Perhaps surprisingly, it is possible to predict how long an algorithm will take to run on a previously unseen input, using machine learning techniques to build a model of the algorithm’s runtime as a function of problem-specific instance features. Such models have important applications to algorithm analysis, portfolio-based algorithm selection, and the automatic configuration of parameterized algorithms. Over the past decade, a wide variety of techniques have been studied for building such models. Here, we describe extensions and improvements of existing models, new families of models, and— perhaps most importantly—a much more thorough treatment of algorithm parameters as model inputs. We also comprehensively describe new and existing feat...
The last decade has seen a growing interest in solver portfolios, automated solver configuration, an...
The time complexity of problems and algorithms, i.e., the scaling of the time required for solving a...
We investigate the feasibility of predicting important per-formance criteria of heuristics for a rea...
We investigate the applicability of an existing framework for algorithm runtime prediction to the fi...
We investigate the applicability of an existing framework for algorithm runtime prediction to the fi...
In practical applications, some important classes of problems are NP-complete. Although no worst-cas...
The ability to handle and analyse massive amounts of data has been progressively improved during the...
Abstract. Machine learning can be utilized to build models that predict the runtime of search algori...
Algorithms are more and more made available as part of libraries or tool kits. For a user of such a ...
The Boolean Satisfiability Problem (SAT) is a prominent problem in theoretical computer science. Whi...
State-of-the-art planners often exhibit substantial runtime variation, making it useful to be able t...
Algorithms are more and more made available as part of libraries or tool kits. For a user of such a ...
A burgeoning paradigm in algorithm design is the field of algorithms with predictions, in which algo...
ICTAI 2016: 28th International Conference on Tools with Artificial Intelligence, San Jose, Californi...
In cloud systems, computation time can be rented by the hour and for a given number of processors. T...
The last decade has seen a growing interest in solver portfolios, automated solver configuration, an...
The time complexity of problems and algorithms, i.e., the scaling of the time required for solving a...
We investigate the feasibility of predicting important per-formance criteria of heuristics for a rea...
We investigate the applicability of an existing framework for algorithm runtime prediction to the fi...
We investigate the applicability of an existing framework for algorithm runtime prediction to the fi...
In practical applications, some important classes of problems are NP-complete. Although no worst-cas...
The ability to handle and analyse massive amounts of data has been progressively improved during the...
Abstract. Machine learning can be utilized to build models that predict the runtime of search algori...
Algorithms are more and more made available as part of libraries or tool kits. For a user of such a ...
The Boolean Satisfiability Problem (SAT) is a prominent problem in theoretical computer science. Whi...
State-of-the-art planners often exhibit substantial runtime variation, making it useful to be able t...
Algorithms are more and more made available as part of libraries or tool kits. For a user of such a ...
A burgeoning paradigm in algorithm design is the field of algorithms with predictions, in which algo...
ICTAI 2016: 28th International Conference on Tools with Artificial Intelligence, San Jose, Californi...
In cloud systems, computation time can be rented by the hour and for a given number of processors. T...
The last decade has seen a growing interest in solver portfolios, automated solver configuration, an...
The time complexity of problems and algorithms, i.e., the scaling of the time required for solving a...
We investigate the feasibility of predicting important per-formance criteria of heuristics for a rea...