scholarly journals Linearizing Genomes: Exact Methods and Local Search

Author(s):  
Tom Davot ◽  
Annie Chateau ◽  
Rodolphe Giroudeau ◽  
Mathias Weller
Keyword(s):  
Author(s):  
Carla P. Gomes ◽  
Ashish Sabharwal ◽  
Bart Selman

Model counting, or counting the number of solutions of a propositional formula, generalizes SAT and is the canonical #P-complete problem. Surprisingly, model counting is hard even for some polynomial-time solvable cases like 2-SAT and Horn-SAT. Efficient algorithms for this problem will have a significant impact on many application areas that are inherently beyond SAT, such as bounded-length adversarial and contingency planning, and, perhaps most importantly, general probabilistic inference. Model counting can be solved, in principle and to an extent in practice, by extending the two most successful frameworks for SAT algorithms, namely, DPLL and local search. However, scalability and accuracy pose a substantial challenge. As a result, several new ideas have been introduced in the last few years that go beyond the techniques usually employed in most SAT solvers. These include division into components, caching, compilation into normal forms, exploitation of solution sampling methods, and certain randomized streamlining techniques using special constraints. This chapter discusses these techniques, exploring both exact methods as well as fast estimation approaches, including those that provide probabilistic or statistical guarantees on the quality of the reported lower or upper bound on the model count.


2020 ◽  
Author(s):  
Shalin Shah

<p>The quadratic assignment problem (QAP) is one of the hardest NPhard problems and problems with a dimension of 20 or more can be difficult to solve using exact methods. The QAP has a set of facilities and a set of locations. The goal is to assign each facility to a location such that the product of the flow between pairs of facilities and the distance between them are minimized. Sometimes there is also a cost associated with assigning a facility to a location. In this work, I solve the QAP using a population based iterative local search with open source code in C++. Results show that the code is able to solve all nug instances to optimality, thereby proving that the algorithm is capable of solving larger problems for which optimum solutions are not known.</p>


2020 ◽  
Author(s):  
Shalin Shah

<p>The quadratic assignment problem (QAP) is one of the hardest NPhard problems and problems with a dimension of 20 or more can be difficult to solve using exact methods. The QAP has a set of facilities and a set of locations. The goal is to assign each facility to a location such that the product of the flow between pairs of facilities and the distance between them are minimized. Sometimes there is also a cost associated with assigning a facility to a location. In this work, I solve the QAP using a population based iterative local search with open source code in C++. Results show that the code is able to solve all nug instances to optimality, thereby proving that the algorithm is capable of solving larger problems for which optimum solutions are not known.</p>


2015 ◽  
Vol 3 ◽  
pp. 115-122
Author(s):  
Marek Ďurica ◽  
Lucia Švábová

Nowadays, Internet plays a major role in people's lives. It is usually used for entertainment, as a source of information, and also for electronic commerce. Electronic commerce (e-commerce) is gradually replacing traditional shopping, especially in the past years. It is a quick and easy form of marketing, which provides convenience for the customers, and, therefore, more and more users are using this form of shopping on the Internet. E-commerce also provides new opportunities for companies, which force them to begin dealing with the Internet. Many customers who are shopping on the Internet look for the best product or service close to their home. Most of the space in the search results in Google is occupied by local results. If a company offers some goods or services and they do not show up on the local search results, the company may be losing a lot of profits from these potential customers. That is why companies have to focus on best ranking in the local search results. In this article, we try to experimentally determine which factors affect ranking in Google search. Of course, it is necessary to quantify the impact of these factors. To select these factors and to determine their impact, we use exact methods of mathematical statistics, hypothesis testing, correlation, and regression analysis. Confirmation and quantification of the impact of some qualitative and quantitative characteristics of the company can be used to formulate recommendations for improving corporate strategy in acquiring new customers.


Author(s):  
Krzysztof Bolejko ◽  
Andrzej Krasinski ◽  
Charles Hellaby ◽  
Marie-Noelle Celerier
Keyword(s):  

2013 ◽  
Vol 7 (11) ◽  
pp. 52-57
Author(s):  
Oleg Markovich Terentiev ◽  
◽  
Anton Iosifovich Kleshchov ◽  

Author(s):  
Kanagasabai Lenin

This paper proposes Enhanced Frog Leaping Algorithm (EFLA) to solve the optimal reactive power problem. Frog leaping algorithm (FLA) replicates the procedure of frogs passing though the wetland and foraging deeds. Set of virtual frogs alienated into numerous groups known as “memeplexes”. Frog’s position’s turn out to be closer in every memeplex after few optimization runs and certainly, this crisis direct to premature convergence. In the proposed Enhanced Frog Leaping Algorithm (EFLA) the most excellent frog information is used to augment the local search in each memeplex and initiate to the exploration bound acceleration. To advance the speed of convergence two acceleration factors are introduced in the exploration plan formulation. Proposed Enhanced Frog Leaping Algorithm (EFLA) has been tested in standard IEEE 14,300 bus test system and simulation results show the projected algorithm reduced the real power loss considerably.


2010 ◽  
Vol 33 (7) ◽  
pp. 1127-1139
Author(s):  
Da-Ming ZHU ◽  
Shao-Han MA ◽  
Ping-Ping ZHANG

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