R Dataset / Package robustbase / pulpfiber
On this R-data statistics page, you will find information about the pulpfiber data set which pertains to Pulp Fiber and Paper Data. The pulpfiber data set is found in the robustbase R package. You can load the pulpfiber data set in R by issuing the following command at the console data("pulpfiber"). This will load the data into a variable called pulpfiber. If R says the pulpfiber data set is not found, you can try installing the package by issuing this command install.packages("robustbase") and then attempt to reload the data with the library() command. If you need to download R, you can go to the R project website. You can download a CSV (comma separated values) version of the pulpfiber R data set. The size of this file is about 3,149 bytes.
Pulp Fiber and Paper Data
Description
Measurements of aspects pulp fibers and the paper produced from them. Four properties of each are measured in sixty-two samples.
Usage
data(pulpfiber)
Format
A data frame with 62 observations on the following 8 variables.
X1
-
numeric vector of arithmetic fiber length
X2
-
numeric vector of long fiber fraction
X3
-
numeric vector of fine fiber fraction
X4
-
numeric vector of zero span tensile
Y1
-
numeric vector of breaking length
Y2
-
numeric vector of elastic modulus
Y3
-
numeric vector of stress at failure
Y4
-
numeric vector of burst strength
Details
Cited from the reference article: The dataset contains measurements of properties of pulp fibers and the paper made from them. The aim is to investigate relations between pulp fiber properties and the resulting paper properties. The dataset contains n = 62 measurements of the following four pulp fiber characteristics: arithmetic fiber length, long fiber fraction, fine fiber fraction, and zero span tensile. The four paper properties that have been measured are breaking length, elastic modulus, stress at failure, and burst strength.
The goal is to predict the q = 4 paper properties from the p = 4 fiber characteristics.
Author(s)
port to R and this help page: Martin Maechler
Source
Rousseeuw, P. J., Van Aelst, S., Van Driessen, K., and Agulló, J. (2004) Robust multivariate regression; Technometrics 46, 293–305.
http://users.ugent.be/~svaelst/data/pulpfiber.txt
References
Lee, J. (1992) Relationships Between Properties of Pulp-Fibre and Paper, unpublished doctoral thesis, U. Toronto, Faculty of Forestry.
Examples
data(pulpfiber) str(pulpfiber)pairs(pulpfiber, gap=.1) ## 2 blocks of 4 .. c1 <- cov(pulpfiber) cR <- covMcd(pulpfiber) ## how different are they: The robust estimate has more clear high correlations: symnum(cov2cor(c1)) symnum(cov2cor(cR$cov))
Dataset imported from https://www.r-project.org.