Book contents
- Morphological Diversity and Linguistic Cognition
- Morphological Diversity and Linguistic Cognition
- Copyright page
- Contents
- Figures
- Tables
- Contributors
- Preface
- Abbreviations
- 1 At the Intersection of Cognitive Processes and Linguistic Diversity
- Part I In What Ways Is Language Processing Tuned to the Morphological Structure of a Language?
- Part II What Role Does Cue Informativity Play in Learning and How the Lexicon Evolves Over Time?
- Part III How Do System-Level Principles of Morphological Organization Emerge?
- 8 Morphology Gets More and More Complex, Unless It Doesn’t
- 9 Network Structure and Inflection Class Predictability: Modeling the Emergence of Marginal Detraction
- 10 Rule Combination, Potentiation, Affix Telescoping
- References
- Language Index
- General Index
9 - Network Structure and Inflection Class Predictability: Modeling the Emergence of Marginal Detraction
from Part III - How Do System-Level Principles of Morphological Organization Emerge?
Published online by Cambridge University Press: 19 May 2022
- Morphological Diversity and Linguistic Cognition
- Morphological Diversity and Linguistic Cognition
- Copyright page
- Contents
- Figures
- Tables
- Contributors
- Preface
- Abbreviations
- 1 At the Intersection of Cognitive Processes and Linguistic Diversity
- Part I In What Ways Is Language Processing Tuned to the Morphological Structure of a Language?
- Part II What Role Does Cue Informativity Play in Learning and How the Lexicon Evolves Over Time?
- Part III How Do System-Level Principles of Morphological Organization Emerge?
- 8 Morphology Gets More and More Complex, Unless It Doesn’t
- 9 Network Structure and Inflection Class Predictability: Modeling the Emergence of Marginal Detraction
- 10 Rule Combination, Potentiation, Affix Telescoping
- References
- Language Index
- General Index
Summary
This paper examines the emergence of a pattern that Stump and Finkel () dub Marginal Detraction: a tendency in inflection class systems for low type frequency (i.e., irregular) classes to disproportionately detract from the predictability of regular classes. We ask: What factors lead to the emergence (and sometimes non-emergence) of Marginal Detraction? We use an iterated agent-based Bayesian learning model to simulate the conditions for analogical restructuring of inflection classes over time. Input to the model consists of artificial inflection class systems that vary in how the classes overlap — their network structure. We find that network properties predict whether the Marginal Detraction distribution emerges within the model. We conclude that languagespecific network properties shape local interactions among words and thereby likely play a significant role in analogical inflection class restructuring and the emergence (or non-emergence) of global properties of inflectional systems.
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- Morphological Diversity and Linguistic Cognition , pp. 247 - 281Publisher: Cambridge University PressPrint publication year: 2022
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