magistraleinformatica:ad:ad_18:start
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Entrambe le parti precedenti la revisioneRevisione precedenteProssima revisione | Revisione precedente | ||
magistraleinformatica:ad:ad_18:start [29/05/2019 alle 11:40 (6 anni fa)] – [Topics] Roberto Grossi | magistraleinformatica:ad:ad_18:start [24/04/2020 alle 07:13 (5 anni fa)] (versione attuale) – Roberto Grossi | ||
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|10.04.2019| Case study on data streams (II): set membership and heavy hitters. | {{ : | |10.04.2019| Case study on data streams (II): set membership and heavy hitters. | {{ : | ||
|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< | |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< | ||
- | |17.04.2019| Case study on approximation for graphs (max cut): single individual | + | |17.04.2019| Case study on approximation for graphs (max cut): single individual haplotypes reconstruction problem (HapCUT) | {{ : |
- | haplotypes reconstruction problem (HapCUT) | {{ : | + | |
|30.04.2019| NP-hard problems: heuristics based on dynamic programming; | |30.04.2019| NP-hard problems: heuristics based on dynamic programming; | ||
|03.05.2019| NP-hard problems: counting version (#P) based on dynamic programming, | |03.05.2019| NP-hard problems: counting version (#P) based on dynamic programming, | ||
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|10.05.2019| General inapproximability results. Case study: travel salesman problem (TSP). | |10.05.2019| General inapproximability results. Case study: travel salesman problem (TSP). | ||
|13.05.2019| Randomized approximation and derandomization: | |13.05.2019| Randomized approximation and derandomization: | ||
- | |14.05.2019| | + | |14.05.2019| |
|17.05.2019| Fixed-parameter tractable (FPT) algorithms. Kernelization. Bounded search tree. Case study: min-vertex cover in graphs. | |17.05.2019| Fixed-parameter tractable (FPT) algorithms. Kernelization. Bounded search tree. Case study: min-vertex cover in graphs. | ||
|21.05.2019| Randomized FPT algorithms: color coding and randomized separation. Case study: longest path in graphs and subgraph isomorphism. | [[https:// | |21.05.2019| Randomized FPT algorithms: color coding and randomized separation. Case study: longest path in graphs and subgraph isomorphism. | [[https:// | ||
- | |22.05.2019| | + | |22.05.2019| |
|24.05.2019| Fine-grained algorithms. SETH conjecture and conditional lower bounds. Guaranteed heuristics. Case study: diameter in undirected unweighted graphs. | [[https:// | |24.05.2019| Fine-grained algorithms. SETH conjecture and conditional lower bounds. Guaranteed heuristics. Case study: diameter in undirected unweighted graphs. | [[https:// | ||
- | |28.05.2019| Approximation in fine-grained algorithms and limitations. Case study: diameter in undirected unweighted graphs. Case study: communities detection in large graphs.| {{ : | + | |28.05.2019| Approximation in fine-grained algorithms and limitations. | {{ : |
magistraleinformatica/ad/ad_18/start.1559130031.txt.gz · Ultima modifica: 29/05/2019 alle 11:40 (6 anni fa) da Roberto Grossi