Title of article :
A formal analysis of why heuristic functions work Original Research Article
Author/Authors :
B. John Oommen، نويسنده , , Luis G. Rueda، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Pages :
22
From page :
1
To page :
22
Abstract :
Many optimization problems in computer science have been proven to be NP-hard, and it is unlikely that polynomial-time algorithms that solve these problems exist unless image. Alternatively, they are solved using heuristics algorithms, which provide a sub-optimal solution that, hopefully, is arbitrarily close to the optimal. Such problems are found in a wide range of applications, including artificial intelligence, game theory, graph partitioning, database query optimization, etc. Consider a heuristic algorithm, A. Suppose that A could invoke one of two possible heuristic functions. The question of determining which heuristic function is superior, has typically demanded a yes/no answer—one which is often substantiated by empirical evidence. In this paper, by using Pattern Classification Techniques (PCT), we propose a formal, rigorous theoretical model that provides a stochastic answer to this problem. We prove that given a heuristic algorithm, A, that could utilize either of two heuristic functions image or image used to find the solution to a particular problem, if the accuracy of evaluating the cost of the optimal solution by using image is greater than the accuracy of evaluating the cost using image, then image has a higher probability than image of leading to the optimal solution. This unproven conjecture has been the basis for designing numerous algorithms such as the A* algorithm, and its variants. Apart from formally proving the result, we also address the corresponding database query optimization problem that has been open for at least two decades. To validate our proofs, we report empirical results on database query optimization techniques involving a few well-known histogram estimation methods.
Keywords :
A* algorithms , Heuristic algorithms , Pattern recognition , Optimization
Journal title :
Artificial Intelligence
Serial Year :
2005
Journal title :
Artificial Intelligence
Record number :
1207411
Link To Document :
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