Decision influence diagrams with fuzzy random variables
نویسندگان
چکیده
In this communication, we study decision influence diagrams using fuzzy sets and fuzzy random variables t,o model problems in which assessing real-valued ~t i l i t~ies , and employing real-valued random variables t o model random magnit,udes, are considered to be too restrictive. We propose conditions allowing us to solve decision influence diagrams when uncertainty magnitudes are formalized by means of fuzzy random variables and the utility is assumed to be fuzzy-valued.
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