Adaptive Perceptual Learning in Electrocardiography: The Synergy of Passive and Active Classification

Recent research suggests that combining adaptive learning algorithms with perceptual learning (PL) methods can accelerate perceptual classification learning in complex domains (e.g., Mettler & Kellman, 2014). We hypothesized that passive presentation of category exemplars might act synergistically with active adaptive learning to further enhance PL. Passive presentation and active adaptive methods were applied to PL and transfer in a complex real-world domain. Undergraduates learned to interpret real electrocardiogram (ECG) tracings by either: (1) making active classifications and receiving feedback, (2) studying passive presentations of correct classifications, or (3) learning with a combination of initial passive presentations followed by active classification. All conditions showed strong transfer to novel ECGs at posttest and after a one-week delay. Most notably, the combined passive-active condition proved the most effective, efficient, and enjoyable. These results help illuminate the processes by which PL advances and have direct implications for perceptual and adaptive learning technology.

[1]  Shinichi Nakagawa A farewell to Bonferroni: the problems of low statistical power and publication bias , 2004, Behavioral Ecology.

[2]  F. Paas,et al.  Variability of Worked Examples and Transfer of Geometrical Problem-Solving Skills: A Cognitive-Load Approach , 1994 .

[3]  P. Kellman,et al.  Perceptual Learning, Cognition, and Expertise , 2013 .

[4]  R. Boakes,et al.  Passive perceptual learning in relation to wine: short-term recognition and verbal description. , 2009, Quarterly journal of experimental psychology.

[5]  Robert L. Goldstone,et al.  The benefits of interleaved and blocked study: Different tasks benefit from different schedules of study , 2014, Psychonomic Bulletin & Review.

[6]  A. Markman,et al.  Category use and category learning. , 2003, Psychological bulletin.

[7]  Philip J. Kellman,et al.  Adaptive response-time-based category sequencing in perceptual learning , 2014, Vision Research.

[8]  Ji Y. Son,et al.  Perceptual Learning Modules in Mathematics: Enhancing Students' Pattern Recognition, Structure Extraction, and Fluency , 2010, Top. Cogn. Sci..

[9]  S. Derry,et al.  Learning from Examples: Instructional Principles from the Worked Examples Research , 2000 .

[10]  Cornelia S. Große,et al.  How Fading Worked Solution Steps Works – A Cognitive Load Perspective , 2004 .

[11]  Daniel Bodemer,et al.  External and mental referencing of multiple representations , 2006, Comput. Hum. Behav..

[12]  E. Gibson Principles of Perceptual Learning and Development , 1969 .

[13]  H. Simon,et al.  Perception in chess , 1973 .

[14]  Philip J. Kellman,et al.  Applying perceptual and adaptive learning techniques for teaching introductory histopathology , 2013, Journal of pathology informatics.

[15]  Mark R. Wilson,et al.  Exploring the Impact of Expertise, Clinical History, and Visual Search on Electrocardiogram Interpretation , 2014, Medical decision making : an international journal of the Society for Medical Decision Making.

[16]  Margaret M. Recker,et al.  Learning Strategies and Transfer in the Domain of Programming , 1994 .

[17]  Philip J. Kellman,et al.  Improving Adaptive Learning Technology through the Use of Response Times , 2011, CogSci.

[18]  Jeffrey D. Karpicke,et al.  The Power of Testing Memory Basic Research and Implications for Educational Practice , 2006 .

[19]  Ji Yeon Son,et al.  A well-grounded education: the role of perception in science and mathematics , 2008 .

[20]  R. Bjork,et al.  Learning Concepts and Categories , 2008, Psychological science.