Title of article
Improved classification of mammograms following idealized training
Author/Authors
Hornsby، نويسنده , , Adam N. and Love، نويسنده , , Bradley C.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2014
Pages
5
From page
72
To page
76
Abstract
People often make decisions by stochastically retrieving a small set of relevant memories. This limited retrieval implies that human performance can be improved by training on idealized category distributions (Giguère & Love, 2013). Here, we evaluate whether the benefits of idealized training extend to categorization of real-world stimuli, namely classifying mammograms as normal or tumorous. Participants in the idealized condition were trained exclusively on items that, according to a norming study, were relatively unambiguous. Participants in the actual condition were trained on a representative range of items. Despite being exclusively trained on easy items, idealized-condition participants were more accurate than those in the actual condition when tested on a range of item types. However, idealized participants experienced difficulties when test items were very dissimilar from training cases. The benefits of idealization, attributable to reducing noise arising from cognitive limitations in memory retrieval, suggest ways to improve real-world decision making.
Keywords
Memory retrieval , Mammograms , Categorization , Idealization , Medical diagnosis , Decision Making
Journal title
Journal of Applied Research in Memory and Cognition
Serial Year
2014
Journal title
Journal of Applied Research in Memory and Cognition
Record number
2232044
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