Discussion of Jost et al. (2019): Input complexity affects long-term retention of statistically learned regularities in an artificial language learning task

Input complexity affects long-term
retention of statistically learned
regularities in an artificial
language learning task
Ethan Jost, Katherine Brill-Schuetz, Kara Morgan-Short
and Morten H. Christiansen
2019
Frontiers in Human Neuroscience
Input complexity affects long-term
retention of statistically learned
regularities in an artificial
language learning task
Ethan Jost, Katherine Brill-Schuetz, Kara Morgan-Short
and Morten H. Christiansen
2019
Frontiers in Human Neuroscience
Statistical learning
• Latent distributional properties in a disorganised environment
Statistical learning
• Latent distributional properties in a disorganised environment
• Very early development in humans (Kirkham et al., 2002)
• Shown by other animals (Hauser et al., 2001)
• Uses in statistics and cognitive sciences (Louwerse & Connell, 2011)
Statistical learning
• Latent distributional properties in a disorganised environment
• Very early development in humans (Kirkham et al., 2002)
• Shown by other animals (Hauser et al., 2001)
• Uses in statistics and cognitive sciences (Louwerse & Connell, 2011)
• Relatively implicit and unconscious (cf. textbook instruction)
Statistical learning
• Latent distributional properties in a disorganised environment
• Very early development in humans (Kirkham et al., 2002)
• Shown by other animals (Hauser et al., 2001)
• Uses in statistics and cognitive sciences (Louwerse & Connell, 2011)
• Relatively implicit and unconscious (cf. textbook instruction)
• SL might redress the poverty of the stimulus and indeed convey an
advantage to children during language development (Newport, 1990)
Consolidation and retention
• Not so many studies
• Some studies not using linguistic stimuli
Consolidation and retention
• Not so many studies
• Some studies not using linguistic stimuli
• Longitudinal testing
• Weeks (Jost et al., 2019)
Consolidation and retention
• Not so many studies
• Some studies not using linguistic stimuli
• Longitudinal testing
• Weeks (Jost et al., 2019)
• Months (Morgan-Short et al., 2012)
• Limitation: great degree of practice obscuring effect of exposure
Consolidation and retention
• Not so many studies
• Some studies not using linguistic stimuli
• Longitudinal testing
• Weeks (Jost et al., 2019)
• Months (Kara Morgan-Short et al., 2012)
• Limitation: great degree of practice obscuring effect of exposure
• One year (Kobor et al., 2017; Romano et al., 2010; Smalle et al., 2017)
• Limitations of Kobor et al. (2017) and Romano et al. (2010): no language, no meaning,
simple statistical structure in stimuli, no generalisation of regularities to new items
Consolidation and retention
• Not so many studies
• Some studies not using linguistic stimuli
• Longitudinal testing
• Weeks (Jost et al., 2019)
• Months (Morgan-Short et al., 2012)
• Limitation: great degree of practice obscuring effect of exposure
• One year (Kobor et al., 2017; Romano et al., 2010; Smalle et al., 2017)
• Limitations of Kobor et al. (2017) and Romano et al. (2010): no language, no meaning,
simple statistical structure in stimuli, no generalisation of regularities to new items
• 17 years (Mitchell, 2006)
Consolidation and retention
• Sleep (reviewed by Jost et al., 2019)
Consolidation and retention
• Sleep (reviewed by Jost et al., 2019)
• Spaced repetition (reviewed by Ullman & Lovelett, 2018)
Consolidation and retention
• Sleep (reviewed by Jost et al., 2019)
• Spaced repetition (reviewed by Ullman & Lovelett, 2018)
• Retrieval practice (reviewed by Ullman & Lovelett, 2018)
Consolidation and retention
• Sleep (reviewed by Jost et al., 2019)
• Spaced repetition (reviewed by Ullman & Lovelett, 2018)
• Retrieval practice (reviewed by Ullman & Lovelett, 2018)
• …
Consolidation and retention
• Sleep (reviewed by Jost et al., 2019)
• Spaced repetition (reviewed by Ullman & Lovelett, 2018)
• Retrieval practice (reviewed by Ullman & Lovelett, 2018)
• Incremental stimulus complexity (Poletiek et al., 2018)
• Primary direction of each of the three clusters (10 seconds):
https://www.jspsych.org/6.3/demos/jspsych-rdk-demo3.html
Discussion of Jost et al. (2019): Input complexity affects long-term retention of statistically learned regularities in an artificial language learning task
Discussion of Jost et al. (2019): Input complexity affects long-term retention of statistically learned regularities in an artificial language learning task
i
3
5
6
4
9
7
5
8
5
6
3
8
7
4
2
n
• M = ?
• M = 6.93
• M = 6.93
• Remember the order or the frequency of the numbers?
