Basics of Markov decision processes will be introduced in order to obtain the optimization goal function for minimizing the long-run expected cost. We focus on mini-mization of such cost of the farmer\u27s policy consisting of different decisions in specic states regarding both milk quality and quantity (lactation states) produced by a dairy cow. The transition probability matrix of the Markov process, used here for modeling of transitions of a dairy cow from one state to another, will be estimated from the data simulated from the lactation model that is often used in practice. We want to choose optimal actions in the states of this Markov process regarding the farmer\u27s costs. This problem can be solved by exhaustive enumeration of all p...
The aim of this work was to develop and describe process in solving Markov decision problems with al...
For general state and action space Markov decision processes, we present sufficient conditions for t...
Problems of sequential decisions are marked by the fact that the consequences of a decision made at ...
Abstract. Basics of Markov decision processes will be introduced in order to obtain the optimization...
Basics of Markov decision processes will be introduced in order to obtain the optimization goal func...
AbstractThe purpose of the study was 2-fold: 1) to propose a novel modeling framework using Markovia...
A new criterion of optimality in Markov decision processes is discussed. The objective is to maximiz...
A Markovian Decision Process Is a process which Is observed at distinct time points to be In sane st...
A Markov decision process (MDP) relies on the notions of state, describing the current situation of ...
Dynamic programming to solve the Markov decision process problem of optimal insemination and replace...
Herd optimization models that determine economically optimal insemination and replacement decisions ...
The research described in this thesis was directed towards decision support in dairy cow health mana...
This paper aims at studying simulation modeling in Markovian Decision theory considers its relations...
summary:In this note we focus attention on identifying optimal policies and on elimination suboptima...
<br/>The research described in this thesis was directed towards decision support in dairy cow ...
The aim of this work was to develop and describe process in solving Markov decision problems with al...
For general state and action space Markov decision processes, we present sufficient conditions for t...
Problems of sequential decisions are marked by the fact that the consequences of a decision made at ...
Abstract. Basics of Markov decision processes will be introduced in order to obtain the optimization...
Basics of Markov decision processes will be introduced in order to obtain the optimization goal func...
AbstractThe purpose of the study was 2-fold: 1) to propose a novel modeling framework using Markovia...
A new criterion of optimality in Markov decision processes is discussed. The objective is to maximiz...
A Markovian Decision Process Is a process which Is observed at distinct time points to be In sane st...
A Markov decision process (MDP) relies on the notions of state, describing the current situation of ...
Dynamic programming to solve the Markov decision process problem of optimal insemination and replace...
Herd optimization models that determine economically optimal insemination and replacement decisions ...
The research described in this thesis was directed towards decision support in dairy cow health mana...
This paper aims at studying simulation modeling in Markovian Decision theory considers its relations...
summary:In this note we focus attention on identifying optimal policies and on elimination suboptima...
<br/>The research described in this thesis was directed towards decision support in dairy cow ...
The aim of this work was to develop and describe process in solving Markov decision problems with al...
For general state and action space Markov decision processes, we present sufficient conditions for t...
Problems of sequential decisions are marked by the fact that the consequences of a decision made at ...