Visible to the public Instance-based learning in dynamic decision makingConflict Detection Enabled

TitleInstance-based learning in dynamic decision making
Publication TypeJournal Article
Year of Publication2003
AuthorsGonzalez, Cleotilde, Lerch, Javier F, Lebiere, Christian
JournalCognitive Science
Volume27
Pagination591–635
KeywordsArticles of Interest, C3E 2019, cognitive modeling, Cognitive Security, decision making, Dynamic decision making, Instance-based learning, Water purification plant
Abstract

This paper presents a learning theory pertinent to dynamic decision making (DDM) called instance-based learning theory (IBLT). IBLT proposes five learning mechanisms in the context of a decision-making process: instance-based knowledge, recognition-based retrieval, adaptive strategies, necessity-based choice, and feedback updates. IBLT suggests in DDM people learn with the accumulation and refinement of instances, containing the decision-making situation, action, and utility of decisions. As decision makers interact with a dynamic task, they recognize a situation according to its similarity to past instances, adapt their judgment strategies from heuristic-based to instance-based, and refine the accumulated knowledge according to feedback on the result of their actions. The IBLT's learning mechanisms have been implemented in an ACT-R cognitive model. Through a series of experiments, this paper shows how the IBLT's learning mechanisms closely approximate the relative trend magnitude and performance of human data. Although the cognitive model is bounded within the context of a dynamic task, the IBLT is a general theory of decision making applicable to other dynamic environments.

Citation Keygonzalez2003instance