Result for 235EB40908740E68709DDC2DC217F68FD731771D

Query result

Key Value
FileName./usr/lib64/R/library/acepack/help/paths.rds
FileSize116
MD5CE3A14F9966ACBBC0EEA8D41FAB63050
SHA-1235EB40908740E68709DDC2DC217F68FD731771D
SHA-256BBD7F0212088D13DA3B78083BEC65E5578A9D5427907D17B1124EE16C3FD80BF
SSDEEP3:FttVFHIXclg2uUW9tk4lTkBpj2/osARalZd/ln:XtVFosmbt/TkJ8lZ/n
TLSHT1E8B0120AF0179650E99245B0985E3847663CF0F2F7257F5A5E022B281A1434ADEF002F
hashlookup:parent-total1
hashlookup:trust55

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Parents (Total: 1)

The searched file hash is included in 1 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD5771CC327785BB45FBBB21542C21E716B
PackageArchx86_64
PackageDescriptionTwo nonparametric methods for multiple regression transform selection are provided. The first, Alternative Conditional Expectations (ACE), is an algorithm to find the fixed point of maximal correlation, i.e. it finds a set of transformed response variables that maximizes R^2 using smoothing functions [see Breiman, L., and J.H. Friedman. 1985. "Estimating Optimal Transformations for Multiple Regression and Correlation". Journal of the American Statistical Association. 80:580-598. <doi:10.1080/01621459.1985.10478157>]. Also included is the Additivity Variance Stabilization (AVAS) method which works better than ACE when correlation is low [see Tibshirani, R.. 1986. "Estimating Transformations for Regression via Additivity and Variance Stabilization". Journal of the American Statistical Association. 83:394-405. <doi:10.1080/01621459.1988.10478610>]. A good introduction to these two methods is in chapter 16 of Frank Harrel's "Regression Modeling Strategies" in the Springer Series in Statistics.
PackageNameR-acepack
PackageReleaselp153.2.1
PackageVersion1.4.1
SHA-1E2474E1E682E9DF8A7580A2A6220FA92CB0DD4AD
SHA-2566996C27D136849C8116DD12436C28FC292D0AD9487E186D630BD429F011C60D6