An application of Measurement error evaluation using latent class analysis
author
Abstract:
Latent class analysis (LCA) is a method of evaluating non sampling errors, especially measurement error in categorical data. Biemer (2011) introduced four latent class modeling approaches: probability model parameterization, log linear model, modified path model, and graphical model using path diagrams. These models are interchangeable. Latent class probability models express likelihood of cross-classification tables in term of conditional and marginal probabilities for each cell. In this approach model parameters are estimated using EM algorithm. To test latent class model chi-square statistic is used as a measure of goodness-of-fit. In this paper we use LCA and data from a small-scale survey to estimate misclassification error (as a measurement error) of students who had at least a failing grade as well as misclassification error of students with average grades below 14.
similar resources
An Application of Latent Class Analysis in the Measurement of Falling Among a Community Elderly Population
Purpose: Latent Class Analysis (LCA) is a statistical method for finding subtypes of related cases (latent classes) from multivariate categorical data. LCA is well suited to many health applications where one wishes to identify disease subtypes or diagnostic subcategories. In this paper we demonstrate the utility of LCA for the prediction of falls among community dwelling elderly. Falls among t...
full textA Latent Class Application to the Measurement of Poverty1
1 The author wishes to thank IRISS-C/I at CEPS/INSTEAD (Luxembourg) for its financial and academic support.
full textLatent Class Analysis of Measurement Error in the Consumer Expenditure Survey
Previous research by Tucker et al. (2010), working with the Consumer Expenditure Survey (CE), explores the factor structure of measurement error indicators such as: interview length, extent and type of records used, the monthly patterns of reporting, reporting of income, attempt history information, and response behavior across multiple interviews in a latent class model. Findings from this res...
full textThe Application of Latent Class Analysis on the Measurement of HRM Practices
submitted to the DRUID Summer conference 2003 on Creating, Sharing, and Transferring Knowledge: The role of Geography, Institutions, Organisations. The proposed paper in related to conference themes B and E. Exploiting old and new knowledge in combination in order to generate new knowledge is a key feature in achieving competitive advantage of the firm. The emergence of the knowledgebased econo...
full textan application of fuzzy logic for car insurance underwriting
در ایران بیمه خودرو سهم بزرگی در صنعت بیمه دارد. تعیین حق بیمه مناسب و عادلانه نیازمند طبقه بندی خریداران بیمه نامه براساس خطرات احتمالی آنها است. عوامل ریسکی فراوانی می تواند بر این قیمت گذاری تاثیر بگذارد. طبقه بندی و تعیین میزان تاثیر گذاری هر عامل ریسکی بر قیمت گذاری بیمه خودرو پیچیدگی خاصی دارد. در این پایان نامه سعی در ارائه راهی جدید برای طبقه بندی عوامل ریسکی با استفاده از اصول و روش ها...
Latent Trait Latent Class Analysis of an Eysenck Personality Questionnaire
In this paper two scales of a personality questionnaire, extraversion and neuroticism, are analyzed using a family of latent trait latent class models. The items are responded to in one of three categories: “yes”, “?”, or “no”. The results show that one single measurement model does not suffice in describing the data. More specifically, the meaning of the “?” response category is not invariant ...
full textMy Resources
Journal title
volume 22 issue 1
pages 85- 96
publication date 2017-12
By following a journal you will be notified via email when a new issue of this journal is published.
No Keywords
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023