w’ 4simpsons.wordpress.com

10 Overall structure of case analysis
Did w’ propose to m? Did m accept w’ proposal? 4simpsons.wordpress.com 4simpsons.wordpress.com 4simpsons.wordpress.com

11 Questions?

12 Reminder: HW 1 due Friday
PLEASE SUBMIT EACH PROBLEM ON SEPARATE SHEETS

13 Extensions Fairness of the GS algorithm
Different executions of the GS algorithm

14 Main Steps in Algorithm Design
Problem Statement Problem Definition n! Algorithm “Implementation” Analysis Correctness Analysis

15 Definition of Efficiency
An algorithm is efficient if, when implemented, it runs quickly on real instances Implemented where? Platform independent definition What are real instances? Worst-case Inputs N = 2n2 for SMP Efficient in terms of what? Input size N

16 Definition-II n! How much better? By a factor of 2?
Analytically better than brute force How much better? By a factor of 2?

17 At most c.Nd steps (c>0, d>0 absolute constants)
Definition-III Should scale with input size If N increases by a constant factor, so should the measure Polynomial running time At most c.Nd steps (c>0, d>0 absolute constants) Step: “primitive computational step”

18 More on polynomial time
Problem centric tractability Can talk about problems that are not efficient!

19 Reading Assignments Sections 1.2, 2.1, 2.2 and 2.4 in [KT]

20 Asymptotic Analysis Travelling Salesman Problem (

21 Which one is better?

22 Now?

23 And now?

24 The actual run times n! 100n2 Asymptotic View n2

25 Asymptotic Notation ≤ is O with glasses ≥ is Ω with glasses


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