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Lecture 3 CSE 331 Sep 2, 2016
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Read the syllabus CAREFULLY!
I’ll need confirmation in writing. No graded material will be handed back till I get this signed form from you!
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Join piazza!
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Main Steps in Algorithm Design
Problem Statement Real world problem Problem Definition Precise mathematical def Algorithm “Implementation” Data Structures Analysis Correctness/Run time
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National Resident Matching
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(Screen) Docs are coming to BUF
Buffalo General Hawkeye (M*A*S*H) Millard Filmore (Gates Circle) JD (Scrubs) Millard Filmore (Suburban)
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What can go wrong?
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The situation is unstable!
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What happens in real life
Preferences Information Preferences
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NRMP plays matchmaker
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Stable Matching Problem
David Gale Lloyd Shapley
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Questions/Comments?
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Matching Employers & Applicants
Input: Set of employers (E) Set of applicants (A) Preferences Output: An assignment of applicants to employers that is “stable” For every x in A and y in E such that x is not assigned to y, either (i) y prefers every accepted applicant to x; or (ii) x prefers her employer to y
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Simplicity is good
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Questions to think about
1) How do we specify preferences? Preference lists 2) Ratio of applicant vs employers 1:1 3) Formally what is an assignment? (perfect) matching 4) Can an employer get assigned > 1 applicant? NO 5) Can an applicant have > 1 job? 6) How many employer/applicants in an applicants/employers preferences? All of them 7) Can an employer have 0 assigned applicants? NO 8) Can an applicant have 0 jobs?
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Questions/Comments?
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Non-feminist reformulation
n men Each with a preference list n women Match/marry them in a “stable” way
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On matchings Mal Wash Simon Inara Zoe Kaylee
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A valid matching Mal Wash Simon Inara Zoe Kaylee
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Not a matching Mal Wash Simon Inara Zoe Kaylee
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Perfect Matching Mal Wash Simon Inara Zoe Kaylee
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Preferences Mal Wash Simon Inara Zoe Kaylee
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Instability Mal Wash Simon Inara Zoe Kaylee
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Questions/Comments?
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Discuss: Naïve algorithm!
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The naïve algorithm Go through all possible perfect matchings S
n! matchings If S is a stable matching then Stop Else move to the next perfect matching
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Gale-Shapley Algorithm
David Gale Lloyd Shapley O(n3) algorithm
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Moral of the story… >
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