Many important problems in science and engineering, such as drug design, involve optimizing an expensive black-box objective function over a complex, high-dimensional, and structured input space. Although machine learning techniques have shown promise in solving such problems, existing approaches substantially lack sample efficiency. We introduce an improved method for efficient black-box optimization, which performs the optimization in the low-dimensional, continuous latent manifold learned by a deep generative model. In contrast to previous approaches, we actively steer the generative model to maintain a latent manifold that is highly useful for efficiently optimizing the objective. We achieve this by periodically retraining the generativ...
Black-Box Tuning (BBT) is a derivative-free approach to optimize continuous prompt tokens prepended ...
In recent years, we have seen tremendous benefits from pre-training neural networks to learn represe...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
The success of deep learning has shown impressive empirical breakthroughs, but many theoretical ques...
The encoding of solutions in black-box optimization is a delicate, handcrafted balance between expre...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
Machine learning has been a computer sciences buzzword for years. The technology has a lot of potent...
Optimization is the key component of deep learning. Increasing depth, which is vital for reaching a...
Thesis (Ph.D.)--University of Washington, 2019Imposing appropriate structure or constraints onto opt...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
The performance of deep learning (DL) models is highly dependent on the quality and size of the trai...
With advances in deep learning, exponential data growth and increasing model complexity, developing ...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
Black-Box Tuning (BBT) is a derivative-free approach to optimize continuous prompt tokens prepended ...
In recent years, we have seen tremendous benefits from pre-training neural networks to learn represe...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
The success of deep learning has shown impressive empirical breakthroughs, but many theoretical ques...
The encoding of solutions in black-box optimization is a delicate, handcrafted balance between expre...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
Machine learning has been a computer sciences buzzword for years. The technology has a lot of potent...
Optimization is the key component of deep learning. Increasing depth, which is vital for reaching a...
Thesis (Ph.D.)--University of Washington, 2019Imposing appropriate structure or constraints onto opt...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
The performance of deep learning (DL) models is highly dependent on the quality and size of the trai...
With advances in deep learning, exponential data growth and increasing model complexity, developing ...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
Black-Box Tuning (BBT) is a derivative-free approach to optimize continuous prompt tokens prepended ...
In recent years, we have seen tremendous benefits from pre-training neural networks to learn represe...
Deep neural networks have recently become astonishingly successful at many machine learning problems...