Analyzing Real Estate Data Problems Using the Gibbs Sampler
Real estate data are often characterized by data irregularities: missing data, censoring or truncation, measurement error, etc. Practitioners often discard missing- or censored-data cases and ignore measurement error. We argue here that an attractive remedy for these irregularity problems is simulation-based model fitting using the Gibbs sampler. The style of the paper is primarily pedagogic, employing a simple illustration to convey the essential ideas, unobscured by implementation complications. Focusing on the missing-data problem, we show dramatic improvement in inference by retaining rather than deleting cases of partially observed data. We also detail Gibbs-sampler usage for other data problems. Copyright American Real Estate and Urban Economics Association.
Year of publication: |
1998
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Authors: | Knight, John R. ; Sirmans, C.F. ; Gelfand, Alan E. ; Ghosh, Sujit K. |
Published in: |
Real Estate Economics. - American Real Estate and Urban Economics Association - AREUEA. - Vol. 26.1998, 3, p. 469-492
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Publisher: |
American Real Estate and Urban Economics Association - AREUEA |
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