2019
DOI: 10.1111/cogs.12737
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Object‐Label‐Order Effect When Learning From an Inconsistent Source

Abstract: Learning in natural environments is often characterized by a degree of inconsistency from an input. These inconsistencies occur, for example, when learning from more than one source, or when the presence of environmental noise distorts incoming information; as a result, the task faced by the learner becomes ambiguous. In this study, we investigate how learners handle such situations. We focus on the setting where a learner receives and processes a sequence of utterances to master associations between objects a… Show more

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Cited by 3 publications
(1 citation statement)
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References 44 publications
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“…Along similar, though not identical, lines, Ma and Komarova (2019) directly compared Object–Label and Label–Object learning (which differ in terms of what is presented first) and found that they had different consequences: Learners who were exposed to the object rather than the label (i.e., Object–Label learning) were better at learning from an inconsistent source. They argued that Object–Label learning and Label–Object learning may be computationally different, with the former involving more frequency boosting (resulting in overmatching) and the latter involving more undermatching.…”
Section: Experiments 1: Learning the Variationmentioning
confidence: 99%
“…Along similar, though not identical, lines, Ma and Komarova (2019) directly compared Object–Label and Label–Object learning (which differ in terms of what is presented first) and found that they had different consequences: Learners who were exposed to the object rather than the label (i.e., Object–Label learning) were better at learning from an inconsistent source. They argued that Object–Label learning and Label–Object learning may be computationally different, with the former involving more frequency boosting (resulting in overmatching) and the latter involving more undermatching.…”
Section: Experiments 1: Learning the Variationmentioning
confidence: 99%