International audienceThe complexity of planning problems comes from the size of the state graph of the systems, which suggests to consider factored (or distributed) solutions. We previously proposed a solution of this kind which revealed to be very efficient on problems where components have a sparse interaction. This work explores a step further in this direction. The idea is to extend the celebrated turbo algorithms, extremely successful to decode large-scale sparse error correcting codes. The paper proposes an adaptation of this technique to the setting of cost-optimal factored planning, and illustrates its behavior on large randomly generated systems
The automatic derivation of heuristic functions for guiding the search for plans in large spaces is ...
We address the problem of distributed source coding of binary sources with side information at the d...
In the planning-as-SAT paradigm there have been numerous recent developments towards improving the s...
International audienceThe complexity of planning problems comes from the size of the state graph of ...
We consider a general notion of system, composed of a set of variables and a set of legal (possibly ...
Factored planning methods aim to exploit locality to efficiently solve large but "loosely coupled" p...
Automated planning is a field of artificial intelligence that aims at proposing methods to chose and...
This paper investigates stochastic planning problemswith large factored state and action spaces. We ...
Turbo coding is one of the best channel coding procedures presented to the coding community in the r...
International audienceThis paper proposes an approach to solve cost-optimal factored planning proble...
Automated planning is known to be computationally hard in the general case. Propositional planning i...
Data-driven analytics — in areas ranging from consumer marketing to public policy — often allow beha...
We present a scalable approach and implementation for solving stochastic optimization problems on hi...
Modern coding theory is based on the foundation of the sparse codes on graphs, such as the low-densi...
International audienceIn the context of solving sparse linear systems, an ordering process partition...
The automatic derivation of heuristic functions for guiding the search for plans in large spaces is ...
We address the problem of distributed source coding of binary sources with side information at the d...
In the planning-as-SAT paradigm there have been numerous recent developments towards improving the s...
International audienceThe complexity of planning problems comes from the size of the state graph of ...
We consider a general notion of system, composed of a set of variables and a set of legal (possibly ...
Factored planning methods aim to exploit locality to efficiently solve large but "loosely coupled" p...
Automated planning is a field of artificial intelligence that aims at proposing methods to chose and...
This paper investigates stochastic planning problemswith large factored state and action spaces. We ...
Turbo coding is one of the best channel coding procedures presented to the coding community in the r...
International audienceThis paper proposes an approach to solve cost-optimal factored planning proble...
Automated planning is known to be computationally hard in the general case. Propositional planning i...
Data-driven analytics — in areas ranging from consumer marketing to public policy — often allow beha...
We present a scalable approach and implementation for solving stochastic optimization problems on hi...
Modern coding theory is based on the foundation of the sparse codes on graphs, such as the low-densi...
International audienceIn the context of solving sparse linear systems, an ordering process partition...
The automatic derivation of heuristic functions for guiding the search for plans in large spaces is ...
We address the problem of distributed source coding of binary sources with side information at the d...
In the planning-as-SAT paradigm there have been numerous recent developments towards improving the s...