• M = 6.93
• Remember the order or the frequency of the numbers?
w 3 5 6 4 9
7 5 8 5 6
3 8 7 4 2 n
Consolidation and retention
• Sleep (reviewed by Jost et al., 2019)
• Spaced repetition (reviewed by Ullman & Lovelett, 2018)
• Retrieval practice (reviewed by Ullman & Lovelett, 2018)
• Incremental stimulus complexity (Poletiek et al., 2018)
• Simplication of the task
• Exogenous (e.g., by researchers)
• Endogenous (by oneself)
• Chunking
Chunking
‘A mechanism by which distributional regularities are used to form
discrete representations of an input’ (Isbilen et al., 2022)
Chunking
Smalle et al. (2018)
• Hebb-repetition task: ‘From a total of 36 different drawings, nine
drawings were associated with each set of three CV-pools. Of these nine
drawings, three drawings were associated with the pool used to
generate the filler sequences; another three drawings were associated
with the first Hebb sequence and the remaining three drawings were
associated with the second Hebb sequence.’
• Findings: children exhibited better retention than adults after 1 year.
• Limitations: no test of input complexity, no generalisation to novel items
Chunking
Jost et al. (2019): ‘Rapidly recoding and compressing information
by chunking may allow learners to more efficiently process input,
and to do so at higher levels of abstraction. In fact, stronger
learners may show a decreased reliance on surface-level
fragment information when tested due to the fact that they have
already used that information to internalize the higher-order
regularities, and no longer rely on them as a crutch.’
Jost et al. (2019)
• Retention: 2-week delay
• Hypothesis: overall retention
• Input complexity
• Hypothesis: greater complexity  impaired learning
• Chunking
• Hypothesis: impaired learners  less reliance on grammatical regularities 
more reliance on fragment information, or chunk strength
• Smaller effect of chunk strength in Session 2
Jost et al. (2019)
• Implicit instruction: training input contained grammatical regularities
but participants’ attention was not explicitly drawn to the regularities.
• Simple training group (N = 23): 80% simple, 20% complex input
• Complex training group (N = 24): 80% complex, 20% simple input
Jost et al. (2019)
Jost et al. (2019)
Jost et al. (2019)
Results
Results
Results
Results
Observations on the statistics
• Participants and items. No random slopes  Violation of
independence of observations (Brauer & Curtin, 2018)
• Somewhat lax workflow of tests: number could have been smaller
• Correlations
• Calculation of p values was somewhat anti-conservative
(see Luke, 2017): namely, model comparison instead of Satterthwaite
or Kenward-Roger approximation for degrees of freedom
Conclusions
• Complexity of stimuli impaired retention
• Complex training group relied more on surface-level fragment
information (chunk strength) than simple training group
1 von 55

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Discussion of Jost et al. (2019): Input complexity affects long-term retention of statistically learned regularities in an artificial language learning task

  • 1. Input complexity affects long-term retention of statistically learned regularities in an artificial language learning task Ethan Jost, Katherine Brill-Schuetz, Kara Morgan-Short and Morten H. Christiansen 2019 Frontiers in Human Neuroscience
  • 2. Input complexity affects long-term retention of statistically learned regularities in an artificial language learning task Ethan Jost, Katherine Brill-Schuetz, Kara Morgan-Short and Morten H. Christiansen 2019 Frontiers in Human Neuroscience
  • 3. Statistical learning • Latent distributional properties in a disorganised environment
  • 4. Statistical learning • Latent distributional properties in a disorganised environment • Very early development in humans (Kirkham et al., 2002) • Shown by other animals (Hauser et al., 2001) • Uses in statistics and cognitive sciences (Louwerse & Connell, 2011)
  • 5. Statistical learning • Latent distributional properties in a disorganised environment • Very early development in humans (Kirkham et al., 2002) • Shown by other animals (Hauser et al., 2001) • Uses in statistics and cognitive sciences (Louwerse & Connell, 2011) • Relatively implicit and unconscious (cf. textbook instruction)
  • 6. Statistical learning • Latent distributional properties in a disorganised environment • Very early development in humans (Kirkham et al., 2002) • Shown by other animals (Hauser et al., 2001) • Uses in statistics and cognitive sciences (Louwerse & Connell, 2011) • Relatively implicit and unconscious (cf. textbook instruction) • SL might redress the poverty of the stimulus and indeed convey an advantage to children during language development (Newport, 1990)
  • 7. Consolidation and retention • Not so many studies • Some studies not using linguistic stimuli
  • 8. Consolidation and retention • Not so many studies • Some studies not using linguistic stimuli • Longitudinal testing • Weeks (Jost et al., 2019)
  • 9. Consolidation and retention • Not so many studies • Some studies not using linguistic stimuli • Longitudinal testing • Weeks (Jost et al., 2019) • Months (Morgan-Short et al., 2012) • Limitation: great degree of practice obscuring effect of exposure
