By building knowledge in a deliberate and systematic manner, we can gain a more complete understanding of a given research area relevant to corpus linguists. Specifically, empirically informed hypotheses (i.e., hypotheses that result from a synthesis of findings from all relevant prior studies) play a key role in this endeavor in that they enable us to test to what extent generalizations from previous research are consistent with our results, or if we need to make adjustments to our existing knowledge or theory. In this Element, we aim to provide a practical and accessible introduction to select statistical methods for evaluating such empirically informed hypotheses. In particular, we illustrate techniques from the broader null-hypothesis significance testing framework (e.g., equivalence testing), and structural equation modeling framework (e.g., measured variable path analysis), with the goal of encouraging knowledge building in a more principled and systematic manner in corpus linguistics.
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1. Introduction and definition of key concepts; 2. Cumulative knowledge accrual and theory building: the role of empirically informed hypotheses; 3. Testing informed directional hypotheses; 4. Testing informed hypotheses of non-zero mean differences; 5. Testing informed hypotheses of similarity using equivalence testing; 6. Testing informed hypotheses of similarity using mean and covariance structure models; 7. Testing informed hypotheses of specific relations among variables; 8. Summing up and looking ahead; 9. References.
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This Element provides corpus linguists with tools for building knowledge cumulatively with the help of empirically informed hypotheses.
Produktdetaljer
ISBN
9781009660914
Publisert
2026-08-31
Utgiver
Cambridge University Press
Aldersnivå
UP, 05
Språk
Product language
Engelsk
Format
Product format
Heftet
Antall sider
75