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news:2024:05:01_1714575116 [2024/05/01 16:52] – Seraina Nadig | news:2024:05:01_1714575116 [2024/05/01 16:53] (current) – Seraina Nadig | ||
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==== Information on the event ==== | ==== Information on the event ==== | ||
**Date:** Wednesday, 15 May 2024 (14: | **Date:** Wednesday, 15 May 2024 (14: | ||
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**Speaker: | **Speaker: | ||
**Registration by:** 10 May 2024\\ | **Registration by:** 10 May 2024\\ | ||
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<WRAP colsmall> | <WRAP colsmall> | ||
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- | ===LiRI is inviting to a statistics workshop about Ordinal | + | ===LiRI is inviting to a statistics workshop about ordinal |
Ordinal data are common in linguistic research (for example in questionnaires). In this workshop, we will learn how to analyse ordinal data using ordinal regression. We will discuss the basics of ordinal regression method, how to fit an ordinal model, how to visualise and interpret your model output. We will further discuss an approach to check model assumptions (using surrogate residuals) as well as how to deal with assumptions violations (e.g. proportional odds). | Ordinal data are common in linguistic research (for example in questionnaires). In this workshop, we will learn how to analyse ordinal data using ordinal regression. We will discuss the basics of ordinal regression method, how to fit an ordinal model, how to visualise and interpret your model output. We will further discuss an approach to check model assumptions (using surrogate residuals) as well as how to deal with assumptions violations (e.g. proportional odds). |