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Final doctoral examination and defense of dissertation of Deeparnab Chakrabarty
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Final doctoral examination and defense of dissertation of Deeparnab Chakrabarty
Title:
Algorithmic Aspects of Connectivity, Allocation and Design Problems
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Time: | Thursday, May 15th, 11:00am |
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Location: | KACB 2108 |
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Advisor: | Dr. Vijay Vazirani |
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Committee: | Dr. Robin Thomas, School of Mathematics |
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Dr. William Cook, School of Industrial Systems and Engineering |
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Dr. Adam Kalai, College of Computing |
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Dr. Prasad Tetali, School of Mathematics |
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Reader: | Dr. William Cook, School of Industrial Systems and
Engineering |
Abstract:
Most combinatorial optimization problems are
NP-hard, which imply that under well-believed complexity assumptions,
there exist no polynomial time
algorithms to solve them. To cope with the NP-hardness, approximation
algorithms which return solutions close to
the optimal, have become a rich field of study. One successful method for
designing approximation algorithms has been to model the optimization problem as an integer
program and
then using its polynomial time solvable linear programming relaxation for
the design and
analysis of such algorithms. Such a technique is called the LP-based
technique.
In this thesis, we study the algorithmic aspects of three classes of
combinatorial optimization problems
using LP-based techniques as our main tool.
- Connectivity Problems:
We study the Steiner tree problem and devise new linear
programming relaxations for the problem. We show an equivalence of our
relaxation with the
well studied bidirected cut relaxation for the Steiner tree problem.
Furthermore, for a class
of graphs called quasi-bipartite graphs, we improve the best known upper
bound on the
integrality gap from 3/2 to 4/3. Algorithmically, we obtain fast and simple
approximation
algorithms for the Steiner tree problem on quasi-bipartite graphs.
- Allocation Problems:
We study the budgeted al location problem of allocating a set of
indivisible items to a set of agents who bid on it but possess a hard
budget constraint more
than which they are unwilling to pay. This problem is a special case of
submodular welfare
maximization. We use a natural LP relaxation for the problem and improve
the best known
approximation factor for the problem from ~ 0.632 to 3/4. We also improve
the inapproximability factor of the problem to 15/16 and use our techniques to show
inapproximability
results for many other allocation problems.
We also study online allocation problems where the set of items are unknown
and appear one at a time.
Under some necessary assumptions we provide online algorithms for
many problems which attain the (almost) optimal competitive ratio. Both
these works have
the sponsored
search auctions hosted by search engines on the Internet.
- Design Problems:
We formally define and study design problems which asks how the
weights of an input instance can be designed, so that the minimum (or
maximum) of
a certain function of the input can be maximized (respectively, minimized).
We show
if the function can be approximated to any factor α, then the
optimum design can be
approximated to the same factor.
We also show that (max-min) design problems are dual to packing problems.
We
use
the framework developed by our study of design problems to obtain results
about fractionally packing Steiner trees in a "black-box" fashion. Finally, we study
integral packing of
spanning trees and provide an alternate proof of a theorem of Nash-Williams
and Tutte
about packing spanning trees.
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