This paper describes an abstract framework, called valuation network (VN), for representing and solving discrete optimization problems. In VNs, we represent information in an optimization problem using functions called valuations. Valuations represent factors of an objective function. Solving a VN involves using two operators called combination and marginalization. The combination operator tells us how to combine the factors of the objective function to form the global objective function (also called joint valuation). Marginalization is either maximization or minimization. Solving a VN can be described simply as finding the marginal of the joint valuation for the empty set. We state some simple axioms that combination and marginalization ne...
Among the mathematical methods used in economics, a prominent place is occupied by the dynamic progr...
frobertcmeyerpsteffengtechfakunibielefeldde Abstract Dynamic programming is a classic programming t...
There has been little work on how to construct greedy algorithms to solve new optimization problems ...
This paper describes an abstract framework, called valuation networks (VN), for representing and so...
Valuation algebras abstract a large number of formalisms for automated reasoning and enable the defi...
This paper describes an abstract framework called valuation network for computation of marginals usi...
Dynamic programming is a mathematical technique which provides a systematic procedure for determinin...
This article establishes a dynamic programming argument for a maximin optimization problem where the...
We develop a formal model of enumeration problems and define dynamic programming in its setting. Dyn...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
Dynamic programming is a mathematical technique for solving certain types of sequential decision pro...
The mathematical theory of dynamic programming as a means of solving dynamic optimization problems d...
Introduction to Dynamic Programming provides information pertinent to the fundamental aspects of dyn...
Dynamic programming is a general technique to formulate problems which involve a sequence of decisio...
Dynamic programming provides a methodology to develop planners and controllers for nonlinear systems...
Among the mathematical methods used in economics, a prominent place is occupied by the dynamic progr...
frobertcmeyerpsteffengtechfakunibielefeldde Abstract Dynamic programming is a classic programming t...
There has been little work on how to construct greedy algorithms to solve new optimization problems ...
This paper describes an abstract framework, called valuation networks (VN), for representing and so...
Valuation algebras abstract a large number of formalisms for automated reasoning and enable the defi...
This paper describes an abstract framework called valuation network for computation of marginals usi...
Dynamic programming is a mathematical technique which provides a systematic procedure for determinin...
This article establishes a dynamic programming argument for a maximin optimization problem where the...
We develop a formal model of enumeration problems and define dynamic programming in its setting. Dyn...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
Dynamic programming is a mathematical technique for solving certain types of sequential decision pro...
The mathematical theory of dynamic programming as a means of solving dynamic optimization problems d...
Introduction to Dynamic Programming provides information pertinent to the fundamental aspects of dyn...
Dynamic programming is a general technique to formulate problems which involve a sequence of decisio...
Dynamic programming provides a methodology to develop planners and controllers for nonlinear systems...
Among the mathematical methods used in economics, a prominent place is occupied by the dynamic progr...
frobertcmeyerpsteffengtechfakunibielefeldde Abstract Dynamic programming is a classic programming t...
There has been little work on how to construct greedy algorithms to solve new optimization problems ...