Machine Learning (ML) has made significant progress to perform different tasks, such as image classification, speech recognition, and natural language processing, mainly driven by deep learning. Also, ML algorithms, through learning policies or heuristics estimates, have demonstrated potential for solving deterministic problems that would usually be solved using search techniques. Nevertheless, in solving a search problem with purely learning techniques, it is not possible to deliver guarantees regarding the quality of the solution. This research explores how a learned policy or heuristic can be integrated with a bounded-suboptimal search algorithm using Focal Search, sorting the FOCAL list using the concept of discrepancies to speed up the...
Bounded suboptimal search algorithms attempt to find a solution quickly while guaranteeing that the ...
It is commonly appreciated that solving search problems optimally can overrun time and memory constr...
Machine learning is the embodiment of an unapologetically data-driven philosophy that has increasing...
Recent machine-learning approaches to deterministic search and domain-independent planning employ po...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
Work in machine learning has grown tremendously in the past years, but has had little to no impact o...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
It is well-known that while strict admissibility of heuristics in problem solving guarantees the opt...
To better understand why machine learning works, we cast learning problems as searches and character...
A major difficulty in a search-based problem-solving process is the task of searching the potentiall...
Identifying a small number of features that can represent the data is a known problem that comes up ...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
Heuristic search algorithms are widely used in both AI planning and the decoding of sequences from d...
Graduation date: 2011This dissertation explores algorithms for learning ranking functions to efficie...
Bounded suboptimal search algorithms attempt to find a solution quickly while guaranteeing that the ...
It is commonly appreciated that solving search problems optimally can overrun time and memory constr...
Machine learning is the embodiment of an unapologetically data-driven philosophy that has increasing...
Recent machine-learning approaches to deterministic search and domain-independent planning employ po...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
Suboptimal search algorithms offer shorter solving times by sacrificing guaranteed solution optimali...
Work in machine learning has grown tremendously in the past years, but has had little to no impact o...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
It is well-known that while strict admissibility of heuristics in problem solving guarantees the opt...
To better understand why machine learning works, we cast learning problems as searches and character...
A major difficulty in a search-based problem-solving process is the task of searching the potentiall...
Identifying a small number of features that can represent the data is a known problem that comes up ...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
Heuristic search algorithms are widely used in both AI planning and the decoding of sequences from d...
Graduation date: 2011This dissertation explores algorithms for learning ranking functions to efficie...
Bounded suboptimal search algorithms attempt to find a solution quickly while guaranteeing that the ...
It is commonly appreciated that solving search problems optimally can overrun time and memory constr...
Machine learning is the embodiment of an unapologetically data-driven philosophy that has increasing...