summary:In this note attention is focused on finding policies optimizing risk-sensitive optimality criteria in Markov decision chains. To this end we assume that the total reward generated by the Markov process is evaluated by an exponential utility function with a given risk-sensitive coefficient. The ratio of the first two moments depends on the value of the risk-sensitive coefficient; if the risk-sensitive coefficient is equal to zero we speak on risk-neutral models. Observe that the first moment of the generated reward corresponds to the expectation of the total reward and the second central moment of the reward variance. For communicating Markov processes and for some specific classes of unichain processes long run risk-sensitive avera...
This work was done while he was a visiting associate professor at ISR, University of Maryland, Colle...
AbstractIn the present paper the expected average reward criterion is considered instead of the aver...
AbstractThis paper studies the minimizing risk problems in Markov decision processes with countable ...
summary:In this note attention is focused on finding policies optimizing risk-sensitive optimality c...
This contribution is devoted to the risk-sensitive optimality criteria in finite state Markov Decisi...
In this note we consider continuous-time Markov decision processes with finite state and actions spa...
summary:In this note we focus attention on characterizations of policies maximizing growth rate of e...
summary:In this note we focus attention on characterizations of policies maximizing growth rate of e...
summary:This work concerns controlled Markov chains with finite state space and compact action sets....
summary:This work concerns controlled Markov chains with finite state space and compact action sets....
In this thesis, we study risk-sensitive cost minimization in semi-Markov decision processes. The mai...
Discrete controlled Markov chains with finite action space and bounded cost per stage are studied in...
summary:The article is devoted to Markov reward chains in discrete-time setting with finite state sp...
summary:The article is devoted to Markov reward chains in discrete-time setting with finite state sp...
summary:In this note we focus attention on characterizations of policies maximizing growth rate of e...
This work was done while he was a visiting associate professor at ISR, University of Maryland, Colle...
AbstractIn the present paper the expected average reward criterion is considered instead of the aver...
AbstractThis paper studies the minimizing risk problems in Markov decision processes with countable ...
summary:In this note attention is focused on finding policies optimizing risk-sensitive optimality c...
This contribution is devoted to the risk-sensitive optimality criteria in finite state Markov Decisi...
In this note we consider continuous-time Markov decision processes with finite state and actions spa...
summary:In this note we focus attention on characterizations of policies maximizing growth rate of e...
summary:In this note we focus attention on characterizations of policies maximizing growth rate of e...
summary:This work concerns controlled Markov chains with finite state space and compact action sets....
summary:This work concerns controlled Markov chains with finite state space and compact action sets....
In this thesis, we study risk-sensitive cost minimization in semi-Markov decision processes. The mai...
Discrete controlled Markov chains with finite action space and bounded cost per stage are studied in...
summary:The article is devoted to Markov reward chains in discrete-time setting with finite state sp...
summary:The article is devoted to Markov reward chains in discrete-time setting with finite state sp...
summary:In this note we focus attention on characterizations of policies maximizing growth rate of e...
This work was done while he was a visiting associate professor at ISR, University of Maryland, Colle...
AbstractIn the present paper the expected average reward criterion is considered instead of the aver...
AbstractThis paper studies the minimizing risk problems in Markov decision processes with countable ...