Work in machine learning has grown tremendously in the past years, but has had little to no impact on optimal search approaches. This paper looks at challenges in using deep learning as a part of optimal search, including what is feasible using current public frameworks, and what barriers exist for further adoption. The primary contribution of the paper is to show how to learn admissible heuristics through supervised learning from an existing heuristic. Several approaches are described, with the most successful approach being based on learning a heuristic as a classifier and then adjusting the quantile used with the classifier to ensure heuristic admissibility, which is required for optimal solutions. A secondary contribution is a descripti...
It is well-known that while strict admissibility of heuristics in problem solving guarantees the opt...
This paper formulates learning optimal Bayesian network as a shortest path finding problem. An A* se...
Neural Network Learning algorithms based on Conjugate Gradient Techniques and Quasi Newton Technique...
A major difficulty in a search-based problem-solving process is the task of searching the potentiall...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
We present an extensive evaluation of a wide variety of promising design patterns for automated deep...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Machine learning has been a computer sciences buzzword for years. The technology has a lot of potent...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
Artificial neural networks were used to support applications across a variety of business and scient...
Machine Learning (ML) has made significant progress to perform different tasks, such as image classi...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
The success of deep learning has shown impressive empirical breakthroughs, but many theoretical ques...
Heuristic search algorithms are widely used in both AI planning and the decoding of sequences from d...
Automated machine learning (AutoML) methods improve upon existing models by optimizing various aspec...
It is well-known that while strict admissibility of heuristics in problem solving guarantees the opt...
This paper formulates learning optimal Bayesian network as a shortest path finding problem. An A* se...
Neural Network Learning algorithms based on Conjugate Gradient Techniques and Quasi Newton Technique...
A major difficulty in a search-based problem-solving process is the task of searching the potentiall...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
We present an extensive evaluation of a wide variety of promising design patterns for automated deep...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Machine learning has been a computer sciences buzzword for years. The technology has a lot of potent...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
Artificial neural networks were used to support applications across a variety of business and scient...
Machine Learning (ML) has made significant progress to perform different tasks, such as image classi...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
The success of deep learning has shown impressive empirical breakthroughs, but many theoretical ques...
Heuristic search algorithms are widely used in both AI planning and the decoding of sequences from d...
Automated machine learning (AutoML) methods improve upon existing models by optimizing various aspec...
It is well-known that while strict admissibility of heuristics in problem solving guarantees the opt...
This paper formulates learning optimal Bayesian network as a shortest path finding problem. An A* se...
Neural Network Learning algorithms based on Conjugate Gradient Techniques and Quasi Newton Technique...