A Flexible Bayesian Multivariate Ordinal Regression Model for Language Sample Scale Data

Abstract Number:

1733 

Submission Type:

Contributed Abstract 

Contributed Abstract Type:

Poster 

Participants:

Fandi Chang (1), Eloise Kaizar (2)

Institutions:

(1) N/A, N/A, (2) The Ohio State University, N/A

Co-Author:

Eloise Kaizar  
The Ohio State University

First Author:

Fandi Chang  
N/A

Presenting Author:

Fandi Chang  
N/A

Abstract Text:

One common type of outcome in Language Sample Analysis (LSA) is the sum of ordinal variables, which can be difficult to model. Classical approaches often assume outcomes are independent with additional distributional assumptions. Common choices include linear regression, which assumes outcomes are continuous, and logistic regression, which assumes outcomes follow a binomial distribution. However, linear regression assumes equal intervals between outcome categories, while logistic regression ignores the dependence among ordinal outcomes. Both models may fail to reflect the inherent ordering and differences in the data. Therefore, we proposed a variation of a cumulative ordinal model. Extra flexibility was introduced by allowing the probit link function to have a covariate-specific standard deviation. Additionally, we adopted a Bayesian and hierarchical framework that facilitates parameter estimation and enables direct probabilistic inference about parameters of interest. The proposed model improved fit over logistic and linear regressions on a LSA dataset collected from a study to understand how cognitive and language challenges interfere with expository abilities.

Keywords:

Bayesian|Ordinal Regression|Scale Data| | |

Sponsors:

Section on Bayesian Statistical Science

Tracks:

Applications in Applied Sciences

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