How to cite the R package partition
partition is a popular R package that is available at https://cran.r-project.org/web/packages/partition/index.html. By citing R packages in your paper you lay the grounds for others to be able to reproduce your analysis and secondly you are acknowledging the time and work people have spent creating the package.
APA citation
Formatted according to the APA Publication Manual 7th edition. Simply copy it to the References page as is.
The minimal requirement is to cite the R package in text along with the version number. Additionally, you can include the reference list entry the authors of the partition package have suggested.
Example of an in-text citation
Analysis of the data was done using the partition package (v0.1.3; Millstein et al., 2020).
Reference list entry
Millstein, J., Battaglin, F., Barrett, M., Cao, S., Zhang, W., Stintzing, S., Heinemann, V., & Lenz, H.-J. (2020). Partition: a surjective mapping approach for dimensionality reduction. Bioinformatics, 36(3), 676–681.
Vancouver citation
Formatted according to Vancouver style. Simply copy it to the references section as is.
Example of an in-text citation
Analysis of the data was done using the partition package v0.1.3 (1).
Reference list entry
1.Millstein J, Battaglin F, Barrett M, Cao S, Zhang W, Stintzing S, et al. Partition: a surjective mapping approach for dimensionality reduction. Bioinformatics. 2020 Feb 1;36(3):676–81.
BibTeX
Reference entry in BibTeX format. Simply copy it to your favorite citation manager.
@ARTICLE{Millstein2020-fy,
title = "Partition: a surjective mapping approach for dimensionality
reduction",
author = "Millstein, Joshua and Battaglin, Francesca and Barrett, Malcolm
and Cao, Shu and Zhang, Wu and Stintzing, Sebastian and
Heinemann, Volker and Lenz, Heinz-Josef",
abstract = "Abstract Motivation Large amounts of information generated by
genomic technologies are accompanied by statistical and
computational challenges due to redundancy, badly behaved data
and noise. Dimensionality reduction (DR) methods have been
developed to mitigate these challenges. However, many approaches
are not scalable to large dimensions or result in excessive
information loss. Results The proposed approach partitions data
into subsets of related features and summarizes each into one
and only one new feature, thus defining a surjective mapping. A
constraint on information loss determines the size of the
reduced dataset. Simulation studies demonstrate that when
multiple related features are associated with a response, this
approach can substantially increase the number of true
associations detected as compared to principal components
analysis, non-negative matrix factorization or no DR. This
increase in true discoveries is explained both by a reduced
multiple-testing challenge and a reduction in extraneous noise.
In an application to real data collected from metastatic
colorectal cancer tumors, more associations between gene
expression features and progression free survival and response
to treatment were detected in the reduced than in the full
untransformed dataset. Availability and implementation Freely
available R package from CRAN,
https://cran.r-project.org/package=partition. Supplementary
information Supplementary data are available at Bioinformatics
online.",
journal = "Bioinformatics",
publisher = "Oxford University Press (OUP)",
volume = 36,
number = 3,
pages = "676--681",
month = feb,
year = 2020,
url = "http://dx.doi.org/10.1093/bioinformatics/btz661",
copyright = "https://academic.oup.com/journals/pages/open\_access/funder\_policies/chorus/standard\_publication\_model",
language = "en",
issn = "1367-4803, 1460-2059",
doi = "10.1093/bioinformatics/btz661"
}
RIS
Reference entry in RIS format. Simply copy it to your favorite citation manager.
TY - JOUR
AU - Millstein, Joshua
AU - Battaglin, Francesca
AU - Barrett, Malcolm
AU - Cao, Shu
AU - Zhang, Wu
AU - Stintzing, Sebastian
AU - Heinemann, Volker
AU - Lenz, Heinz-Josef
AD - Department of Preventive Medicine, CA 90033, USA; Department of Medicine,
Division of Medical Oncology, Norris Comprehensive Cancer Center, Keck
School of Medicine, University of Southern California, Los Angeles, CA
90033, USA; Clinical and Experimental Oncology Department, Medical
Oncology Unit 1, Veneto Institute of Oncology IOV-IRCCS, Padua 35128,
Italy; Department of Medicine, Division of Medical Oncology, Norris
Comprehensive Cancer Center, Keck School of Medicine, University of
Southern California, Los Angeles, CA 90033, USA; Medical Department,
Division of Oncology and Hematology, Charité Universitaetsmedizin Berlin,
Berlin 10117, Germany; Department of Medicine III, University Hospital
Munich, Munich 80336, Germany
TI - Partition: a surjective mapping approach for dimensionality reduction
T2 - Bioinformatics
VL - 36
IS - 3
SP - 676-681
PY - 2020
DA - 2020/2/1
PB - Oxford University Press (OUP)
AB - Abstract Motivation Large amounts of information generated by genomic
technologies are accompanied by statistical and computational challenges
due to redundancy, badly behaved data and noise. Dimensionality reduction
(DR) methods have been developed to mitigate these challenges. However,
many approaches are not scalable to large dimensions or result in
excessive information loss. Results The proposed approach partitions data
into subsets of related features and summarizes each into one and only one
new feature, thus defining a surjective mapping. A constraint on
information loss determines the size of the reduced dataset. Simulation
studies demonstrate that when multiple related features are associated
with a response, this approach can substantially increase the number of
true associations detected as compared to principal components analysis,
non-negative matrix factorization or no DR. This increase in true
discoveries is explained both by a reduced multiple-testing challenge and
a reduction in extraneous noise. In an application to real data collected
from metastatic colorectal cancer tumors, more associations between gene
expression features and progression free survival and response to
treatment were detected in the reduced than in the full untransformed
dataset. Availability and implementation Freely available R package from
CRAN, https://cran.r-project.org/package=partition. Supplementary
information Supplementary data are available at Bioinformatics online.
SN - 1367-4803
DO - 10.1093/bioinformatics/btz661
UR - http://dx.doi.org/10.1093/bioinformatics/btz661
ER -
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partition R package release history
| Version | Release date |
|---|---|
| 0.1.2 | 2020-05-24 |
| 0.1.1 | 2019-12-12 |
| 0.1.0 | 2019-05-17 |