DocumentCode
2070883
Title
Combinatorial optimization through statistical instance-based learning
Author
Telelis, Orestis ; Stamatopoulos, Panagiotis
Author_Institution
Dept. of Inf. & Telecommun., Athens Univ., Greece
fYear
2001
fDate
7-9 Nov 2001
Firstpage
203
Lastpage
209
Abstract
Different successful heuristic approaches have been proposed for solving combinatorial optimization problems. Commonly, each of them is specialized to serve a different purpose or address specific difficulties. However, most combinatorial problems that model real world applications have a priori well known measurable properties. Embedded machine learning methods may aid towards the recognition and utilization of these properties for the achievement of satisfactory solutions. In this paper, we present a heuristic methodology which employs the instance-based machine learning paradigm. This methodology can be adequately configured for several types of optimization problems which are known to have certain properties. Experimental results are discussed concerning two well known problems, namely the knapsack problem and the set partitioning problem. These results show that the proposed approach is able to find significantly better solutions compared to intuitive search methods based on heuristics which are usually applied to the specific problems
Keywords
combinatorial mathematics; heuristic programming; knapsack problems; learning (artificial intelligence); optimisation; combinatorial optimization; embedded machine learning methods; heuristic approaches; heuristic methodology; instance-based machine learning paradigm; knapsack problem; set partitioning problem; statistical instance-based learning; Chromium; Electronic switching systems; Heuristic algorithms; Humans; Informatics; Kernel; Learning systems; Machine learning; Optimization methods; Problem-solving;
fLanguage
English
Publisher
ieee
Conference_Titel
Tools with Artificial Intelligence, Proceedings of the 13th International Conference on
Conference_Location
Dallas, TX
Print_ISBN
0-7695-1417-0
Type
conf
DOI
10.1109/ICTAI.2001.974466
Filename
974466
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