DECISION ANALYSIS Chapter 4 - swlearning.com
includes risk analysis. Through risk analysis the decision maker is provided with probabil-ity information about the favorable as well as the unfavorable consequences that may occur. We begin the study of decision analysis by considering problems having reasonably few decision alternatives and reasonably few possible future events.
Analysis, Decision, Decision analysis, Probabil, Prob ability
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