The SEARCH (Search Envisioned As Relation and Class Hierarchizing) framework developed elsewhere (Kargupta, 1995; Kargupta and Goldberg, 1995) offered an alternate perspective toward blackbox optimization -- optimization in presence of little domain knowledge. The SEARCH framework investigates the conditions essential for transcending the limits of random enumerative search using a framework developed in terms of relations, classes and partial ordering. This paper presents a summary of some of the main results of that work. A closed form bound on the sample complexity in terms of the cardinality of the relation space, class space, desired quality of the solution and the reliability is presented. This also leads to the identification of the ...
In black-box optimization an algorithm must solve one of many possible functions, though the precise...
International audienceA predominant topic in the theory of evolutionary algorithms and, more general...
Black-box optimization algorithms optimize a tness function f without knowl-edge of the specic param...
Search and optimization in the context of blackbox objective function evaluation subject to blackbox...
The SEARCH (Search Envisioned As Relation & Class Hierarchizing) framework developed elsewhere (...
Blackbox optimization--optimization in presence of limited knowledge about the objective function--h...
International audienceRandomized search heuristics such as evolutionary algorithms, simulated anneal...
Randomized search heuristics such as evolutionary algorithms, simulated annealing, and ant colony op...
Randomized search heuristics are a broadly used class of general-purpose algorithms. Analyzing them ...
This paper develops an alternate perspective of natural evolution using the SEARCH (Search Envisione...
Black-box complexity measures the difficulty of classes of functions with respect to optimisation by...
The modern view of optimization is that optimization algorithms are not designed in a vacuum, but ca...
This paper closes a gap in the foundations of the theory of average case complexity. First, we clari...
Recently, fine-grained measures of performance of randomized search heuristics received attention in...
Heuristic search algorithms (eg. A* and IDA*) with accurate lower bounds can solve impressively larg...
In black-box optimization an algorithm must solve one of many possible functions, though the precise...
International audienceA predominant topic in the theory of evolutionary algorithms and, more general...
Black-box optimization algorithms optimize a tness function f without knowl-edge of the specic param...
Search and optimization in the context of blackbox objective function evaluation subject to blackbox...
The SEARCH (Search Envisioned As Relation & Class Hierarchizing) framework developed elsewhere (...
Blackbox optimization--optimization in presence of limited knowledge about the objective function--h...
International audienceRandomized search heuristics such as evolutionary algorithms, simulated anneal...
Randomized search heuristics such as evolutionary algorithms, simulated annealing, and ant colony op...
Randomized search heuristics are a broadly used class of general-purpose algorithms. Analyzing them ...
This paper develops an alternate perspective of natural evolution using the SEARCH (Search Envisione...
Black-box complexity measures the difficulty of classes of functions with respect to optimisation by...
The modern view of optimization is that optimization algorithms are not designed in a vacuum, but ca...
This paper closes a gap in the foundations of the theory of average case complexity. First, we clari...
Recently, fine-grained measures of performance of randomized search heuristics received attention in...
Heuristic search algorithms (eg. A* and IDA*) with accurate lower bounds can solve impressively larg...
In black-box optimization an algorithm must solve one of many possible functions, though the precise...
International audienceA predominant topic in the theory of evolutionary algorithms and, more general...
Black-box optimization algorithms optimize a tness function f without knowl-edge of the specic param...