We propose a new approach for solving a class of discrete decision making problems under uncertainty with positive cost. This issue concerns multiple and diverse fields such as engineering, economics, artificial intelligence, cognitive science and many others. Basically, an agent has to choose a single or series of actions from a set of options, without knowing for sure their consequences. Schematically, two main approaches have been followed: either the agent learns which option is the correct one to choose in a given situation by trial and error, or the agent already has some knowledge on the possible consequences of his decisions; this knowledge being generally expressed as a conditional probability distribution. In the latter case, seve...
We present the description logic PN-ALCK_NF^alpha for reasoning about actions with sensing under qua...
International audienceThe paper surveys recent AI-oriented works in qualitative decision developed b...
Stochastic programming and distributionally robust optimization seek deterministic deci- sions that ...
We propose a new approach for solving a class of discrete decision making problems under uncertainty...
International audienceWe propose a new approach for solving a class of discrete decision making prob...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
Recent advances in decision making have incorporated both risk and ambiguity in decision theory and ...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
We focus on the aspect of sensing in reasoning about actions under qualitative and probabilistic unc...
When to make a decision is a key question in decision making problems characterized by uncertainty. ...
Conventional approaches for decision making often assume that access to full information is possible...
Abstract. A central issue arising in financial, engineering and, more generally, in many applicative...
We focus on the aspect of sensing in reasoning about actions under qualitative and probabilistic unc...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
We present the description logic PN-ALCK_NF^alpha for reasoning about actions with sensing under qua...
International audienceThe paper surveys recent AI-oriented works in qualitative decision developed b...
Stochastic programming and distributionally robust optimization seek deterministic deci- sions that ...
We propose a new approach for solving a class of discrete decision making problems under uncertainty...
International audienceWe propose a new approach for solving a class of discrete decision making prob...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
Recent advances in decision making have incorporated both risk and ambiguity in decision theory and ...
International audienceThe goal of this chapter is to provide a general introduction to decision maki...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
We focus on the aspect of sensing in reasoning about actions under qualitative and probabilistic unc...
When to make a decision is a key question in decision making problems characterized by uncertainty. ...
Conventional approaches for decision making often assume that access to full information is possible...
Abstract. A central issue arising in financial, engineering and, more generally, in many applicative...
We focus on the aspect of sensing in reasoning about actions under qualitative and probabilistic unc...
A wide variety of decision problems in engineering, science and economics involve uncertain paramete...
We present the description logic PN-ALCK_NF^alpha for reasoning about actions with sensing under qua...
International audienceThe paper surveys recent AI-oriented works in qualitative decision developed b...
Stochastic programming and distributionally robust optimization seek deterministic deci- sions that ...