  • 10. Consolidation and retention • Not so many studies • Some studies not using linguistic stimuli • Longitudinal testing • Weeks (Jost et al., 2019) • Months (Kara Morgan-Short et al., 2012) • Limitation: great degree of practice obscuring effect of exposure • One year (Kobor et al., 2017; Romano et al., 2010; Smalle et al., 2017) • Limitations of Kobor et al. (2017) and Romano et al. (2010): no language, no meaning, simple statistical structure in stimuli, no generalisation of regularities to new items
  • 11. Consolidation and retention • Not so many studies • Some studies not using linguistic stimuli • Longitudinal testing • Weeks (Jost et al., 2019) • Months (Morgan-Short et al., 2012) • Limitation: great degree of practice obscuring effect of exposure • One year (Kobor et al., 2017; Romano et al., 2010; Smalle et al., 2017) • Limitations of Kobor et al. (2017) and Romano et al. (2010): no language, no meaning, simple statistical structure in stimuli, no generalisation of regularities to new items • 17 years (Mitchell, 2006)
  • 12. Consolidation and retention • Sleep (reviewed by Jost et al., 2019)
  • 13. Consolidation and retention • Sleep (reviewed by Jost et al., 2019) • Spaced repetition (reviewed by Ullman & Lovelett, 2018)
  • 14. Consolidation and retention • Sleep (reviewed by Jost et al., 2019) • Spaced repetition (reviewed by Ullman & Lovelett, 2018) • Retrieval practice (reviewed by Ullman & Lovelett, 2018)
  • 15. Consolidation and retention • Sleep (reviewed by Jost et al., 2019) • Spaced repetition (reviewed by Ullman & Lovelett, 2018) • Retrieval practice (reviewed by Ullman & Lovelett, 2018) • …
  • 16. Consolidation and retention • Sleep (reviewed by Jost et al., 2019) • Spaced repetition (reviewed by Ullman & Lovelett, 2018) • Retrieval practice (reviewed by Ullman & Lovelett, 2018) • Incremental stimulus complexity (Poletiek et al., 2018)
  • 17. • Primary direction of each of the three clusters (10 seconds): https://www.jspsych.org/6.3/demos/jspsych-rdk-demo3.html
  • 20. i
  • 21. 3
  • 22. 5
  • 23. 6
  • 24. 4
  • 25. 9
  • 26. 7
  • 27. 5
  • 28. 8
  • 29. 5
  • 30. 6
  • 31. 3
  • 32. 8
  • 33. 7
  • 34. 4
  • 35. 2
  • 36. n
  • 37. • M = ?
  • 38. • M = 6.93
  • 39. • M = 6.93 • Remember the order or the frequency of the numbers?
  • 40. • M = 6.93 • Remember the order or the frequency of the numbers? w 3 5 6 4 9 7 5 8 5 6 3 8 7 4 2 n
  • 41. Consolidation and retention • Sleep (reviewed by Jost et al., 2019) • Spaced repetition (reviewed by Ullman & Lovelett, 2018) • Retrieval practice (reviewed by Ullman & Lovelett, 2018) • Incremental stimulus complexity (Poletiek et al., 2018) • Simplication of the task • Exogenous (e.g., by researchers) • Endogenous (by oneself) • Chunking
  • 42. Chunking ‘A mechanism by which distributional regularities are used to form discrete representations of an input’ (Isbilen et al., 2022)
  • 43. Chunking Smalle et al. (2018) • Hebb-repetition task: ‘From a total of 36 different drawings, nine drawings were associated with each set of three CV-pools. Of these nine drawings, three drawings were associated with the pool used to generate the filler sequences; another three drawings were associated with the first Hebb sequence and the remaining three drawings were associated with the second Hebb sequence.’ • Findings: children exhibited better retention than adults after 1 year. • Limitations: no test of input complexity, no generalisation to novel items
  • 44. Chunking Jost et al. (2019): ‘Rapidly recoding and compressing information by chunking may allow learners to more efficiently process input, and to do so at higher levels of abstraction. In fact, stronger learners may show a decreased reliance on surface-level fragment information when tested due to the fact that they have already used that information to internalize the higher-order regularities, and no longer rely on them as a crutch.’
  • 45. Jost et al. (2019) • Retention: 2-week delay • Hypothesis: overall retention • Input complexity • Hypothesis: greater complexity  impaired learning • Chunking • Hypothesis: impaired learners  less reliance on grammatical regularities  more reliance on fragment information, or chunk strength • Smaller effect of chunk strength in Session 2
  • 46. Jost et al. (2019) • Implicit instruction: training input contained grammatical regularities but participants’ attention was not explicitly drawn to the regularities. • Simple training group (N = 23): 80% simple, 20% complex input • Complex training group (N = 24): 80% complex, 20% simple input
  • 47. Jost et al. (2019)
  • 48. Jost et al. (2019)
  • 49. Jost et al. (2019)
  • 54. Observations on the statistics • Participants and items. No random slopes  Violation of independence of observations (Brauer & Curtin, 2018) • Somewhat lax workflow of tests: number could have been smaller • Correlations • Calculation of p values was somewhat anti-conservative (see Luke, 2017): namely, model comparison instead of Satterthwaite or Kenward-Roger approximation for degrees of freedom
  • 55. Conclusions • Complexity of stimuli impaired retention • Complex training group relied more on surface-level fragment information (chunk strength) than simple training group