Over the last decade, research on automated parameter tuning, often referred to as automatic algorithm configuration (AAC), has made significant progress. Although the usefulness of such tools has been widely recognized in real world applications, the theoretical foundations of AAC are still very weak. This paper addresses this gap by studying the performance estimation problem in AAC. More specifically, this paper first proves the universal best performance estimator in a practical setting, and then establishes theoretical bounds on the estimation error, i.e., the difference between the training performance and the true performance for a parameter configuration, considering finite and infinite configuration spaces respectively. These findi...
Metaheuristic and heuristic methods have many tunable parameters, and choosing their values can incr...
Technology has a major role in today’s world. The development and massive access to information tech...
The best-performing algorithms for many hard problems are highly parameterized. Selecting the best h...
Algorithm configurators are automated methods to optimise the parameters of an algorithm for a class...
Algorithm designers are regularly faced with the tedious task of finding suitable default values fo...
Algorithm configuration (AC) is concerned with the automated search of the most suitable parameter c...
The performance of many hard combinatorial problem solvers depends strongly on their parameter setti...
The performance of an algorithm often critically depends on its parameter configuration. While a var...
We address the problem of finding the parameter settings that will result in optimal performance of ...
We address the problem of nding the pa-rameter settings that will result in optimal performance of a...
Dynamic Algorithm Configuration (DAC) tackles the question of how to automatically learn policies to...
We study the algorithm configuration (AC) problem, in which one seeks to find an optimal parameter c...
The development of algorithms solving computationally hard optimisation problems has a long history....
The impact of learning algorithm optimization by means of parameter tuning is studied. To do this, t...
The development of algorithms for tackling continuous optimization problems has been one of the most...
Metaheuristic and heuristic methods have many tunable parameters, and choosing their values can incr...
Technology has a major role in today’s world. The development and massive access to information tech...
The best-performing algorithms for many hard problems are highly parameterized. Selecting the best h...
Algorithm configurators are automated methods to optimise the parameters of an algorithm for a class...
Algorithm designers are regularly faced with the tedious task of finding suitable default values fo...
Algorithm configuration (AC) is concerned with the automated search of the most suitable parameter c...
The performance of many hard combinatorial problem solvers depends strongly on their parameter setti...
The performance of an algorithm often critically depends on its parameter configuration. While a var...
We address the problem of finding the parameter settings that will result in optimal performance of ...
We address the problem of nding the pa-rameter settings that will result in optimal performance of a...
Dynamic Algorithm Configuration (DAC) tackles the question of how to automatically learn policies to...
We study the algorithm configuration (AC) problem, in which one seeks to find an optimal parameter c...
The development of algorithms solving computationally hard optimisation problems has a long history....
The impact of learning algorithm optimization by means of parameter tuning is studied. To do this, t...
The development of algorithms for tackling continuous optimization problems has been one of the most...
Metaheuristic and heuristic methods have many tunable parameters, and choosing their values can incr...
Technology has a major role in today’s world. The development and massive access to information tech...
The best-performing algorithms for many hard problems are highly parameterized. Selecting the best h...