How to cite the R package motif
motif is a popular R package that is available at https://cran.r-project.org/web/packages/motif/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 motif package have suggested.
Example of an in-text citation
Analysis of the data was done using the motif package (v0.4.1; Nowosad, 2021).
Reference list entry
Nowosad, J. (2021). Motif: an open-source R tool for pattern-based spatial analysis. Landscape Ecology, 36(1), 29–43.
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 motif package v0.4.1 (1).
Reference list entry
1.Nowosad J. Motif: an open-source R tool for pattern-based spatial analysis. Landsc Ecol. 2021 Jan;36(1):29–43.
BibTeX
Reference entry in BibTeX format. Simply copy it to your favorite citation manager.
@ARTICLE{Nowosad2021-yz,
title = "Motif: an open-source {R} tool for pattern-based spatial
analysis",
author = "Nowosad, Jakub",
abstract = "Abstract Context Pattern-based spatial analysis provides methods
to describe and quantitatively compare spatial patterns for
categorical raster datasets. It allows for spatial search,
change detection, and clustering of areas with similar patterns.
Objectives We developed an R package motif as a set of
open-source tools for pattern-based spatial analysis. Methods
This package provides most of the functionality of existing
software (except spatial segmentation), but also extends the
existing ideas through support for multi-layer raster datasets.
It accepts larger-than-RAM datasets and works across all of the
major operating systems. Results In this study, we describe the
software design of the tool, its capabilities, and present four
case studies. They include calculation of spatial signatures
based on land cover data for regular and irregular areas, search
for regions with similar patterns of geomorphons, detection of
changes in land cover patterns, and clustering of areas with
similar spatial patterns of land cover and landforms.
Conclusions The methods implemented in motif should be useful in
a wide range of applications, including land management,
sustainable development, environmental protection, forest cover
change and urban growth monitoring, and agriculture expansion
studies. The motif package homepage is
https://nowosad.github.io/motif.",
journal = "Landsc. Ecol.",
publisher = "Springer Science and Business Media LLC",
volume = 36,
number = 1,
pages = "29--43",
month = jan,
year = 2021,
url = "http://dx.doi.org/10.1007/s10980-020-01135-0",
copyright = "https://creativecommons.org/licenses/by/4.0",
language = "en",
issn = "0921-2973, 1572-9761",
doi = "10.1007/s10980-020-01135-0"
}
RIS
Reference entry in RIS format. Simply copy it to your favorite citation manager.
TY - JOUR
AU - Nowosad, Jakub
TI - Motif: an open-source R tool for pattern-based spatial analysis
T2 - Landsc. Ecol.
VL - 36
IS - 1
SP - 29-43
PY - 2021
DA - 2021/1
PB - Springer Science and Business Media LLC
AB - Abstract Context Pattern-based spatial analysis provides methods to
describe and quantitatively compare spatial patterns for categorical
raster datasets. It allows for spatial search, change detection, and
clustering of areas with similar patterns. Objectives We developed an R
package motif as a set of open-source tools for pattern-based spatial
analysis. Methods This package provides most of the functionality of
existing software (except spatial segmentation), but also extends the
existing ideas through support for multi-layer raster datasets. It accepts
larger-than-RAM datasets and works across all of the major operating
systems. Results In this study, we describe the software design of the
tool, its capabilities, and present four case studies. They include
calculation of spatial signatures based on land cover data for regular and
irregular areas, search for regions with similar patterns of geomorphons,
detection of changes in land cover patterns, and clustering of areas with
similar spatial patterns of land cover and landforms. Conclusions The
methods implemented in motif should be useful in a wide range of
applications, including land management, sustainable development,
environmental protection, forest cover change and urban growth monitoring,
and agriculture expansion studies. The motif package homepage is
https://nowosad.github.io/motif.
SN - 0921-2973
DO - 10.1007/s10980-020-01135-0
UR - http://dx.doi.org/10.1007/s10980-020-01135-0
ER -
Other citation styles (ACS, ACM, IEEE, ...)
BibGuru offers more than 8,000 citation styles including popular styles such as AMA, ACN, ACS, CSE, Chicago, IEEE, Harvard, and Turabian, as well as journal and university specific styles! Give it a try now: Cite it now!