Tight upper bounds for the expected loss of the DEBA (Deterministic-Elimination-By-Aspects) lexicographic selection heuristic are obtained for the case of an additive separable utility function with unknown non-negative, non-increasing attribute weights for numbers of alternatives and attributes as large as 10 under two probabilistic models: one in which attributes are assumed to be independent Bernouilli random variables and another one with positive inter-attribute correlation. The upper bounds improve substantially previous bounds and extend significantly the cases in which a good performance of DEBA can be guaranteed under the assumed cognitive limitations
We analyze the problem of sequential probability assignment for binary outcomes with side informatio...
We introduce probabilistic lexicographic preference trees (or PrLPTs for short). We show that they o...
This paper is dedicated to a cautious learning methodology for predicting preferences between altern...
Tight upper bounds for the expected loss of the DEBA (Deterministic-Elimination-By-Aspects) lexicogr...
Tight upper bounds for the expected loss of the DEBA (Deterministic-Elimination-By-Aspects) lexicogr...
Several studies have reported high performance of simple decision heuristics in multi-attribute deci...
Several studies have reported high performance of simple decision heuristics multi-attribute decisio...
Several studies have reported high performance of simple decision heuristics in multi-attribute deci...
Simple heuristics, such as deterministic elimination by aspects (DEBA) and equal weighting of attrib...
Given the difficulties people experience in making trade-offs, what are the consequences of using si...
International audienceThe paper studies the behaviour of selection algorithms that are based on dich...
This paper develops upper and lower bounds for the probability of Boolean expressions by treating mu...
An important problem in descriptive and prescriptive research in decision making is to identify “reg...
Summary. Association rules for objects with quantitative attributes require the discretization of th...
We consider the elicitation of incomplete preference information for the additive utility model in t...
We analyze the problem of sequential probability assignment for binary outcomes with side informatio...
We introduce probabilistic lexicographic preference trees (or PrLPTs for short). We show that they o...
This paper is dedicated to a cautious learning methodology for predicting preferences between altern...
Tight upper bounds for the expected loss of the DEBA (Deterministic-Elimination-By-Aspects) lexicogr...
Tight upper bounds for the expected loss of the DEBA (Deterministic-Elimination-By-Aspects) lexicogr...
Several studies have reported high performance of simple decision heuristics in multi-attribute deci...
Several studies have reported high performance of simple decision heuristics multi-attribute decisio...
Several studies have reported high performance of simple decision heuristics in multi-attribute deci...
Simple heuristics, such as deterministic elimination by aspects (DEBA) and equal weighting of attrib...
Given the difficulties people experience in making trade-offs, what are the consequences of using si...
International audienceThe paper studies the behaviour of selection algorithms that are based on dich...
This paper develops upper and lower bounds for the probability of Boolean expressions by treating mu...
An important problem in descriptive and prescriptive research in decision making is to identify “reg...
Summary. Association rules for objects with quantitative attributes require the discretization of th...
We consider the elicitation of incomplete preference information for the additive utility model in t...
We analyze the problem of sequential probability assignment for binary outcomes with side informatio...
We introduce probabilistic lexicographic preference trees (or PrLPTs for short). We show that they o...
This paper is dedicated to a cautious learning methodology for predicting preferences between altern...