Are you looking for the best Latent Variable Model? Based on expert reviews, we ranked them. We've listed our top-ranked picks, including the top-selling Latent Variable Model.
We Recommended:
- Routledge
- Loehlin, John C. (Author)
- English (Publication Language)
- 390 Pages - 02/14/2017 (Publication Date) - Routledge (Publisher)
- Hardcover Book
- Bartholomew (Author)
- English (Publication Language)
- 296 Pages - 08/01/2011 (Publication Date) - Wiley (Publisher)
- Amazon Kindle Edition
- English (Publication Language)
- 294 Pages - 04/04/2014 (Publication Date) - Psychology Press (Publisher)
- Hardcover Book
- Loehlin, John C. (Author)
- English (Publication Language)
- 332 Pages - 12/01/2003 (Publication Date) - Routledge (Publisher)
- Hardcover Book
- Rijmen, Frank (Author)
- English (Publication Language)
- 300 Pages - 05/01/2023 (Publication Date) - Chapman and Hall/CRC (Publisher)
- Amazon Kindle Edition
- English (Publication Language)
- 294 Pages - 03/18/2010 (Publication Date) - Springer (Publisher)
- Used Book in Good Condition
- Hagenaars, Jacques A. P. (Author)
- English (Publication Language)
- 80 Pages - 08/09/1993 (Publication Date) - SAGE Publications, Inc (Publisher)
- Used Book in Good Condition
- Bartholomew, D. J. (Author)
- English (Publication Language)
- 232 Pages - 01/03/1999 (Publication Date) - Hodder Education Publishers (Publisher)
- Amazon Kindle Edition
- Montfort (Author)
- English (Publication Language)
- 316 Pages - 05/17/2010 (Publication Date) - Springer (Publisher)
- Hardcover Book
- Everett, B. (Author)
- English (Publication Language)
- 108 Pages - 09/06/1984 (Publication Date) - Springer (Publisher)
- Hardcover Book
- Anders Skrondal (Author)
- English (Publication Language)
- 512 Pages - 05/06/2004 (Publication Date) - Chapman and Hall/CRC (Publisher)
- Routledge
- Beaujean, A. Alexander (Author)
- English (Publication Language)
- 218 Pages - 07/02/2014 (Publication Date) - Routledge (Publisher)
- Amazon Kindle Edition
- English (Publication Language)
- 912 Pages - 08/11/2011 (Publication Date) - North Holland (Publisher)
- Used Book in Good Condition
- Hancock, Gregory R. (Author)
- English (Publication Language)
- 384 Pages - 11/01/2007 (Publication Date) - Information Age Publishing (Publisher)
- Amazon Kindle Edition
- English (Publication Language)
- 294 Pages - 04/01/2015 (Publication Date) - Springer (Publisher)
- LI YUN XIAN (Author)
- Chinese (Publication Language)
- 07/01/2013 (Publication Date) - Southwest Jiaotong University (Publisher)
- Used Book in Good Condition
- Loehlin, John C. (Author)
- English (Publication Language)
- 304 Pages - 02/03/1992 (Publication Date) - Psychology Press (Publisher)
- Amazon Kindle Edition
- Meneghetti, N. (Author)
- English (Publication Language)
- 22 Pages - 06/10/2013 (Publication Date) - Elsevier (Publisher)
- Hardcover Book
- Loehlin, John C (Author)
- English (Publication Language)
- 273 Pages - 01/03/1987 (Publication Date) - L. Erlbaum Associates (Publisher)
- Used Book in Good Condition
- English (Publication Language)
- 272 Pages - 12/06/2012 (Publication Date) - Routledge (Publisher)
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FAQ:
Q: What is the definition of latent variable?
A: A latent variable is a variable that cannot be measured directly, but is hypothesized to underlie the observed variables. An example of a latent variable is a factor in factor analysis.
Q: How does the latent class model work in statistics?
A: In statistics, a latent class model (LCM) relates a set of observed (usually discrete) multivariate variables to a set of latent variables. It is a type of latent variable model. It is called a latent class model because the latent variable is discrete.
Q: What is latent class segmentation?
A: Latent Class (LC) segmentation operates under the assumption that there are groups underlying the data that give rise to segments. These groups are “latent” or not directly observable.