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magistraleinformatica:ad:ad_18:start [18/05/2019 alle 17:00 (5 anni fa)] – [Topics] Roberto Grossimagistraleinformatica:ad:ad_18:start [24/04/2020 alle 07:13 (4 anni fa)] (versione attuale) Roberto Grossi
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 |10.04.2019| Case study on data streams (II): set membership and heavy hitters. | {{ :magistraleinformatica:ad:ad_18:data-stream-stats.pdf |slides}} {{ :magistraleinformatica:ad:ad_18:cms.zip | code}} | |10.04.2019| Case study on data streams (II): set membership and heavy hitters. | {{ :magistraleinformatica:ad:ad_18:data-stream-stats.pdf |slides}} {{ :magistraleinformatica:ad:ad_18:cms.zip | code}} |
 |12.04.2019| NP-hard problems: download file manager and the knapsack problem. Reduction from Partition to Knapsack (restriction). Dynamic programming algorithms for Knapsack: Case 1: integer weights, complexity O(nW). Case 2: integer values, complexity O(n<sup>2</sup>vmax). Examples. | {{ :magistraleinformatica:ad:ad_17:partition-knapsack.pdf | PDF}}  [[https://repl.it/@grossiroberto/knapsack|code]] | |12.04.2019| NP-hard problems: download file manager and the knapsack problem. Reduction from Partition to Knapsack (restriction). Dynamic programming algorithms for Knapsack: Case 1: integer weights, complexity O(nW). Case 2: integer values, complexity O(n<sup>2</sup>vmax). Examples. | {{ :magistraleinformatica:ad:ad_17:partition-knapsack.pdf | PDF}}  [[https://repl.it/@grossiroberto/knapsack|code]] |
 +|17.04.2019| Case study on approximation for graphs (max cut): single individual haplotypes reconstruction problem (HapCUT) | {{ :magistraleinformatica:ad:ad_18:hapcut.pdf |}}  {{ :magistraleinformatica:ad:ad_18:bio.pdf |}}| 
 |30.04.2019| NP-hard problems: heuristics based on dynamic programming; approximation algorithms. Case study: knapsack problem. | [[http://www.dis.uniroma1.it/~ausiello/InfoTeoIIRM/book/chapter02.pdf| chapt.2: par. 2.1.1]] [[https://repl.it/@grossiroberto/knapsack|code]]  | |30.04.2019| NP-hard problems: heuristics based on dynamic programming; approximation algorithms. Case study: knapsack problem. | [[http://www.dis.uniroma1.it/~ausiello/InfoTeoIIRM/book/chapter02.pdf| chapt.2: par. 2.1.1]] [[https://repl.it/@grossiroberto/knapsack|code]]  |
-|03.05.2019| b+|03.05.2019| NP-hard problems: counting version (#P) based on dynamic programming, uniform random sampling of the feasible solutions. Case study: #knapsack problem. | {{ :magistraleinformatica:ad:ad_17:notesknapsack2.pdf |notes}} [[https://repl.it/@grossiroberto/ApproxKnapsack|code]] 
-|06.05.2019| b+|06.05.2019| Case study on approximation for metric k-center: Clustering and video summarization. | {{ :magistraleinformatica:ad:ad_18:clustering.pdf |}} {{ :magistraleinformatica:ad:ad_18:chapter2.pdf |}}
-|07.05.2019| b+|07.05.2019| NP-hard problems: fully polynomial-time randomized approximation schemes (FPRASs). Case study: #knapsack problem. | {{ :magistraleinformatica:ad:ad_17:notesknapsack2.pdf |notes}} [[https://repl.it/@grossiroberto/ApproxKnapsack|code]] 
-|10.05.2019| b+|10.05.2019| General inapproximability results. Case study: travel salesman problem (TSP).  2-approximation algorithms for metric TSP, Local search. Greedy. Case study: max cut for graphs. Non-existence of PTAS. [CLRS 35.2] {{:magistraleinformatica:alg2:algo2_14:lec02.pdf|Notes}} 
-|13.05.2019| b+|13.05.2019| Randomized approximation and derandomization: universal hash functions; conditional expectations. Case study: max-cut for graphs. [[http://pages.cs.wisc.edu/~jyc/02-810notes/lecture19.pdf|sect. 3-4]] [[http://web.cs.iastate.edu/~pavan/633/lec14.pdf|sect. 1.1]] 
-|14.05.2019| b+|14.05.2019| Case study on bottom-k sketches: approximate similarity searching {{ :magistraleinformatica:ad:ad_18:06691730.pdf |}} {{ :magistraleinformatica:ad:ad_18:p371-thorup.pdf | only Sect.1}} {{ :magistraleinformatica:ad:ad_18:bio.pdf |}}
-|17.05.2019| b|+|17.05.2019| Fixed-parameter tractable (FPT) algorithms. Kernelization. Bounded search tree. Case study: min-vertex cover in graphs.  [[https://www.mimuw.edu.pl/~malcin/book/parameterized-algorithms.pdf|sect. 2.2.1, 3.1]] | 
 +|21.05.2019| Randomized FPT algorithms: color coding and randomized separation. Case study: longest path in graphs and subgraph isomorphism. | [[https://www.mimuw.edu.pl/~malcin/book/parameterized-algorithms.pdf|sect. 5.2, 5.3]] | 
 +|22.05.2019| Case study on graphs: community detection is social networks | {{ :magistraleinformatica:ad:ad_18:sna.pdf |}} {{ :magistraleinformatica:ad:ad_18:nature03607.pdf |}} {{ :magistraleinformatica:ad:ad_18:nature03607-s1.pdf |}}| 
 +|24.05.2019| Fine-grained algorithms. SETH conjecture and conditional lower bounds. Guaranteed heuristics. Case study: diameter in undirected unweighted graphs. | [[https://www.dropbox.com/s/zq0dklabkjyd302/20171212.pdf?dl=0|notes]] [[https://people.csail.mit.edu/virgi/ipec-survey.pdf|sect. 2.3, 2.4, 3, 4]]| 
 +|28.05.2019| Approximation in fine-grained algorithms and limitations. | {{ :magistraleinformatica:ad:ad_17:diameterapprox.pdf | notes }} | 
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magistraleinformatica/ad/ad_18/start.1558198828.txt.gz · Ultima modifica: 18/05/2019 alle 17:00 (5 anni fa) da Roberto Grossi

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