Information search with situation-specific reward functions
can strongly conflict with the goal of obtaining information for improving payoffs. Two environments with such a conflict were identified through computer optimization. Three subsequent experiments investigated people's search behavior in these environments. Experiments 1 and 2 used a multiple-cue probabilistic category-learning task to convey environmental probabilities. In a subsequent search task subjects could query only a single feature before making a classification decision. The crucial manipulation concerned the search-task reward structure. The payoffs corresponded either to accuracy, with equal rewards associated with the two categories, or to an asymmetric payoff function, with different rewards associated with each category. In Experiment 1, in which learning-task feedback corresponded to the true category, people later preferentially searched the accuracy-maximizing feature, whether or not this would improve monetary rewards. In Experiment 2, an asymmetric reward structure was used during learning. Subjects searched the reward-maximizing feature when asymmetric payoffs were preserved in the search task. However, if search-task payoffs corresponded to accuracy, subjects preferentially searched a feature that was suboptimal for reward and accuracy alike. Importantly, this feature would have been most useful, under the learning-task payoff structure. Experiment 3 found that, if words and numbers are used to convey environmental probabilities, neither reward nor accuracy consistently predicts search. These findings emphasize the necessity of taking into account people's goals and search-and-decision processes during learning, thereby challenging current models of information search.
Year of publication: |
2012
|
---|---|
Authors: | Meder, Bjorn ; Nelson, Jonathan D. |
Published in: |
Judgment and Decision Making. - Society for Judgment and Decision Making, ISSN 1930-2975. - Vol. 7.2012, 2, p. 119-148
|
Publisher: |
Society for Judgment and Decision Making |
Subject: | information search | classification | optimal experimental design | payoffs | decisions from experience |
Saved in:
Saved in favorites
Similar items by subject
-
Not all uncertainty is treated equally: Information search under social and nonsocial uncertainty
Fleischhut, Nadine, (2021)
-
Mehlhorn, Katja, (2014)
-
Decisions from experience : from monetary to medical gambles
Lejarraga, Tomás, (2016)
- More ...