Sale
  • Vendor: Mia Karts

Developing New Multidimensional Knapsack Heuristics Based on Empirical Analysis of Legacy Heuristics

$34.42 USD
$27.54 USD
 per 
Just 1 left. Order soon!

Free U.S. shipping on all orders. Free international shipping on orders over $99

All orders are dispatched the next business day!

Competitive Pricing You Can Trust — Quality You Can Rely On.

Guaranteed safe checkout

Product description

ISBN: 1288307969

Author: Cho, Yong Kun

Condition: New

The multidimensional knapsack problem (MKP) has been used to model a variety of practical optimization and decision-making applications. Due to its combinatorial nature, heuristics are often employed to quickly find good solutions to MKPs. While there have been a variety of heuristics proposed for the MKP, and a plethora of empirical studies comparing the performance of these heuristics, little has been done to garner a deeper understanding of heuristic performance as a function of problem structure. This dissertation presents a research methodology, empirical and theoretical results explicitly aimed at gaining a deeper understanding of heuristic procedural performance as a function of test problem characteristics. This work first employs an available, robust set of two-dimensional knapsack problems in an empirical study to garner performance insights. These performance insights are tested against a larger set of problems, five-dimensional knapsack problems specifically generated for empirical testing purposes. The performance insights are found to hold in the higher dimensions. These insights are used to formulate and test a suite of three new greedy heuristics for the MKP, each improving upon its successor.

View full details

Developing New Multidimensional Knapsack Heuristics Based on Empirical Analysis of Legacy Heuristics

$34.42 USD
$27.54 USD
 per 
RECENTLY VIEWED PRODUCTS

Free same-day delivery

Free shipping - no code needed, just head for checkout!

Repeat delivery

Repeat delivery with 5% OFF every order.

Curbside pickup

Order online, drive up, check in & pick up.