systemfit: A Package for Estimating Systems of Simultaneous Equations in R
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systemfit: A Package for Estimating Systems of Simultaneous Equations in R. / Henningsen, Arne; Hamann, Jeff.
In: Journal of Statistical Software, Vol. 23, No. 4, 2007, p. 1-40.Research output: Contribution to journal › Journal article › Research › peer-review
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TY - JOUR
T1 - systemfit: A Package for Estimating Systems of Simultaneous Equations in R
AU - Henningsen, Arne
AU - Hamann, Jeff
PY - 2007
Y1 - 2007
N2 - Many statistical analyses (e.g., in econometrics, biostatistics and experimental design) are based on models containing systems of structurally related equations. The systemfit package provides the capability to estimate systems of linear equations within the R programming environment. For instance, this package can be used for "ordinary least squares" (OLS), "seemingly unrelated regression" (SUR), and the instrumental variable (IV) methods "two-stage least squares" (2SLS) and "three-stage least squares" (3SLS), where SUR and 3SLS estimations can optionally be iterated. Furthermore, the systemfit package provides tools for several statistical tests. It has been tested on a variety of datasets and its reliability is demonstrated.
AB - Many statistical analyses (e.g., in econometrics, biostatistics and experimental design) are based on models containing systems of structurally related equations. The systemfit package provides the capability to estimate systems of linear equations within the R programming environment. For instance, this package can be used for "ordinary least squares" (OLS), "seemingly unrelated regression" (SUR), and the instrumental variable (IV) methods "two-stage least squares" (2SLS) and "three-stage least squares" (3SLS), where SUR and 3SLS estimations can optionally be iterated. Furthermore, the systemfit package provides tools for several statistical tests. It has been tested on a variety of datasets and its reliability is demonstrated.
M3 - Journal article
VL - 23
SP - 1
EP - 40
JO - Journal of Statistical Software
JF - Journal of Statistical Software
SN - 1548-7660
IS - 4
ER -
ID: 18899445