Estimation of Distribution Algorithms (EDAs) require flexible probability models that can be efficiently learned and sampled. Restricted Boltzmann Machines (RBMs) are generative neural networks with these desired properties. We integrate an RBM into an EDA and evaluate the performance of this system in solving combinatorial optimization problems with a single objective. We assess how the number of fitness evaluations and the CPU time scale with problem size and with problem complexity. The results are compared to the Bayesian Optimization Algorithm, a state-of-the-art EDA. Although RBM-EDA requires larger population sizes and a larger number of fitness evaluations, it outperforms BOA in terms of CPU times, in particular if the problem is la...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...
Estimation of Distribution Algorithms (EDAs) require flexible probability models that can be efficie...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
Monte Carlo methods such as Simulated Annealing and Parallel Tempering have been applied to Boltzman...
We discuss the problem of solving (approximately) combinatorial optimization problems on a Boltzmann...
We discuss the problem of solving (approximately) combinatorial optimization problems on a Boltzmann...
We present a heuristical procedure for efficient estimation of the partition function in the Boltzma...
This work consists on the theoretical study of Restricted Bolzmann Machines, neural networks that c...
Restricted Boltzmann machines are a generative neural network. They summarize their input data to bu...
Restricted Boltzmann machines are a generative neural network. They summarize their input data to bu...
Restricted Boltzmann machines are a generative neural network. They summarize their input data to bu...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...
Estimation of Distribution Algorithms (EDAs) require flexible probability models that can be efficie...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
Monte Carlo methods such as Simulated Annealing and Parallel Tempering have been applied to Boltzman...
We discuss the problem of solving (approximately) combinatorial optimization problems on a Boltzmann...
We discuss the problem of solving (approximately) combinatorial optimization problems on a Boltzmann...
We present a heuristical procedure for efficient estimation of the partition function in the Boltzma...
This work consists on the theoretical study of Restricted Bolzmann Machines, neural networks that c...
Restricted Boltzmann machines are a generative neural network. They summarize their input data to bu...
Restricted Boltzmann machines are a generative neural network. They summarize their input data to bu...
Restricted Boltzmann machines are a generative neural network. They summarize their input data to bu...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...
Throughout this Ph.D. thesis, we will study the sampling properties of Restricted Boltzmann Machines...